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swh:1:snp:02443124ed4ee0d8d724fefd38bf9b271361cc09
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Generate software citation in BibTex format (requires biblatex-software package)
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Tip revision: 25441834a5e8891a4e3a2ea98db283fcb29047b5 authored by Jan-Michael Rye on 28 July 2023, 15:05:06 UTC
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Tip revision: 2544183
features.md
# ecfp

ECFP feature calculator.

Extended-Connectivity fingerprints (ECFP), a.k.a. Morgan fingerprints,
calculated with [RDKit cheminformatics
library](http://rdkit.org/docs/source/rdkit.Chem.rdMolDescriptors.html?highlight=getmorganfingerprintasbitvect#rdkit.Chem.rdMolDescriptors.GetMorganFingerprintAsBitVect)

> Rogers, David, and Mathew Hahn. “Extended-Connectivity Fingerprints.”
> Journal of Chemical Information and Modeling 50, no. 5 (May 24, 2010):
> 742–54. https://doi.org/10.1021/ci100050t.

Each feature is a single bit of the feature vector.


## Parameters

* size (type: int; default: 2048): The fingerprint size. It should be 1024, 2048 or 4096.



# padel_ALOGP

ALOGP PaDEL descriptor

The following features are calculated:

* ALogP: Ghose-Crippen LogKow
* ALogp2: Square of ALogP
* AMR: Molar refractivity

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_AP2DFP

PaDEL AP2DFPfingerprint

2D atom pairs fingerprint - Presence of atom pairs at various topological
distances

* Number of bits: 780
* Bit prefix: AP2DFP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_AP2DFPC

PaDEL AP2DFPCfingerprint

2D atom pairs fingerprint count - Count of atom pairs at various topological
distances

* Number of bits: 780
* Bit prefix: AP2DFPC


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_APol

APol PaDEL descriptor

The following features are calculated:

* apol: Sum of the atomic polarizabilities (including implicit hydrogens)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_AcidicGroupCount

AcidicGroupCount PaDEL descriptor

The following features are calculated:

* nAcid: Number of acidic groups. The list of acidic groups is defined by these SMARTS "$([O    H1]-[C,S,P]=O)", "$([*  -       !$(*~[* +])])", "$([NH](S(=O)=O)C(F)(F)F)", and "$(n1nnnc1)" originally presented in JOELib

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_AromaticAtomsCount

AromaticAtomsCount PaDEL descriptor

The following features are calculated:

* naAromAtom: Number of aromatic atoms

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_AromaticBondsCount

AromaticBondsCount PaDEL descriptor

The following features are calculated:

* nAromBond: Number of aromatic bonds

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_AtomCount

AtomCount PaDEL descriptor

The following features are calculated:

* nAtom: Number of atoms
* nHeavyAtom: Number of heavy atoms (i.e. not hydrogen)
* nH: Number of hydrogen atoms
* nB: Number of boron atoms
* nC: Number of carbon atoms
* nN: Number of nitrogen atoms
* nO: Number of oxygen atoms
* nS: Number of sulphur atoms
* nP: Number of phosphorus atoms
* nF: Number of fluorine atoms
* nCl: Number of chlorine atoms
* nBr: Number of bromine atoms
* nI: Number of iodine atoms
* nX: Number of halogen atoms (F, Cl, Br, I, At, Uus)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_Autocorrelation

Autocorrelation PaDEL descriptor

The following features are calculated:

* ATS0m: Broto-Moreau autocorrelation - lag 0 / weighted by mass
* ATS1m: Broto-Moreau autocorrelation - lag 1 / weighted by mass
* ATS2m: Broto-Moreau autocorrelation - lag 2 / weighted by mass
* ATS3m: Broto-Moreau autocorrelation - lag 3 / weighted by mass
* ATS4m: Broto-Moreau autocorrelation - lag 4 / weighted by mass
* ATS5m: Broto-Moreau autocorrelation - lag 5 / weighted by mass
* ATS6m: Broto-Moreau autocorrelation - lag 6 / weighted by mass
* ATS7m: Broto-Moreau autocorrelation - lag 7 / weighted by mass
* ATS8m: Broto-Moreau autocorrelation - lag 8 / weighted by mass
* ATS0v: Broto-Moreau autocorrelation - lag 0 / weighted by van der Waals volumes
* ATS1v: Broto-Moreau autocorrelation - lag 1 / weighted by van der Waals volumes
* ATS2v: Broto-Moreau autocorrelation - lag 2 / weighted by van der Waals volumes
* ATS3v: Broto-Moreau autocorrelation - lag 3 / weighted by van der Waals volumes
* ATS4v: Broto-Moreau autocorrelation - lag 4 / weighted by van der Waals volumes
* ATS5v: Broto-Moreau autocorrelation - lag 5 / weighted by van der Waals volumes
* ATS6v: Broto-Moreau autocorrelation - lag 6 / weighted by van der Waals volumes
* ATS7v: Broto-Moreau autocorrelation - lag 7 / weighted by van der Waals volumes
* ATS8v: Broto-Moreau autocorrelation - lag 8 / weighted by van der Waals volumes
* ATS0e: Broto-Moreau autocorrelation - lag 0 / weighted by Sanderson electronegativities
* ATS1e: Broto-Moreau autocorrelation - lag 1 / weighted by Sanderson electronegativities
* ATS2e: Broto-Moreau autocorrelation - lag 2 / weighted by Sanderson electronegativities
* ATS3e: Broto-Moreau autocorrelation - lag 3 / weighted by Sanderson electronegativities
* ATS4e: Broto-Moreau autocorrelation - lag 4 / weighted by Sanderson electronegativities
* ATS5e: Broto-Moreau autocorrelation - lag 5 / weighted by Sanderson electronegativities
* ATS6e: Broto-Moreau autocorrelation - lag 6 / weighted by Sanderson electronegativities
* ATS7e: Broto-Moreau autocorrelation - lag 7 / weighted by Sanderson electronegativities
* ATS8e: Broto-Moreau autocorrelation - lag 8 / weighted by Sanderson electronegativities
* ATS0p: Broto-Moreau autocorrelation - lag 0 / weighted by polarizabilities
* ATS1p: Broto-Moreau autocorrelation - lag 1 / weighted by polarizabilities
* ATS2p: Broto-Moreau autocorrelation - lag 2 / weighted by polarizabilities
* ATS3p: Broto-Moreau autocorrelation - lag 3 / weighted by polarizabilities
* ATS4p: Broto-Moreau autocorrelation - lag 4 / weighted by polarizabilities
* ATS5p: Broto-Moreau autocorrelation - lag 5 / weighted by polarizabilities
* ATS6p: Broto-Moreau autocorrelation - lag 6 / weighted by polarizabilities
* ATS7p: Broto-Moreau autocorrelation - lag 7 / weighted by polarizabilities
* ATS8p: Broto-Moreau autocorrelation - lag 8 / weighted by polarizabilities
* ATS0i: Broto-Moreau autocorrelation - lag 0 / weighted by first ionization potential
* ATS1i: Broto-Moreau autocorrelation - lag 1 / weighted by first ionization potential
* ATS2i: Broto-Moreau autocorrelation - lag 2 / weighted by first ionization potential
* ATS3i: Broto-Moreau autocorrelation - lag 3 / weighted by first ionization potential
* ATS4i: Broto-Moreau autocorrelation - lag 4 / weighted by first ionization potential
* ATS5i: Broto-Moreau autocorrelation - lag 5 / weighted by first ionization potential
* ATS6i: Broto-Moreau autocorrelation - lag 6 / weighted by first ionization potential
* ATS7i: Broto-Moreau autocorrelation - lag 7 / weighted by first ionization potential
* ATS8i: Broto-Moreau autocorrelation - lag 8 / weighted by first ionization potential
* ATS0s: Broto-Moreau autocorrelation - lag 0 / weighted by I-state
* ATS1s: Broto-Moreau autocorrelation - lag 1 / weighted by I-state
* ATS2s: Broto-Moreau autocorrelation - lag 2 / weighted by I-state
* ATS3s: Broto-Moreau autocorrelation - lag 3 / weighted by I-state
* ATS4s: Broto-Moreau autocorrelation - lag 4 / weighted by I-state
* ATS5s: Broto-Moreau autocorrelation - lag 5 / weighted by I-state
* ATS6s: Broto-Moreau autocorrelation - lag 6 / weighted by I-state
* ATS7s: Broto-Moreau autocorrelation - lag 7 / weighted by I-state
* ATS8s: Broto-Moreau autocorrelation - lag 8 / weighted by I-state
* AATS0m: Average Broto-Moreau autocorrelation - lag 0 / weighted by mass
* AATS1m: Average Broto-Moreau autocorrelation - lag 1 / weighted by mass
* AATS2m: Average Broto-Moreau autocorrelation - lag 2 / weighted by mass
* AATS3m: Average Broto-Moreau autocorrelation - lag 3 / weighted by mass
* AATS4m: Average Broto-Moreau autocorrelation - lag 4 / weighted by mass
* AATS5m: Average Broto-Moreau autocorrelation - lag 5 / weighted by mass
* AATS6m: Average Broto-Moreau autocorrelation - lag 6 / weighted by mass
* AATS7m: Average Broto-Moreau autocorrelation - lag 7 / weighted by mass
* AATS8m: Average Broto-Moreau autocorrelation - lag 8 / weighted by mass
* AATS0v: Average Broto-Moreau autocorrelation - lag 0 / weighted by van der Waals volumes
* AATS1v: Average Broto-Moreau autocorrelation - lag 1 / weighted by van der Waals volumes
* AATS2v: Average Broto-Moreau autocorrelation - lag 2 / weighted by van der Waals volumes
* AATS3v: Average Broto-Moreau autocorrelation - lag 3 / weighted by van der Waals volumes
* AATS4v: Average Broto-Moreau autocorrelation - lag 4 / weighted by van der Waals volumes
* AATS5v: Average Broto-Moreau autocorrelation - lag 5 / weighted by van der Waals volumes
* AATS6v: Average Broto-Moreau autocorrelation - lag 6 / weighted by van der Waals volumes
* AATS7v: Average Broto-Moreau autocorrelation - lag 7 / weighted by van der Waals volumes
* AATS8v: Average Broto-Moreau autocorrelation - lag 8 / weighted by van der Waals volumes
* AATS0e: Average Broto-Moreau autocorrelation - lag 0 / weighted by Sanderson electronegativities
* AATS1e: Average Broto-Moreau autocorrelation - lag 1 / weighted by Sanderson electronegativities
* AATS2e: Average Broto-Moreau autocorrelation - lag 2 / weighted by Sanderson electronegativities
* AATS3e: Average Broto-Moreau autocorrelation - lag 3 / weighted by Sanderson electronegativities
* AATS4e: Average Broto-Moreau autocorrelation - lag 4 / weighted by Sanderson electronegativities
* AATS5e: Average Broto-Moreau autocorrelation - lag 5 / weighted by Sanderson electronegativities
* AATS6e: Average Broto-Moreau autocorrelation - lag 6 / weighted by Sanderson electronegativities
* AATS7e: Average Broto-Moreau autocorrelation - lag 7 / weighted by Sanderson electronegativities
* AATS8e: Average Broto-Moreau autocorrelation - lag 8 / weighted by Sanderson electronegativities
* AATS0p: Average Broto-Moreau autocorrelation - lag 0 / weighted by polarizabilities
* AATS1p: Average Broto-Moreau autocorrelation - lag 1 / weighted by polarizabilities
* AATS2p: Average Broto-Moreau autocorrelation - lag 2 / weighted by polarizabilities
* AATS3p: Average Broto-Moreau autocorrelation - lag 3 / weighted by polarizabilities
* AATS4p: Average Broto-Moreau autocorrelation - lag 4 / weighted by polarizabilities
* AATS5p: Average Broto-Moreau autocorrelation - lag 5 / weighted by polarizabilities
* AATS6p: Average Broto-Moreau autocorrelation - lag 6 / weighted by polarizabilities
* AATS7p: Average Broto-Moreau autocorrelation - lag 7 / weighted by polarizabilities
* AATS8p: Average Broto-Moreau autocorrelation - lag 8 / weighted by polarizabilities
* AATS0i: Average Broto-Moreau autocorrelation - lag 0 / weighted by first ionization potential
* AATS1i: Average Broto-Moreau autocorrelation - lag 1 / weighted by first ionization potential
* AATS2i: Average Broto-Moreau autocorrelation - lag 2 / weighted by first ionization potential
* AATS3i: Average Broto-Moreau autocorrelation - lag 3 / weighted by first ionization potential
* AATS4i: Average Broto-Moreau autocorrelation - lag 4 / weighted by first ionization potential
* AATS5i: Average Broto-Moreau autocorrelation - lag 5 / weighted by first ionization potential
* AATS6i: Average Broto-Moreau autocorrelation - lag 6 / weighted by first ionization potential
* AATS7i: Average Broto-Moreau autocorrelation - lag 7 / weighted by first ionization potential
* AATS8i: Average Broto-Moreau autocorrelation - lag 8 / weighted by first ionization potential
* AATS0s: Average Broto-Moreau autocorrelation - lag 0 / weighted by I-state
* AATS1s: Average Broto-Moreau autocorrelation - lag 1 / weighted by I-state
* AATS2s: Average Broto-Moreau autocorrelation - lag 2 / weighted by I-state
* AATS3s: Average Broto-Moreau autocorrelation - lag 3 / weighted by I-state
* AATS4s: Average Broto-Moreau autocorrelation - lag 4 / weighted by I-state
* AATS5s: Average Broto-Moreau autocorrelation - lag 5 / weighted by I-state
* AATS6s: Average Broto-Moreau autocorrelation - lag 6 / weighted by I-state
* AATS7s: Average Broto-Moreau autocorrelation - lag 7 / weighted by I-state
* AATS8s: Average Broto-Moreau autocorrelation - lag 8 / weighted by I-state
* ATSC0c: Centered Broto-Moreau autocorrelation - lag 0 / weighted by charges
* ATSC1c: Centered Broto-Moreau autocorrelation - lag 1 / weighted by charges
* ATSC2c: Centered Broto-Moreau autocorrelation - lag 2 / weighted by charges
* ATSC3c: Centered Broto-Moreau autocorrelation - lag 3 / weighted by charges
* ATSC4c: Centered Broto-Moreau autocorrelation - lag 4 / weighted by charges
* ATSC5c: Centered Broto-Moreau autocorrelation - lag 5 / weighted by charges
* ATSC6c: Centered Broto-Moreau autocorrelation - lag 6 / weighted by charges
* ATSC7c: Centered Broto-Moreau autocorrelation - lag 7 / weighted by charges
* ATSC8c: Centered Broto-Moreau autocorrelation - lag 8 / weighted by charges
* ATSC0m: Centered Broto-Moreau autocorrelation - lag 0 / weighted by mass
* ATSC1m: Centered Broto-Moreau autocorrelation - lag 1 / weighted by mass
* ATSC2m: Centered Broto-Moreau autocorrelation - lag 2 / weighted by mass
* ATSC3m: Centered Broto-Moreau autocorrelation - lag 3 / weighted by mass
* ATSC4m: Centered Broto-Moreau autocorrelation - lag 4 / weighted by mass
* ATSC5m: Centered Broto-Moreau autocorrelation - lag 5 / weighted by mass
* ATSC6m: Centered Broto-Moreau autocorrelation - lag 6 / weighted by mass
* ATSC7m: Centered Broto-Moreau autocorrelation - lag 7 / weighted by mass
* ATSC8m: Centered Broto-Moreau autocorrelation - lag 8 / weighted by mass
* ATSC0v: Centered Broto-Moreau autocorrelation - lag 0 / weighted by van der Waals volumes
* ATSC1v: Centered Broto-Moreau autocorrelation - lag 1 / weighted by van der Waals volumes
* ATSC2v: Centered Broto-Moreau autocorrelation - lag 2 / weighted by van der Waals volumes
* ATSC3v: Centered Broto-Moreau autocorrelation - lag 3 / weighted by van der Waals volumes
* ATSC4v: Centered Broto-Moreau autocorrelation - lag 4 / weighted by van der Waals volumes
* ATSC5v: Centered Broto-Moreau autocorrelation - lag 5 / weighted by van der Waals volumes
* ATSC6v: Centered Broto-Moreau autocorrelation - lag 6 / weighted by van der Waals volumes
* ATSC7v: Centered Broto-Moreau autocorrelation - lag 7 / weighted by van der Waals volumes
* ATSC8v: Centered Broto-Moreau autocorrelation - lag 8 / weighted by van der Waals volumes
* ATSC0e: Centered Broto-Moreau autocorrelation - lag 0 / weighted by Sanderson electronegativities
* ATSC1e: Centered Broto-Moreau autocorrelation - lag 1 / weighted by Sanderson electronegativities
* ATSC2e: Centered Broto-Moreau autocorrelation - lag 2 / weighted by Sanderson electronegativities
* ATSC3e: Centered Broto-Moreau autocorrelation - lag 3 / weighted by Sanderson electronegativities
* ATSC4e: Centered Broto-Moreau autocorrelation - lag 4 / weighted by Sanderson electronegativities
* ATSC5e: Centered Broto-Moreau autocorrelation - lag 5 / weighted by Sanderson electronegativities
* ATSC6e: Centered Broto-Moreau autocorrelation - lag 6 / weighted by Sanderson electronegativities
* ATSC7e: Centered Broto-Moreau autocorrelation - lag 7 / weighted by Sanderson electronegativities
* ATSC8e: Centered Broto-Moreau autocorrelation - lag 8 / weighted by Sanderson electronegativities
* ATSC0p: Centered Broto-Moreau autocorrelation - lag 0 / weighted by polarizabilities
* ATSC1p: Centered Broto-Moreau autocorrelation - lag 1 / weighted by polarizabilities
* ATSC2p: Centered Broto-Moreau autocorrelation - lag 2 / weighted by polarizabilities
* ATSC3p: Centered Broto-Moreau autocorrelation - lag 3 / weighted by polarizabilities
* ATSC4p: Centered Broto-Moreau autocorrelation - lag 4 / weighted by polarizabilities
* ATSC5p: Centered Broto-Moreau autocorrelation - lag 5 / weighted by polarizabilities
* ATSC6p: Centered Broto-Moreau autocorrelation - lag 6 / weighted by polarizabilities
* ATSC7p: Centered Broto-Moreau autocorrelation - lag 7 / weighted by polarizabilities
* ATSC8p: Centered Broto-Moreau autocorrelation - lag 8 / weighted by polarizabilities
* ATSC0i: Centered Broto-Moreau autocorrelation - lag 0 / weighted by first ionization potential
* ATSC1i: Centered Broto-Moreau autocorrelation - lag 1 / weighted by first ionization potential
* ATSC2i: Centered Broto-Moreau autocorrelation - lag 2 / weighted by first ionization potential
* ATSC3i: Centered Broto-Moreau autocorrelation - lag 3 / weighted by first ionization potential
* ATSC4i: Centered Broto-Moreau autocorrelation - lag 4 / weighted by first ionization potential
* ATSC5i: Centered Broto-Moreau autocorrelation - lag 5 / weighted by first ionization potential
* ATSC6i: Centered Broto-Moreau autocorrelation - lag 6 / weighted by first ionization potential
* ATSC7i: Centered Broto-Moreau autocorrelation - lag 7 / weighted by first ionization potential
* ATSC8i: Centered Broto-Moreau autocorrelation - lag 8 / weighted by first ionization potential
* ATSC0s: Centered Broto-Moreau autocorrelation - lag 0 / weighted by I-state
* ATSC1s: Centered Broto-Moreau autocorrelation - lag 1 / weighted by I-state
* ATSC2s: Centered Broto-Moreau autocorrelation - lag 2 / weighted by I-state
* ATSC3s: Centered Broto-Moreau autocorrelation - lag 3 / weighted by I-state
* ATSC4s: Centered Broto-Moreau autocorrelation - lag 4 / weighted by I-state
* ATSC5s: Centered Broto-Moreau autocorrelation - lag 5 / weighted by I-state
* ATSC6s: Centered Broto-Moreau autocorrelation - lag 6 / weighted by I-state
* ATSC7s: Centered Broto-Moreau autocorrelation - lag 7 / weighted by I-state
* ATSC8s: Centered Broto-Moreau autocorrelation - lag 8 / weighted by I-state
* AATSC0c: Average centered Broto-Moreau autocorrelation - lag 0 / weighted by charges
* AATSC1c: Average centered Broto-Moreau autocorrelation - lag 1 / weighted by charges
* AATSC2c: Average centered Broto-Moreau autocorrelation - lag 2 / weighted by charges
* AATSC3c: Average centered Broto-Moreau autocorrelation - lag 3 / weighted by charges
* AATSC4c: Average centered Broto-Moreau autocorrelation - lag 4 / weighted by charges
* AATSC5c: Average centered Broto-Moreau autocorrelation - lag 5 / weighted by charges
* AATSC6c: Average centered Broto-Moreau autocorrelation - lag 6 / weighted by charges
* AATSC7c: Average centered Broto-Moreau autocorrelation - lag 7 / weighted by charges
* AATSC8c: Average centered Broto-Moreau autocorrelation - lag 8 / weighted by charges
* AATSC0m: Average centered Broto-Moreau autocorrelation - lag 0 / weighted by mass
* AATSC1m: Average centered Broto-Moreau autocorrelation - lag 1 / weighted by mass
* AATSC2m: Average centered Broto-Moreau autocorrelation - lag 2 / weighted by mass
* AATSC3m: Average centered Broto-Moreau autocorrelation - lag 3 / weighted by mass
* AATSC4m: Average centered Broto-Moreau autocorrelation - lag 4 / weighted by mass
* AATSC5m: Average centered Broto-Moreau autocorrelation - lag 5 / weighted by mass
* AATSC6m: Average centered Broto-Moreau autocorrelation - lag 6 / weighted by mass
* AATSC7m: Average centered Broto-Moreau autocorrelation - lag 7 / weighted by mass
* AATSC8m: Average centered Broto-Moreau autocorrelation - lag 8 / weighted by mass
* AATSC0v: Average centered Broto-Moreau autocorrelation - lag 0 / weighted by van der Waals volumes
* AATSC1v: Average centered Broto-Moreau autocorrelation - lag 1 / weighted by van der Waals volumes
* AATSC2v: Average centered Broto-Moreau autocorrelation - lag 2 / weighted by van der Waals volumes
* AATSC3v: Average centered Broto-Moreau autocorrelation - lag 3 / weighted by van der Waals volumes
* AATSC4v: Average centered Broto-Moreau autocorrelation - lag 4 / weighted by van der Waals volumes
* AATSC5v: Average centered Broto-Moreau autocorrelation - lag 5 / weighted by van der Waals volumes
* AATSC6v: Average centered Broto-Moreau autocorrelation - lag 6 / weighted by van der Waals volumes
* AATSC7v: Average centered Broto-Moreau autocorrelation - lag 7 / weighted by van der Waals volumes
* AATSC8v: Average centered Broto-Moreau autocorrelation - lag 8 / weighted by van der Waals volumes
* AATSC0e: Average centered Broto-Moreau autocorrelation - lag 0 / weighted by Sanderson electronegativities
* AATSC1e: Average centered Broto-Moreau autocorrelation - lag 1 / weighted by Sanderson electronegativities
* AATSC2e: Average centered Broto-Moreau autocorrelation - lag 2 / weighted by Sanderson electronegativities
* AATSC3e: Average centered Broto-Moreau autocorrelation - lag 3 / weighted by Sanderson electronegativities
* AATSC4e: Average centered Broto-Moreau autocorrelation - lag 4 / weighted by Sanderson electronegativities
* AATSC5e: Average centered Broto-Moreau autocorrelation - lag 5 / weighted by Sanderson electronegativities
* AATSC6e: Average centered Broto-Moreau autocorrelation - lag 6 / weighted by Sanderson electronegativities
* AATSC7e: Average centered Broto-Moreau autocorrelation - lag 7 / weighted by Sanderson electronegativities
* AATSC8e: Average centered Broto-Moreau autocorrelation - lag 8 / weighted by Sanderson electronegativities
* AATSC0p: Average centered Broto-Moreau autocorrelation - lag 0 / weighted by polarizabilities
* AATSC1p: Average centered Broto-Moreau autocorrelation - lag 1 / weighted by polarizabilities
* AATSC2p: Average centered Broto-Moreau autocorrelation - lag 2 / weighted by polarizabilities
* AATSC3p: Average centered Broto-Moreau autocorrelation - lag 3 / weighted by polarizabilities
* AATSC4p: Average centered Broto-Moreau autocorrelation - lag 4 / weighted by polarizabilities
* AATSC5p: Average centered Broto-Moreau autocorrelation - lag 5 / weighted by polarizabilities
* AATSC6p: Average centered Broto-Moreau autocorrelation - lag 6 / weighted by polarizabilities
* AATSC7p: Average centered Broto-Moreau autocorrelation - lag 7 / weighted by polarizabilities
* AATSC8p: Average centered Broto-Moreau autocorrelation - lag 8 / weighted by polarizabilities
* AATSC0i: Average centered Broto-Moreau autocorrelation - lag 0 / weighted by first ionization potential
* AATSC1i: Average centered Broto-Moreau autocorrelation - lag 1 / weighted by first ionization potential
* AATSC2i: Average centered Broto-Moreau autocorrelation - lag 2 / weighted by first ionization potential
* AATSC3i: Average centered Broto-Moreau autocorrelation - lag 3 / weighted by first ionization potential
* AATSC4i: Average centered Broto-Moreau autocorrelation - lag 4 / weighted by first ionization potential
* AATSC5i: Average centered Broto-Moreau autocorrelation - lag 5 / weighted by first ionization potential
* AATSC6i: Average centered Broto-Moreau autocorrelation - lag 6 / weighted by first ionization potential
* AATSC7i: Average centered Broto-Moreau autocorrelation - lag 7 / weighted by first ionization potential
* AATSC8i: Average centered Broto-Moreau autocorrelation - lag 8 / weighted by first ionization potential
* AATSC0s: Average centered Broto-Moreau autocorrelation - lag 0 / weighted by I-state
* AATSC1s: Average centered Broto-Moreau autocorrelation - lag 1 / weighted by I-state
* AATSC2s: Average centered Broto-Moreau autocorrelation - lag 2 / weighted by I-state
* AATSC3s: Average centered Broto-Moreau autocorrelation - lag 3 / weighted by I-state
* AATSC4s: Average centered Broto-Moreau autocorrelation - lag 4 / weighted by I-state
* AATSC5s: Average centered Broto-Moreau autocorrelation - lag 5 / weighted by I-state
* AATSC6s: Average centered Broto-Moreau autocorrelation - lag 6 / weighted by I-state
* AATSC7s: Average centered Broto-Moreau autocorrelation - lag 7 / weighted by I-state
* AATSC8s: Average centered Broto-Moreau autocorrelation - lag 8 / weighted by I-state
* MATS1c: Moran autocorrelation - lag 1 / weighted by charges
* MATS2c: Moran autocorrelation - lag 2 / weighted by charges
* MATS3c: Moran autocorrelation - lag 3 / weighted by charges
* MATS4c: Moran autocorrelation - lag 4 / weighted by charges
* MATS5c: Moran autocorrelation - lag 5 / weighted by charges
* MATS6c: Moran autocorrelation - lag 6 / weighted by charges
* MATS7c: Moran autocorrelation - lag 7 / weighted by charges
* MATS8c: Moran autocorrelation - lag 8 / weighted by charges
* MATS1m: Moran autocorrelation - lag 1 / weighted by mass
* MATS2m: Moran autocorrelation - lag 2 / weighted by mass
* MATS3m: Moran autocorrelation - lag 3 / weighted by mass
* MATS4m: Moran autocorrelation - lag 4 / weighted by mass
* MATS5m: Moran autocorrelation - lag 5 / weighted by mass
* MATS6m: Moran autocorrelation - lag 6 / weighted by mass
* MATS7m: Moran autocorrelation - lag 7 / weighted by mass
* MATS8m: Moran autocorrelation - lag 8 / weighted by mass
* MATS1v: Moran autocorrelation - lag 1 / weighted by van der Waals volumes
* MATS2v: Moran autocorrelation - lag 2 / weighted by van der Waals volumes
* MATS3v: Moran autocorrelation - lag 3 / weighted by van der Waals volumes
* MATS4v: Moran autocorrelation - lag 4 / weighted by van der Waals volumes
* MATS5v: Moran autocorrelation - lag 5 / weighted by van der Waals volumes
* MATS6v: Moran autocorrelation - lag 6 / weighted by van der Waals volumes
* MATS7v: Moran autocorrelation - lag 7 / weighted by van der Waals volumes
* MATS8v: Moran autocorrelation - lag 8 / weighted by van der Waals volumes
* MATS1e: Moran autocorrelation - lag 1 / weighted by Sanderson electronegativities
* MATS2e: Moran autocorrelation - lag 2 / weighted by Sanderson electronegativities
* MATS3e: Moran autocorrelation - lag 3 / weighted by Sanderson electronegativities
* MATS4e: Moran autocorrelation - lag 4 / weighted by Sanderson electronegativities
* MATS5e: Moran autocorrelation - lag 5 / weighted by Sanderson electronegativities
* MATS6e: Moran autocorrelation - lag 6 / weighted by Sanderson electronegativities
* MATS7e: Moran autocorrelation - lag 7 / weighted by Sanderson electronegativities
* MATS8e: Moran autocorrelation - lag 8 / weighted by Sanderson electronegativities
* MATS1p: Moran autocorrelation - lag 1 / weighted by polarizabilities
* MATS2p: Moran autocorrelation - lag 2 / weighted by polarizabilities
* MATS3p: Moran autocorrelation - lag 3 / weighted by polarizabilities
* MATS4p: Moran autocorrelation - lag 4 / weighted by polarizabilities
* MATS5p: Moran autocorrelation - lag 5 / weighted by polarizabilities
* MATS6p: Moran autocorrelation - lag 6 / weighted by polarizabilities
* MATS7p: Moran autocorrelation - lag 7 / weighted by polarizabilities
* MATS8p: Moran autocorrelation - lag 8 / weighted by polarizabilities
* MATS1i: Moran autocorrelation - lag 1 / weighted by first ionization potential
* MATS2i: Moran autocorrelation - lag 2 / weighted by first ionization potential
* MATS3i: Moran autocorrelation - lag 3 / weighted by first ionization potential
* MATS4i: Moran autocorrelation - lag 4 / weighted by first ionization potential
* MATS5i: Moran autocorrelation - lag 5 / weighted by first ionization potential
* MATS6i: Moran autocorrelation - lag 6 / weighted by first ionization potential
* MATS7i: Moran autocorrelation - lag 7 / weighted by first ionization potential
* MATS8i: Moran autocorrelation - lag 8 / weighted by first ionization potential
* MATS1s: Moran autocorrelation - lag 1 / weighted by I-state
* MATS2s: Moran autocorrelation - lag 2 / weighted by I-state
* MATS3s: Moran autocorrelation - lag 3 / weighted by I-state
* MATS4s: Moran autocorrelation - lag 4 / weighted by I-state
* MATS5s: Moran autocorrelation - lag 5 / weighted by I-state
* MATS6s: Moran autocorrelation - lag 6 / weighted by I-state
* MATS7s: Moran autocorrelation - lag 7 / weighted by I-state
* MATS8s: Moran autocorrelation - lag 8 / weighted by I-state
* GATS1c: Geary autocorrelation - lag 1 / weighted by charges
* GATS2c: Geary autocorrelation - lag 2 / weighted by charges
* GATS3c: Geary autocorrelation - lag 3 / weighted by charges
* GATS4c: Geary autocorrelation - lag 4 / weighted by charges
* GATS5c: Geary autocorrelation - lag 5 / weighted by charges
* GATS6c: Geary autocorrelation - lag 6 / weighted by charges
* GATS7c: Geary autocorrelation - lag 7 / weighted by charges
* GATS8c: Geary autocorrelation - lag 8 / weighted by charges
* GATS1m: Geary autocorrelation - lag 1 / weighted by mass
* GATS2m: Geary autocorrelation - lag 2 / weighted by mass
* GATS3m: Geary autocorrelation - lag 3 / weighted by mass
* GATS4m: Geary autocorrelation - lag 4 / weighted by mass
* GATS5m: Geary autocorrelation - lag 5 / weighted by mass
* GATS6m: Geary autocorrelation - lag 6 / weighted by mass
* GATS7m: Geary autocorrelation - lag 7 / weighted by mass
* GATS8m: Geary autocorrelation - lag 8 / weighted by mass
* GATS1v: Geary autocorrelation - lag 1 / weighted by van der Waals volumes
* GATS2v: Geary autocorrelation - lag 2 / weighted by van der Waals volumes
* GATS3v: Geary autocorrelation - lag 3 / weighted by van der Waals volumes
* GATS4v: Geary autocorrelation - lag 4 / weighted by van der Waals volumes
* GATS5v: Geary autocorrelation - lag 5 / weighted by van der Waals volumes
* GATS6v: Geary autocorrelation - lag 6 / weighted by van der Waals volumes
* GATS7v: Geary autocorrelation - lag 7 / weighted by van der Waals volumes
* GATS8v: Geary autocorrelation - lag 8 / weighted by van der Waals volumes
* GATS1e: Geary autocorrelation - lag 1 / weighted by Sanderson electronegativities
* GATS2e: Geary autocorrelation - lag 2 / weighted by Sanderson electronegativities
* GATS3e: Geary autocorrelation - lag 3 / weighted by Sanderson electronegativities
* GATS4e: Geary autocorrelation - lag 4 / weighted by Sanderson electronegativities
* GATS5e: Geary autocorrelation - lag 5 / weighted by Sanderson electronegativities
* GATS6e: Geary autocorrelation - lag 6 / weighted by Sanderson electronegativities
* GATS7e: Geary autocorrelation - lag 7 / weighted by Sanderson electronegativities
* GATS8e: Geary autocorrelation - lag 8 / weighted by Sanderson electronegativities
* GATS1p: Geary autocorrelation - lag 1 / weighted by polarizabilities
* GATS2p: Geary autocorrelation - lag 2 / weighted by polarizabilities
* GATS3p: Geary autocorrelation - lag 3 / weighted by polarizabilities
* GATS4p: Geary autocorrelation - lag 4 / weighted by polarizabilities
* GATS5p: Geary autocorrelation - lag 5 / weighted by polarizabilities
* GATS6p: Geary autocorrelation - lag 6 / weighted by polarizabilities
* GATS7p: Geary autocorrelation - lag 7 / weighted by polarizabilities
* GATS8p: Geary autocorrelation - lag 8 / weighted by polarizabilities
* GATS1i: Geary autocorrelation - lag 1 / weighted by first ionization potential
* GATS2i: Geary autocorrelation - lag 2 / weighted by first ionization potential
* GATS3i: Geary autocorrelation - lag 3 / weighted by first ionization potential
* GATS4i: Geary autocorrelation - lag 4 / weighted by first ionization potential
* GATS5i: Geary autocorrelation - lag 5 / weighted by first ionization potential
* GATS6i: Geary autocorrelation - lag 6 / weighted by first ionization potential
* GATS7i: Geary autocorrelation - lag 7 / weighted by first ionization potential
* GATS8i: Geary autocorrelation - lag 8 / weighted by first ionization potential
* GATS1s: Geary autocorrelation - lag 1 / weighted by I-state
* GATS2s: Geary autocorrelation - lag 2 / weighted by I-state
* GATS3s: Geary autocorrelation - lag 3 / weighted by I-state
* GATS4s: Geary autocorrelation - lag 4 / weighted by I-state
* GATS5s: Geary autocorrelation - lag 5 / weighted by I-state
* GATS6s: Geary autocorrelation - lag 6 / weighted by I-state
* GATS7s: Geary autocorrelation - lag 7 / weighted by I-state
* GATS8s: Geary autocorrelation - lag 8 / weighted by I-state

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_Autocorrelation3D

Autocorrelation3D 3D PaDEL descriptor

The following features are calculated:

* TDB1u: 3D topological distance based autocorrelation - lag 1 / unweighted
* TDB2u: 3D topological distance based autocorrelation - lag 2 / unweighted
* TDB3u: 3D topological distance based autocorrelation - lag 3 / unweighted
* TDB4u: 3D topological distance based autocorrelation - lag 4 / unweighted
* TDB5u: 3D topological distance based autocorrelation - lag 5 / unweighted
* TDB6u: 3D topological distance based autocorrelation - lag 6 / unweighted
* TDB7u: 3D topological distance based autocorrelation - lag 7 / unweighted
* TDB8u: 3D topological distance based autocorrelation - lag 8 / unweighted
* TDB9u: 3D topological distance based autocorrelation - lag 9 / unweighted
* TDB10u: 3D topological distance based autocorrelation - lag 10 / unweighted
* TDB1m: 3D topological distance based autocorrelation - lag 1 / weighted by mass
* TDB2m: 3D topological distance based autocorrelation - lag 2 / weighted by mass
* TDB3m: 3D topological distance based autocorrelation - lag 3 / weighted by mass
* TDB4m: 3D topological distance based autocorrelation - lag 4 / weighted by mass
* TDB5m: 3D topological distance based autocorrelation - lag 5 / weighted by mass
* TDB6m: 3D topological distance based autocorrelation - lag 6 / weighted by mass
* TDB7m: 3D topological distance based autocorrelation - lag 7 / weighted by mass
* TDB8m: 3D topological distance based autocorrelation - lag 8 / weighted by mass
* TDB9m: 3D topological distance based autocorrelation - lag 9 / weighted by mass
* TDB10m: 3D topological distance based autocorrelation - lag 10 / weighted by mass
* TDB1v: 3D topological distance based autocorrelation - lag 1 / weighted by van der Waals volumes
* TDB2v: 3D topological distance based autocorrelation - lag 2 / weighted by van der Waals volumes
* TDB3v: 3D topological distance based autocorrelation - lag 3 / weighted by van der Waals volumes
* TDB4v: 3D topological distance based autocorrelation - lag 4 / weighted by van der Waals volumes
* TDB5v: 3D topological distance based autocorrelation - lag 5 / weighted by van der Waals volumes
* TDB6v: 3D topological distance based autocorrelation - lag 6 / weighted by van der Waals volumes
* TDB7v: 3D topological distance based autocorrelation - lag 7 / weighted by van der Waals volumes
* TDB8v: 3D topological distance based autocorrelation - lag 8 / weighted by van der Waals volumes
* TDB9v: 3D topological distance based autocorrelation - lag 9 / weighted by van der Waals volumes
* TDB10v: 3D topological distance based autocorrelation - lag 10 / weighted by van der Waals volumes
* TDB1e: 3D topological distance based autocorrelation - lag 1 / weighted by Sanderson electronegativities
* TDB2e: 3D topological distance based autocorrelation - lag 2 / weighted by Sanderson electronegativities
* TDB3e: 3D topological distance based autocorrelation - lag 3 / weighted by Sanderson electronegativities
* TDB4e: 3D topological distance based autocorrelation - lag 4 / weighted by Sanderson electronegativities
* TDB5e: 3D topological distance based autocorrelation - lag 5 / weighted by Sanderson electronegativities
* TDB6e: 3D topological distance based autocorrelation - lag 6 / weighted by Sanderson electronegativities
* TDB7e: 3D topological distance based autocorrelation - lag 7 / weighted by Sanderson electronegativities
* TDB8e: 3D topological distance based autocorrelation - lag 8 / weighted by Sanderson electronegativities
* TDB9e: 3D topological distance based autocorrelation - lag 9 / weighted by Sanderson electronegativities
* TDB10e: 3D topological distance based autocorrelation - lag 10 / weighted by Sanderson electronegativities
* TDB1p: 3D topological distance based autocorrelation - lag 1 / weighted by polarizabilities
* TDB2p: 3D topological distance based autocorrelation - lag 2 / weighted by polarizabilities
* TDB3p: 3D topological distance based autocorrelation - lag 3 / weighted by polarizabilities
* TDB4p: 3D topological distance based autocorrelation - lag 4 / weighted by polarizabilities
* TDB5p: 3D topological distance based autocorrelation - lag 5 / weighted by polarizabilities
* TDB6p: 3D topological distance based autocorrelation - lag 6 / weighted by polarizabilities
* TDB7p: 3D topological distance based autocorrelation - lag 7 / weighted by polarizabilities
* TDB8p: 3D topological distance based autocorrelation - lag 8 / weighted by polarizabilities
* TDB9p: 3D topological distance based autocorrelation - lag 9 / weighted by polarizabilities
* TDB10p: 3D topological distance based autocorrelation - lag 10 / weighted by polarizabilities
* TDB1i: 3D topological distance based autocorrelation - lag 1 / weighted by first ionization potential
* TDB2i: 3D topological distance based autocorrelation - lag 2 / weighted by first ionization potential
* TDB3i: 3D topological distance based autocorrelation - lag 3 / weighted by first ionization potential
* TDB4i: 3D topological distance based autocorrelation - lag 4 / weighted by first ionization potential
* TDB5i: 3D topological distance based autocorrelation - lag 5 / weighted by first ionization potential
* TDB6i: 3D topological distance based autocorrelation - lag 6 / weighted by first ionization potential
* TDB7i: 3D topological distance based autocorrelation - lag 7 / weighted by first ionization potential
* TDB8i: 3D topological distance based autocorrelation - lag 8 / weighted by first ionization potential
* TDB9i: 3D topological distance based autocorrelation - lag 9 / weighted by first ionization potential
* TDB10i: 3D topological distance based autocorrelation - lag 10 / weighted by first ionization potential
* TDB1s: 3D topological distance based autocorrelation - lag 1 / weighted by I-state
* TDB2s: 3D topological distance based autocorrelation - lag 2 / weighted by I-state
* TDB3s: 3D topological distance based autocorrelation - lag 3 / weighted by I-state
* TDB4s: 3D topological distance based autocorrelation - lag 4 / weighted by I-state
* TDB5s: 3D topological distance based autocorrelation - lag 5 / weighted by I-state
* TDB6s: 3D topological distance based autocorrelation - lag 6 / weighted by I-state
* TDB7s: 3D topological distance based autocorrelation - lag 7 / weighted by I-state
* TDB8s: 3D topological distance based autocorrelation - lag 8 / weighted by I-state
* TDB9s: 3D topological distance based autocorrelation - lag 9 / weighted by I-state
* TDB10s: 3D topological distance based autocorrelation - lag 10 / weighted by I-state
* TDB1r: 3D topological distance based autocorrelation - lag 1 / weighted by covalent radius
* TDB2r: 3D topological distance based autocorrelation - lag 2 / weighted by covalent radius
* TDB3r: 3D topological distance based autocorrelation - lag 3 / weighted by covalent radius
* TDB4r: 3D topological distance based autocorrelation - lag 4 / weighted by covalent radius
* TDB5r: 3D topological distance based autocorrelation - lag 5 / weighted by covalent radius
* TDB6r: 3D topological distance based autocorrelation - lag 6 / weighted by covalent radius
* TDB7r: 3D topological distance based autocorrelation - lag 7 / weighted by covalent radius
* TDB8r: 3D topological distance based autocorrelation - lag 8 / weighted by covalent radius
* TDB9r: 3D topological distance based autocorrelation - lag 9 / weighted by covalent radius
* TDB10r: 3D topological distance based autocorrelation - lag 10 / weighted by covalent radius

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_BCUT

BCUT PaDEL descriptor

The following features are calculated:

* BCUTw-1l: nhigh lowest atom weighted BCUTS 
* BCUTw-1h: nlow highest atom weighted BCUTS 
* BCUTc-1l: nhigh lowest partial charge weighted BCUTS 
* BCUTc-1h: nlow highest partial charge weighted BCUTS 
* BCUTp-1l: nhigh lowest polarizability weighted BCUTS 
* BCUTp-1h: nlow highest polarizability weighted BCUTS 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_BPol

BPol PaDEL descriptor

The following features are calculated:

* bpol: Sum of the absolute value of the difference between atomic polarizabilities of all bonded atoms in the molecule (including implicit hydrogens)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_BaryszMatrix

BaryszMatrix PaDEL descriptor

The following features are calculated:

* SpAbs_DzZ: Graph energy from Barysz matrix / weighted by atomic number
* SpMax_DzZ: Leading eigenvalue from Barysz matrix / weighted by atomic number
* SpDiam_DzZ: Spectral diameter from Barysz matrix / weighted by atomic number
* SpAD_DzZ: Spectral absolute deviation from Barysz matrix / weighted by atomic number
* SpMAD_DzZ: Spectral mean absolute deviation from Barysz matrix / weighted by atomic number
* EE_DzZ: Estrada-like index from Barysz matrix / weighted by atomic number (ln(1+x))
* SM1_DzZ: Spectral moment of order 1 from Barysz matrix / weighted by atomic number
* VE1_DzZ: Coefficient sum of the last eigenvector from Barysz matrix / weighted by atomic number
* VE2_DzZ: Average coefficient sum of the last eigenvector from Barysz matrix / weighted by atomic number
* VE3_DzZ: Logarithmic coefficient sum of the last eigenvector from Barysz matrix / weighted by atomic number
* VR1_DzZ: Randic-like eigenvector-based index from Barysz matrix / weighted by atomic number
* VR2_DzZ: Normalized Randic-like eigenvector-based index from Barysz matrix / weighted by atomic number
* VR3_DzZ: Logarithmic Randic-like eigenvector-based index from Barysz matrix / weighted by atomic number
* SpAbs_Dzm: Graph energy from Barysz matrix / weighted by mass
* SpMax_Dzm: Leading eigenvalue from Barysz matrix / weighted by mass
* SpDiam_Dzm: Spectral diameter from Barysz matrix / weighted by mass
* SpAD_Dzm: Spectral absolute deviation from Barysz matrix / weighted by mass
* SpMAD_Dzm: Spectral mean absolute deviation from Barysz matrix / weighted by mass
* EE_Dzm: Estrada-like index from Barysz matrix / weighted by mass (ln(1+x))
* SM1_Dzm: Spectral moment of order 1 from Barysz matrix / weighted by mass
* VE1_Dzm: Coefficient sum of the last eigenvector from Barysz matrix / weighted by mass
* VE2_Dzm: Average coefficient sum of the last eigenvector from Barysz matrix / weighted by mass
* VE3_Dzm: Logarithmic coefficient sum of the last eigenvector from Barysz matrix / weighted by mass
* VR1_Dzm: Randic-like eigenvector-based index from Barysz matrix / weighted by mass
* VR2_Dzm: Normalized Randic-like eigenvector-based index from Barysz matrix / weighted by mass
* VR3_Dzm: Logarithmic Randic-like eigenvector-based index from Barysz matrix / weighted by mass
* SpAbs_Dzv: Graph energy from Barysz matrix / weighted by van der Waals volumes
* SpMax_Dzv: Leading eigenvalue from Barysz matrix / weighted by van der Waals volumes
* SpDiam_Dzv: Spectral diameter from Barysz matrix / weighted by van der Waals volumes
* SpAD_Dzv: Spectral absolute deviation from Barysz matrix / weighted by van der Waals volumes
* SpMAD_Dzv: Spectral mean absolute deviation from Barysz matrix / weighted by van der Waals volumes
* EE_Dzv: Estrada-like index from Barysz matrix / weighted by van der Waals volumes (ln(1+x))
* SM1_Dzv: Spectral moment of order 1 from Barysz matrix / weighted by van der Waals volumes
* VE1_Dzv: Coefficient sum of the last eigenvector from Barysz matrix / weighted by van der Waals volumes
* VE2_Dzv: Average coefficient sum of the last eigenvector from Barysz matrix / weighted by van der Waals volumes
* VE3_Dzv: Logarithmic coefficient sum of the last eigenvector from Barysz matrix / weighted by van der Waals volumes
* VR1_Dzv: Randic-like eigenvector-based index from Barysz matrix / weighted by van der Waals volumes
* VR2_Dzv: Normalized Randic-like eigenvector-based index from Barysz matrix / weighted by van der Waals volumes
* VR3_Dzv: Logarithmic Randic-like eigenvector-based index from Barysz matrix / weighted by van der Waals volumes
* SpAbs_Dze: Graph energy from Barysz matrix / weighted by Sanderson electronegativities
* SpMax_Dze: Leading eigenvalue from Barysz matrix / weighted by Sanderson electronegativities
* SpDiam_Dze: Spectral diameter from Barysz matrix / weighted by Sanderson electronegativities
* SpAD_Dze: Spectral absolute deviation from Barysz matrix / weighted by Sanderson electronegativities
* SpMAD_Dze: Spectral mean absolute deviation from Barysz matrix / weighted by Sanderson electronegativities
* EE_Dze: Estrada-like index from Barysz matrix / weighted by Sanderson electronegativities (ln(1+x))
* SM1_Dze: Spectral moment of order 1 from Barysz matrix / weighted by Sanderson electronegativities
* VE1_Dze: Coefficient sum of the last eigenvector from Barysz matrix / weighted by Sanderson electronegativities
* VE2_Dze: Average coefficient sum of the last eigenvector from Barysz matrix / weighted by Sanderson electronegativities
* VE3_Dze: Logarithmic coefficient sum of the last eigenvector from Barysz matrix / weighted by Sanderson electronegativities
* VR1_Dze: Randic-like eigenvector-based index from Barysz matrix / weighted by Sanderson electronegativities
* VR2_Dze: Normalized Randic-like eigenvector-based index from Barysz matrix / weighted by Sanderson electronegativities
* VR3_Dze: Logarithmic Randic-like eigenvector-based index from Barysz matrix / weighted by Sanderson electronegativities
* SpAbs_Dzp: Graph energy from Barysz matrix / weighted by polarizabilities
* SpMax_Dzp: Leading eigenvalue from Barysz matrix / weighted by polarizabilities
* SpDiam_Dzp: Spectral diameter from Barysz matrix / weighted by polarizabilities
* SpAD_Dzp: Spectral absolute deviation from Barysz matrix / weighted by polarizabilities
* SpMAD_Dzp: Spectral mean absolute deviation from Barysz matrix / weighted by polarizabilities
* EE_Dzp: Estrada-like index from Barysz matrix / weighted by polarizabilities (ln(1+x))
* SM1_Dzp: Spectral moment of order 1 from Barysz matrix / weighted by polarizabilities
* VE1_Dzp: Coefficient sum of the last eigenvector from Barysz matrix / weighted by polarizabilities
* VE2_Dzp: Average coefficient sum of the last eigenvector from Barysz matrix / weighted by polarizabilities
* VE3_Dzp: Logarithmic coefficient sum of the last eigenvector from Barysz matrix / weighted by polarizabilities
* VR1_Dzp: Randic-like eigenvector-based index from Barysz matrix / weighted by polarizabilities
* VR2_Dzp: Normalized Randic-like eigenvector-based index from Barysz matrix / weighted by polarizabilities
* VR3_Dzp: Logarithmic Randic-like eigenvector-based index from Barysz matrix / weighted by polarizabilities
* SpAbs_Dzi: Graph energy from Barysz matrix / weighted by first ionization potential
* SpMax_Dzi: Leading eigenvalue from Barysz matrix / weighted by first ionization potential
* SpDiam_Dzi: Spectral diameter from Barysz matrix / weighted by first ionization potential
* SpAD_Dzi: Spectral absolute deviation from Barysz matrix / weighted by first ionization potential
* SpMAD_Dzi: Spectral mean absolute deviation from Barysz matrix / weighted by first ionization potential
* EE_Dzi: Estrada-like index from Barysz matrix / weighted by first ionization potential (ln(1+x))
* SM1_Dzi: Spectral moment of order 1 from Barysz matrix / weighted by first ionization potential
* VE1_Dzi: Coefficient sum of the last eigenvector from Barysz matrix / weighted by first ionization potential
* VE2_Dzi: Average coefficient sum of the last eigenvector from Barysz matrix / weighted by first ionization potential
* VE3_Dzi: Logarithmic coefficient sum of the last eigenvector from Barysz matrix / weighted by first ionization potential
* VR1_Dzi: Randic-like eigenvector-based index from Barysz matrix / weighted by first ionization potential
* VR2_Dzi: Normalized Randic-like eigenvector-based index from Barysz matrix / weighted by first ionization potential
* VR3_Dzi: Logarithmic Randic-like eigenvector-based index from Barysz matrix / weighted by first ionization potential
* SpAbs_Dzs: Graph energy from Barysz matrix / weighted by I-state
* SpMax_Dzs: Leading eigenvalue from Barysz matrix / weighted by I-state
* SpDiam_Dzs: Spectral diameter from Barysz matrix / weighted by I-state
* SpAD_Dzs: Spectral absolute deviation from Barysz matrix / weighted by I-state
* SpMAD_Dzs: Spectral mean absolute deviation from Barysz matrix / weighted by I-state
* EE_Dzs: Estrada-like index from Barysz matrix / weighted by I-state (ln(1+x))
* SM1_Dzs: Spectral moment of order 1 from Barysz matrix / weighted by I-state
* VE1_Dzs: Coefficient sum of the last eigenvector from Barysz matrix / weighted by I-state
* VE2_Dzs: Average coefficient sum of the last eigenvector from Barysz matrix / weighted by I-state
* VE3_Dzs: Logarithmic coefficient sum of the last eigenvector from Barysz matrix / weighted by I-state
* VR1_Dzs: Randic-like eigenvector-based index from Barysz matrix / weighted by I-state
* VR2_Dzs: Normalized Randic-like eigenvector-based index from Barysz matrix / weighted by I-state
* VR3_Dzs: Logarithmic Randic-like eigenvector-based index from Barysz matrix / weighted by I-state

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_BasicGroupCount

BasicGroupCount PaDEL descriptor

The following features are calculated:

* nBase: Number of basic groups. The list of basic groups is defined by this SMARTS "[$([NH2]-[CX4])]", "[$([NH](-[CX4])-[CX4])]", "[$(N(-[CX4])(-[CX4])-[CX4])]", "[$([*       +       !$(*~[* -])])]", "[$(N=C-N)]", and "[$(N-C=N)]" originally presented in JOELib

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_BondCount

BondCount PaDEL descriptor

The following features are calculated:

* nBonds: Number of bonds (excluding bonds with hydrogen)
* nBonds2: Total number of bonds (including bonds to hydrogens)
* nBondsS: Number of single bonds (including bonds with hydrogen)
* nBondsS2: Total number of single bonds (including bonds to hydrogens, excluding aromatic bonds)
* nBondsS3: Total number of single bonds (excluding bonds to hydrogens and aromatic bonds)
* nBondsD: Number of double bonds
* nBondsD2: Total number of double bonds (excluding bonds to aromatic bonds)
* nBondsT: Number of triple bonds
* nBondsQ: Number of quadruple bonds
* nBondsM: Total number of bonds that have bond order greater than one (aromatic bonds have bond order 1.5).

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_BurdenModifiedEigenvalues

BurdenModifiedEigenvalues PaDEL descriptor

The following features are calculated:

* SpMax1_Bhm: Largest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative mass
* SpMax2_Bhm: Largest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative mass
* SpMax3_Bhm: Largest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative mass
* SpMax4_Bhm: Largest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative mass
* SpMax5_Bhm: Largest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative mass
* SpMax6_Bhm: Largest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative mass
* SpMax7_Bhm: Largest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative mass
* SpMax8_Bhm: Largest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative mass
* SpMin1_Bhm: Smallest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative mass
* SpMin2_Bhm: Smallest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative mass
* SpMin3_Bhm: Smallest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative mass
* SpMin4_Bhm: Smallest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative mass
* SpMin5_Bhm: Smallest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative mass
* SpMin6_Bhm: Smallest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative mass
* SpMin7_Bhm: Smallest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative mass
* SpMin8_Bhm: Smallest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative mass
* SpMax1_Bhv: Largest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative van der Waals volumes
* SpMax2_Bhv: Largest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative van der Waals volumes
* SpMax3_Bhv: Largest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative van der Waals volumes
* SpMax4_Bhv: Largest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative van der Waals volumes
* SpMax5_Bhv: Largest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative van der Waals volumes
* SpMax6_Bhv: Largest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative van der Waals volumes
* SpMax7_Bhv: Largest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative van der Waals volumes
* SpMax8_Bhv: Largest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative van der Waals volumes
* SpMin1_Bhv: Smallest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative van der Waals volumes
* SpMin2_Bhv: Smallest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative van der Waals volumes
* SpMin3_Bhv: Smallest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative van der Waals volumes
* SpMin4_Bhv: Smallest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative van der Waals volumes
* SpMin5_Bhv: Smallest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative van der Waals volumes
* SpMin6_Bhv: Smallest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative van der Waals volumes
* SpMin7_Bhv: Smallest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative van der Waals volumes
* SpMin8_Bhv: Smallest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative van der Waals volumes
* SpMax1_Bhe: Largest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative Sanderson electronegativities
* SpMax2_Bhe: Largest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative Sanderson electronegativities
* SpMax3_Bhe: Largest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative Sanderson electronegativities
* SpMax4_Bhe: Largest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative Sanderson electronegativities
* SpMax5_Bhe: Largest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative Sanderson electronegativities
* SpMax6_Bhe: Largest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative Sanderson electronegativities
* SpMax7_Bhe: Largest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative Sanderson electronegativities
* SpMax8_Bhe: Largest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative Sanderson electronegativities
* SpMin1_Bhe: Smallest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative Sanderson electronegativities
* SpMin2_Bhe: Smallest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative Sanderson electronegativities
* SpMin3_Bhe: Smallest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative Sanderson electronegativities
* SpMin4_Bhe: Smallest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative Sanderson electronegativities
* SpMin5_Bhe: Smallest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative Sanderson electronegativities
* SpMin6_Bhe: Smallest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative Sanderson electronegativities
* SpMin7_Bhe: Smallest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative Sanderson electronegativities
* SpMin8_Bhe: Smallest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative Sanderson electronegativities
* SpMax1_Bhp: Largest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative polarizabilities
* SpMax2_Bhp: Largest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative polarizabilities
* SpMax3_Bhp: Largest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative polarizabilities
* SpMax4_Bhp: Largest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative polarizabilities
* SpMax5_Bhp: Largest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative polarizabilities
* SpMax6_Bhp: Largest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative polarizabilities
* SpMax7_Bhp: Largest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative polarizabilities
* SpMax8_Bhp: Largest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative polarizabilities
* SpMin1_Bhp: Smallest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative polarizabilities
* SpMin2_Bhp: Smallest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative polarizabilities
* SpMin3_Bhp: Smallest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative polarizabilities
* SpMin4_Bhp: Smallest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative polarizabilities
* SpMin5_Bhp: Smallest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative polarizabilities
* SpMin6_Bhp: Smallest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative polarizabilities
* SpMin7_Bhp: Smallest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative polarizabilities
* SpMin8_Bhp: Smallest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative polarizabilities
* SpMax1_Bhi: Largest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative first ionization potential
* SpMax2_Bhi: Largest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative first ionization potential
* SpMax3_Bhi: Largest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative first ionization potential
* SpMax4_Bhi: Largest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative first ionization potential
* SpMax5_Bhi: Largest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative first ionization potential
* SpMax6_Bhi: Largest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative first ionization potential
* SpMax7_Bhi: Largest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative first ionization potential
* SpMax8_Bhi: Largest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative first ionization potential
* SpMin1_Bhi: Smallest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative first ionization potential
* SpMin2_Bhi: Smallest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative first ionization potential
* SpMin3_Bhi: Smallest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative first ionization potential
* SpMin4_Bhi: Smallest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative first ionization potential
* SpMin5_Bhi: Smallest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative first ionization potential
* SpMin6_Bhi: Smallest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative first ionization potential
* SpMin7_Bhi: Smallest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative first ionization potential
* SpMin8_Bhi: Smallest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative first ionization potential
* SpMax1_Bhs: Largest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative I-state
* SpMax2_Bhs: Largest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative I-state
* SpMax3_Bhs: Largest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative I-state
* SpMax4_Bhs: Largest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative I-state
* SpMax5_Bhs: Largest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative I-state
* SpMax6_Bhs: Largest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative I-state
* SpMax7_Bhs: Largest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative I-state
* SpMax8_Bhs: Largest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative I-state
* SpMin1_Bhs: Smallest absolute eigenvalue of Burden modified matrix - n 1 / weighted by relative I-state
* SpMin2_Bhs: Smallest absolute eigenvalue of Burden modified matrix - n 2 / weighted by relative I-state
* SpMin3_Bhs: Smallest absolute eigenvalue of Burden modified matrix - n 3 / weighted by relative I-state
* SpMin4_Bhs: Smallest absolute eigenvalue of Burden modified matrix - n 4 / weighted by relative I-state
* SpMin5_Bhs: Smallest absolute eigenvalue of Burden modified matrix - n 5 / weighted by relative I-state
* SpMin6_Bhs: Smallest absolute eigenvalue of Burden modified matrix - n 6 / weighted by relative I-state
* SpMin7_Bhs: Smallest absolute eigenvalue of Burden modified matrix - n 7 / weighted by relative I-state
* SpMin8_Bhs: Smallest absolute eigenvalue of Burden modified matrix - n 8 / weighted by relative I-state

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_CPSA

CPSA 3D PaDEL descriptor

The following features are calculated:

* PPSA-1: Partial positive surface area -- sum of surface area on positive parts of molecule
* PPSA-2: Partial positive surface area * total positive charge on the molecule 
* PPSA-3: Charge weighted partial positive surface area
* PNSA-1: Partial negative surface area -- sum of surface area on negative parts of molecule
* PNSA-2: Partial negative surface area * total negative charge on the molecule
* PNSA-3: Charge weighted partial negative surface area
* DPSA-1: Difference of PPSA-1 and PNSA-1
* DPSA-2: Difference of FPSA-2 and PNSA-2
* DPSA-3: Difference of PPSA-3 and PNSA-3
* FPSA-1: PPSA-1 / total molecular surface area
* FPSA-2: PPSA-2 / total molecular surface area
* FPSA-3: PPSA-3 / total molecular surface area
* FNSA-1: PNSA-1 / total molecular surface area
* FNSA-2: PNSA-2 / total molecular surface area
* FNSA-3: PNSA-3 / total molecular surface area
* WPSA-1: PPSA-1 * total molecular surface area / 1000
* WPSA-2: PPSA-2 * total molecular surface area /1000
* WPSA-3: PPSA-3 * total molecular surface area / 1000
* WNSA-1: PNSA-1 * total molecular surface area /1000
* WNSA-2: PNSA-2 * total molecular surface area / 1000
* WNSA-3: PNSA-3 * total molecular surface area / 1000
* RPCG: Relative positive charge -- most positive charge / total positive charge
* RNCG: Relative negative charge -- most negative charge / total negative charge
* RPCS: Relative positive charge surface area -- most positive surface area * RPCG
* RNCS: Relative negative charge surface area -- most negative surface area * RNCG
* THSA: Sum of solvent accessible surface areas of atoms with absolute value of partial charges less than 0.2 
* TPSA: Sum of solvent accessible surface areas of atoms with absolute value of partial charges greater than or equal 0.2 
* RHSA: THSA / total molecular surface area 
* RPSA: TPSA / total molecular surface area 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_CarbonTypes

CarbonTypes PaDEL descriptor

The following features are calculated:

* C1SP1: Triply bound carbon bound to one other carbon 
* C2SP1: Triply bound carbon bound to two other carbons 
* C1SP2: Doubly bound carbon bound to one other carbon 
* C2SP2: Doubly bound carbon bound to two other carbons 
* C3SP2: Doubly bound carbon bound to three other carbons 
* C1SP3: Singly bound carbon bound to one other carbon 
* C2SP3: Singly bound carbon bound to two other carbons 
* C3SP3: Singly bound carbon bound to three other carbons 
* C4SP3: Singly bound carbon bound to four other carbons 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_ChiChain

ChiChain PaDEL descriptor

The following features are calculated:

* SCH-3: Simple chain, order 3
* SCH-4: Simple chain, order 4
* SCH-5: Simple chain, order 5
* SCH-6: Simple chain, order 6
* SCH-7: Simple chain, order 7
* VCH-3: Valence chain, order 3
* VCH-4: Valence chain, order 4
* VCH-5: Valence chain, order 5
* VCH-6: Valence chain, order 6
* VCH-7: Valence chain, order 7

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_ChiCluster

ChiCluster PaDEL descriptor

The following features are calculated:

* SC-3: Simple cluster, order 3
* SC-4: Simple cluster, order 4
* SC-5: Simple cluster, order 5
* SC-6: Simple cluster, order 6
* VC-3: Valence cluster, order 3
* VC-4: Valence cluster, order 4
* VC-5: Valence cluster, order 5
* VC-6: Valence cluster, order 6

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_ChiPath

ChiPath PaDEL descriptor

The following features are calculated:

* SP-0: Simple path, order 0
* SP-1: Simple path, order 1
* SP-2: Simple path, order 2
* SP-3: Simple path, order 3
* SP-4: Simple path, order 4
* SP-5: Simple path, order 5
* SP-6: Simple path, order 6
* SP-7: Simple path, order 7
* ASP-0: Average simple path, order 0
* ASP-1: Average simple path, order 1
* ASP-2: Average simple path, order 2
* ASP-3: Average simple path, order 3
* ASP-4: Average simple path, order 4
* ASP-5: Average simple path, order 5
* ASP-6: Average simple path, order 6
* ASP-7: Average simple path, order 7
* VP-0: Valence path, order 0
* VP-1: Valence path, order 1
* VP-2: Valence path, order 2
* VP-3: Valence path, order 3
* VP-4: Valence path, order 4
* VP-5: Valence path, order 5
* VP-6: Valence path, order 6
* VP-7: Valence path, order 7
* AVP-0: Average valence path, order 0
* AVP-1: Average valence path, order 1
* AVP-2: Average valence path, order 2
* AVP-3: Average valence path, order 3
* AVP-4: Average valence path, order 4
* AVP-5: Average valence path, order 5
* AVP-6: Average valence path, order 6
* AVP-7: Average valence path, order 7

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_ChiPathCluster

ChiPathCluster PaDEL descriptor

The following features are calculated:

* SPC-4: Simple path cluster, order 4
* SPC-5: Simple path cluster, order 5
* SPC-6: Simple path cluster, order 6
* VPC-4: Valence path cluster, order 4
* VPC-5: Valence path cluster, order 5
* VPC-6: Valence path cluster, order 6

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_Constitutional

Constitutional PaDEL descriptor

The following features are calculated:

* Sv: Sum of atomic van der Waals volumes (scaled on carbon atom)
* Sse: Sum of atomic Sanderson electronegativities (scaled on carbon atom)
* Spe: Sum of atomic Pauling electronegativities (scaled on carbon atom)
* Sare: Sum of atomic Allred-Rochow electronegativities (scaled on carbon atom)
* Sp: Sum of atomic polarizabilities (scaled on carbon atom)
* Si: Sum of first first ionization potentials (scaled on carbon atom)
* Mv: Mean atomic van der Waals volumes (scaled on carbon atom)
* Mse: Mean atomic Sanderson electronegativities (scaled on carbon atom)
* Mpe: Mean atomic Pauling electronegativities (scaled on carbon atom)
* Mare: Mean atomic Allred-Rochow electronegativities (scaled on carbon atom)
* Mp: Mean atomic polarizabilities (scaled on carbon atom)
* Mi: Mean first first ionization potentials (scaled on carbon atom)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_Crippen

Crippen PaDEL descriptor

The following features are calculated:

* CrippenLogP: Crippen's LogP
* CrippenMR: Crippen's molar refractivity

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_DetourMatrix

DetourMatrix PaDEL descriptor

The following features are calculated:

* SpMax_Dt: Leading eigenvalue from detour matrix
* SpDiam_Dt: Spectral diameter from detour matrix
* SpAD_Dt: Spectral absolute deviation from detour matrix
* SpMAD_Dt: Spectral mean absolute deviation from detour matrix
* EE_Dt: Estrada-like index from detour matrix
* VE1_Dt: Coefficient sum of the last eigenvector from detour matrix
* VE2_Dt: Average coefficient sum of the last eigenvector from detour matrix
* VE3_Dt: Logarithmic coefficient sum of the last eigenvector from detour matrix
* VR1_Dt: Randic-like eigenvector-based index from detour matrix
* VR2_Dt: Normalized Randic-like eigenvector-based index from detour matrix
* VR3_Dt: Logarithmic Randic-like eigenvector-based index from detour matrix

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_EStateFP

PaDEL EStateFPfingerprint

Estate fingerprint - E-State fragments

* Number of bits: 79
* Bit prefix: EStateFP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_EccentricConnectivityIndex

EccentricConnectivityIndex PaDEL descriptor

The following features are calculated:

* ECCEN: A topological descriptor combining distance and adjacency information

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_ElectrotopologicalStateAtomType

ElectrotopologicalStateAtomType PaDEL descriptor

The following features are calculated:

* nHBd: Count of E-States for (strong) Hydrogen Bond donors
* nwHBd: Count of E-States for weak Hydrogen Bond donors
* nHBa: Count of E-States for (strong) Hydrogen Bond acceptors
* nwHBa: Count of E-States for weak Hydrogen Bond acceptors
* nHBint2: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 2
* nHBint3: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 3
* nHBint4: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 4
* nHBint5: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 5
* nHBint6: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 6
* nHBint7: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 7
* nHBint8: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 8
* nHBint9: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 9
* nHBint10: Count of E-State descriptors of strength for potential Hydrogen Bonds of path length 10
* nHsOH: Count of atom-type H E-State: -OH
* nHdNH: Count of atom-type H E-State: =NH
* nHsSH: Count of atom-type H E-State: -SH
* nHsNH2: Count of atom-type H E-State: -NH2
* nHssNH: Count of atom-type H E-State: -NH-
* nHaaNH: Count of atom-type H E-State: :NH:
* nHsNH3p: Count of atom-type H E-State: -NH3+
* nHssNH2p: Count of atom-type H E-State: -NH2-+
* nHsssNHp: Count of atom-type H E-State: >NH-+
* nHtCH: Count of atom-type H E-State: #CH
* nHdCH2: Count of atom-type H E-State: =CH2
* nHdsCH: Count of atom-type H E-State: =CH-
* nHaaCH: Count of atom-type H E-State: :CH:
* nHCHnX: Count of atom-type H E-State: CHnX
* nHCsats: Count of atom-type H E-State: H bonded to B, Si, P, Ge, As, Se, Sn or Pb
* nHCsatu: Count of atom-type H E-State: H on C sp3 bonded to unsaturated C
* nHAvin: Count of atom-type H E-State: H on C vinyl bonded to C aromatic
* nHother: Count of atom-type H E-State: H on aaCH, dCH2 or dsCH
* nHmisc: Count of atom-type H E-State: H bonded to B, Si, P, Ge, As, Se, Sn or Pb
* nsLi: Count of atom-type E-State: -Li
* nssBe: Count of atom-type E-State: -Be-
* nssssBem: Count of atom-type E-State: >Be<-2
* nsBH2: Count of atom-type E-State: -BH2
* nssBH: Count of atom-type E-State: -BH-
* nsssB: Count of atom-type E-State: -B<
* nssssBm: Count of atom-type E-State: >B<-
* nsCH3: Count of atom-type E-State: -CH3
* ndCH2: Count of atom-type E-State: =CH2
* nssCH2: Count of atom-type E-State: -CH2-
* ntCH: Count of atom-type E-State: #CH
* ndsCH: Count of atom-type E-State: =CH-
* naaCH: Count of atom-type E-State: :CH:
* nsssCH: Count of atom-type E-State: >CH-
* nddC: Count of atom-type E-State: =C=
* ntsC: Count of atom-type E-State: #C-
* ndssC: Count of atom-type E-State: =C<
* naasC: Count of atom-type E-State: :C:-
* naaaC: Count of atom-type E-State: ::C:
* nssssC: Count of atom-type E-State: >C<
* nsNH3p: Count of atom-type E-State: -NH3+
* nsNH2: Count of atom-type E-State: -NH2
* nssNH2p: Count of atom-type E-State: -NH2-+
* ndNH: Count of atom-type E-State: =NH
* nssNH: Count of atom-type E-State: -NH-
* naaNH: Count of atom-type E-State: :NH:
* ntN: Count of atom-type E-State: #N
* nsssNHp: Count of atom-type E-State: >NH-+
* ndsN: Count of atom-type E-State: =N-
* naaN: Count of atom-type E-State: :N:
* nsssN: Count of atom-type E-State: >N-
* nddsN: Count of atom-type E-State: -N<<
* naasN: Count of atom-type E-State: :N:-
* nssssNp: Count of atom-type E-State: >N<+
* nsOH: Count of atom-type E-State: -OH
* ndO: Count of atom-type E-State: =O
* nssO: Count of atom-type E-State: -O-
* naaO: Count of atom-type E-State: :O:
* naOm: Count of atom-type E-State: :O-0.5
* nsOm: Count of atom-type E-State: -O-
* nsF: Count of atom-type E-State: -F
* nsSiH3: Count of atom-type E-State: -SiH3
* nssSiH2: Count of atom-type E-State: -SiH2-
* nsssSiH: Count of atom-type E-State: >SiH-
* nssssSi: Count of atom-type E-State: >Si<
* nsPH2: Count of atom-type E-State: -PH2
* nssPH: Count of atom-type E-State: -PH-
* nsssP: Count of atom-type E-State: >P-
* ndsssP: Count of atom-type E-State: ->P=
* nddsP: Count of atom-type E-State: -=P=
* nsssssP: Count of atom-type E-State: ->P<
* nsSH: Count of atom-type E-State: -SH
* ndS: Count of atom-type E-State: =S
* nssS: Count of atom-type E-State: -S-
* naaS: Count of atom-type E-State: aSa
* ndssS: Count of atom-type E-State: >S=
* nddssS: Count of atom-type E-State: >S==
* nssssssS: Count of atom-type E-State: >S<<
* nSm: Count of atom-type E-State: -S-
* nsCl: Count of atom-type E-State: -Cl
* nsGeH3: Count of atom-type E-State: -GeH3
* nssGeH2: Count of atom-type E-State: -GeH2-
* nsssGeH: Count of atom-type E-State: >GeH-
* nssssGe: Count of atom-type E-State: >Ge<
* nsAsH2: Count of atom-type E-State: -AsH2
* nssAsH: Count of atom-type E-State: -AsH-
* nsssAs: Count of atom-type E-State: >As-
* ndsssAs: Count of atom-type E-State: ->As=
* nddsAs: Count of atom-type E-State: -=As=
* nsssssAs: Count of atom-type E-State: ->As<
* nsSeH: Count of atom-type E-State: -SeH
* ndSe: Count of atom-type E-State: =Se
* nssSe: Count of atom-type E-State: -Se-
* naaSe: Count of atom-type E-State: aSea
* ndssSe: Count of atom-type E-State: >Se=
* nssssssSe: Count of atom-type E-State: >Se<<
* nddssSe: Count of atom-type E-State: -=Se=-
* nsBr: Count of atom-type E-State: -Br
* nsSnH3: Count of atom-type E-State: -SnH3
* nssSnH2: Count of atom-type E-State: -SnH2-
* nsssSnH: Count of atom-type E-State: >SnH-
* nssssSn: Count of atom-type E-State: >Sn<
* nsI: Count of atom-type E-State: -I
* nsPbH3: Count of atom-type E-State: -PbH3
* nssPbH2: Count of atom-type E-State: -PbH2-
* nsssPbH: Count of atom-type E-State: >PbH-
* nssssPb: Count of atom-type E-State: >Pb<
* SHBd: Sum of E-States for (strong) hydrogen bond donors
* SwHBd: Sum of E-States for weak hydrogen bond donors
* SHBa: Sum of E-States for (strong) hydrogen bond acceptors
* SwHBa: Sum of E-States for weak hydrogen bond acceptors
* SHBint2: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 2
* SHBint3: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 3
* SHBint4: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 4
* SHBint5: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 5
* SHBint6: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 6
* SHBint7: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 7
* SHBint8: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 8
* SHBint9: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 9
* SHBint10: Sum of E-State descriptors of strength for potential hydrogen bonds of path length 10
* SHsOH: Sum of atom-type H E-State: -OH
* SHdNH: Sum of atom-type H E-State: =NH
* SHsSH: Sum of atom-type H E-State: -SH
* SHsNH2: Sum of atom-type H E-State: -NH2
* SHssNH: Sum of atom-type H E-State: -NH-
* SHaaNH: Sum of atom-type H E-State: :NH:
* SHsNH3p: Sum of atom-type H E-State: -NH3+
* SHssNH2p: Sum of atom-type H E-State: -NH2-+
* SHsssNHp: Sum of atom-type H E-State: >NH-+
* SHtCH: Sum of atom-type H E-State: #CH
* SHdCH2: Sum of atom-type H E-State: =CH2
* SHdsCH: Sum of atom-type H E-State: =CH-
* SHaaCH: Sum of atom-type H E-State: :CH:
* SHCHnX: Sum of atom-type H E-State: CHnX
* SHCsats: Sum of atom-type H E-State: H on C sp3 bonded to saturated C
* SHCsatu: Sum of atom-type H E-State: H on C sp3 bonded to unsaturated C
* SHAvin: Sum of atom-type H E-State: H on C vinyl bonded to C aromatic
* SHother: Sum of atom-type H E-State: H on aaCH, dCH2 or dsCH
* SHmisc: Sum of atom-type H E-State: H bonded to B, Si, P, Ge, As, Se, Sn or Pb
* SsLi: Sum of atom-type E-State: -Li
* SssBe: Sum of atom-type E-State: -Be-
* SssssBem: Sum of atom-type E-State: >Be<-2
* SsBH2: Sum of atom-type E-State: -BH2
* SssBH: Sum of atom-type E-State: -BH-
* SsssB: Sum of atom-type E-State: -B<
* SssssBm: Sum of atom-type E-State: >B<-
* SsCH3: Sum of atom-type E-State: -CH3
* SdCH2: Sum of atom-type E-State: =CH2
* SssCH2: Sum of atom-type E-State: -CH2-
* StCH: Sum of atom-type E-State: #CH
* SdsCH: Sum of atom-type E-State: =CH-
* SaaCH: Sum of atom-type E-State: :CH:
* SsssCH: Sum of atom-type E-State: >CH-
* SddC: Sum of atom-type E-State: =C=
* StsC: Sum of atom-type E-State: #C-
* SdssC: Sum of atom-type E-State: =C<
* SaasC: Sum of atom-type E-State: :C:-
* SaaaC: Sum of atom-type E-State: ::C:
* SssssC: Sum of atom-type E-State: >C<
* SsNH3p: Sum of atom-type E-State: -NH3+
* SsNH2: Sum of atom-type E-State: -NH2
* SssNH2p: Sum of atom-type E-State: -NH2-+
* SdNH: Sum of atom-type E-State: =NH
* SssNH: Sum of atom-type E-State: -NH-
* SaaNH: Sum of atom-type E-State: :NH:
* StN: Sum of atom-type E-State: #N
* SsssNHp: Sum of atom-type E-State: >NH-+
* SdsN: Sum of atom-type E-State: =N-
* SaaN: Sum of atom-type E-State: :N:
* SsssN: Sum of atom-type E-State: >N-
* SddsN: Sum of atom-type E-State: -N<<
* SaasN: Sum of atom-type E-State: :N:-
* SssssNp: Sum of atom-type E-State: >N<+
* SsOH: Sum of atom-type E-State: -OH
* SdO: Sum of atom-type E-State: =O
* SssO: Sum of atom-type E-State: -O-
* SaaO: Sum of atom-type E-State: :O:
* SaOm: Sum of atom-type E-State: :O-0.5
* SsOm: Sum of atom-type E-State: -O-
* SsF: Sum of atom-type E-State: -F
* SsSiH3: Sum of atom-type E-State: -SiH3
* SssSiH2: Sum of atom-type E-State: -SiH2-
* SsssSiH: Sum of atom-type E-State: >SiH-
* SssssSi: Sum of atom-type E-State: >Si<
* SsPH2: Sum of atom-type E-State: -PH2
* SssPH: Sum of atom-type E-State: -PH-
* SsssP: Sum of atom-type E-State: >P-
* SdsssP: Sum of atom-type E-State: ->P=
* SddsP: Sum of atom-type E-State: -=P=
* SsssssP: Sum of atom-type E-State: ->P<
* SsSH: Sum of atom-type E-State: -SH
* SdS: Sum of atom-type E-State: =S
* SssS: Sum of atom-type E-State: -S-
* SaaS: Sum of atom-type E-State: aSa
* SdssS: Sum of atom-type E-State: >S=
* SddssS: Sum of atom-type E-State: >S==
* SssssssS: Sum of atom-type E-State: >S<<
* SSm: Sum of atom-type E-State: -S-
* SsCl: Sum of atom-type E-State: -Cl
* SsGeH3: Sum of atom-type E-State: -GeH3
* SssGeH2: Sum of atom-type E-State: -GeH2-
* SsssGeH: Sum of atom-type E-State: >GeH-
* SssssGe: Sum of atom-type E-State: >Ge<
* SsAsH2: Sum of atom-type E-State: -AsH2
* SssAsH: Sum of atom-type E-State: -AsH-
* SsssAs: Sum of atom-type E-State: >As-
* SdsssAs: Sum of atom-type E-State: ->As=
* SddsAs: Sum of atom-type E-State: -=As=
* SsssssAs: Sum of atom-type E-State: ->As<
* SsSeH: Sum of atom-type E-State: -SeH
* SdSe: Sum of atom-type E-State: =Se
* SssSe: Sum of atom-type E-State: -Se-
* SaaSe: Sum of atom-type E-State: aSea
* SdssSe: Sum of atom-type E-State: >Se=
* SssssssSe: Sum of atom-type E-State: >Se<<
* SddssSe: Sum of atom-type E-State: -=Se=-
* SsBr: Sum of atom-type E-State: -Br
* SsSnH3: Sum of atom-type E-State: -SnH3
* SssSnH2: Sum of atom-type E-State: -SnH2-
* SsssSnH: Sum of atom-type E-State: >SnH-
* SssssSn: Sum of atom-type E-State: >Sn<
* SsI: Sum of atom-type E-State: -I
* SsPbH3: Sum of atom-type E-State: -PbH3
* SssPbH2: Sum of atom-type E-State: -PbH2-
* SsssPbH: Sum of atom-type E-State: >PbH-
* SssssPb: Sum of atom-type E-State: >Pb<
* minHBd: Minimum E-States for (strong) Hydrogen Bond donors
* minwHBd: Minimum E-States for weak Hydrogen Bond donors
* minHBa: Minimum E-States for (strong) Hydrogen Bond acceptors
* minwHBa: Minimum E-States for weak Hydrogen Bond acceptors
* minHBint2: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 2
* minHBint3: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 3
* minHBint4: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 4
* minHBint5: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 5
* minHBint6: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 6
* minHBint7: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 7
* minHBint8: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 8
* minHBint9: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 9
* minHBint10: Minimum E-State descriptors of strength for potential Hydrogen Bonds of path length 10
* minHsOH: Minimum atom-type H E-State: -OH
* minHdNH: Minimum atom-type H E-State: =NH
* minHsSH: Minimum atom-type H E-State: -SH
* minHsNH2: Minimum atom-type H E-State: -NH2
* minHssNH: Minimum atom-type H E-State: -NH-
* minHaaNH: Minimum atom-type H E-State: :NH:
* minHsNH3p: Minimum atom-type H E-State: -NH3+
* minHssNH2p: Minimum atom-type H E-State: -NH2-+
* minHsssNHp: Minimum atom-type H E-State: >NH-+
* minHtCH: Minimum atom-type H E-State: #CH
* minHdCH2: Minimum atom-type H E-State: =CH2
* minHdsCH: Minimum atom-type H E-State: =CH-
* minHaaCH: Minimum atom-type H E-State: :CH:
* minHCHnX: Minimum atom-type H E-State: CHnX
* minHCsats: Minimum atom-type H E-State: H bonded to B, Si, P, Ge, As, Se, Sn or Pb
* minHCsatu: Minimum atom-type H E-State: H on C sp3 bonded to unsaturated C
* minHAvin: Minimum atom-type H E-State: H on C vinyl bonded to C aromatic
* minHother: Minimum atom-type H E-State: H on aaCH, dCH2 or dsCH
* minHmisc: Minimum atom-type H E-State: H bonded to B, Si, P, Ge, As, Se, Sn or Pb
* minsLi: Minimum atom-type E-State: -Li
* minssBe: Minimum atom-type E-State: -Be-
* minssssBem: Minimum atom-type E-State: >Be<-2
* minsBH2: Minimum atom-type E-State: -BH2
* minssBH: Minimum atom-type E-State: -BH-
* minsssB: Minimum atom-type E-State: -B<
* minssssBm: Minimum atom-type E-State: >B<-
* minsCH3: Minimum atom-type E-State: -CH3
* mindCH2: Minimum atom-type E-State: =CH2
* minssCH2: Minimum atom-type E-State: -CH2-
* mintCH: Minimum atom-type E-State: #CH
* mindsCH: Minimum atom-type E-State: =CH-
* minaaCH: Minimum atom-type E-State: :CH:
* minsssCH: Minimum atom-type E-State: >CH-
* minddC: Minimum atom-type E-State: =C=
* mintsC: Minimum atom-type E-State: #C-
* mindssC: Minimum atom-type E-State: =C<
* minaasC: Minimum atom-type E-State: :C:-
* minaaaC: Minimum atom-type E-State: ::C:
* minssssC: Minimum atom-type E-State: >C<
* minsNH3p: Minimum atom-type E-State: -NH3+
* minsNH2: Minimum atom-type E-State: -NH2
* minssNH2p: Minimum atom-type E-State: -NH2-+
* mindNH: Minimum atom-type E-State: =NH
* minssNH: Minimum atom-type E-State: -NH-
* minaaNH: Minimum atom-type E-State: :NH:
* mintN: Minimum atom-type E-State: #N
* minsssNHp: Minimum atom-type E-State: >NH-+
* mindsN: Minimum atom-type E-State: =N-
* minaaN: Minimum atom-type E-State: :N:
* minsssN: Minimum atom-type E-State: >N-
* minddsN: Minimum atom-type E-State: -N<<
* minaasN: Minimum atom-type E-State: :N:-
* minssssNp: Minimum atom-type E-State: >N<+
* minsOH: Minimum atom-type E-State: -OH
* mindO: Minimum atom-type E-State: =O
* minssO: Minimum atom-type E-State: -O-
* minaaO: Minimum atom-type E-State: :O:
* minaOm: Minimum atom-type E-State: :O-0.5
* minsOm: Minimum atom-type E-State: -O-
* minsF: Minimum atom-type E-State: -F
* minsSiH3: Minimum atom-type E-State: -SiH3
* minssSiH2: Minimum atom-type E-State: -SiH2-
* minsssSiH: Minimum atom-type E-State: >SiH-
* minssssSi: Minimum atom-type E-State: >Si<
* minsPH2: Minimum atom-type E-State: -PH2
* minssPH: Minimum atom-type E-State: -PH-
* minsssP: Minimum atom-type E-State: >P-
* mindsssP: Minimum atom-type E-State: ->P=
* minddsP: Minimum atom-type E-State: -=P=
* minsssssP: Minimum atom-type E-State: ->P<
* minsSH: Minimum atom-type E-State: -SH
* mindS: Minimum atom-type E-State: =S
* minssS: Minimum atom-type E-State: -S-
* minaaS: Minimum atom-type E-State: aSa
* mindssS: Minimum atom-type E-State: >S=
* minddssS: Minimum atom-type E-State: >S==
* minssssssS: Minimum atom-type E-State: >S<<
* minSm: Minimum atom-type E-State: -S-
* minsCl: Minimum atom-type E-State: -Cl
* minsGeH3: Minimum atom-type E-State: -GeH3
* minssGeH2: Minimum atom-type E-State: -GeH2-
* minsssGeH: Minimum atom-type E-State: >GeH-
* minssssGe: Minimum atom-type E-State: >Ge<
* minsAsH2: Minimum atom-type E-State: -AsH2
* minssAsH: Minimum atom-type E-State: -AsH-
* minsssAs: Minimum atom-type E-State: >As-
* mindsssAs: Minimum atom-type E-State: ->As=
* minddsAs: Minimum atom-type E-State: -=As=
* minsssssAs: Minimum atom-type E-State: ->As<
* minsSeH: Minimum atom-type E-State: -SeH
* mindSe: Minimum atom-type E-State: =Se
* minssSe: Minimum atom-type E-State: -Se-
* minaaSe: Minimum atom-type E-State: aSea
* mindssSe: Minimum atom-type E-State: >Se=
* minssssssSe: Minimum atom-type E-State: >Se<<
* minddssSe: Minimum atom-type E-State: -=Se=-
* minsBr: Minimum atom-type E-State: -Br
* minsSnH3: Minimum atom-type E-State: -SnH3
* minssSnH2: Minimum atom-type E-State: -SnH2-
* minsssSnH: Minimum atom-type E-State: >SnH-
* minssssSn: Minimum atom-type E-State: >Sn<
* minsI: Minimum atom-type E-State: -I
* minsPbH3: Minimum atom-type E-State: -PbH3
* minssPbH2: Minimum atom-type E-State: -PbH2-
* minsssPbH: Minimum atom-type E-State: >PbH-
* minssssPb: Minimum atom-type E-State: >Pb<
* maxHBd: Maximum E-States for (strong) Hydrogen Bond donors
* maxwHBd: Maximum E-States for weak Hydrogen Bond donors
* maxHBa: Maximum E-States for (strong) Hydrogen Bond acceptors
* maxwHBa: Maximum E-States for weak Hydrogen Bond acceptors
* maxHBint2: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 2
* maxHBint3: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 3
* maxHBint4: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 4
* maxHBint5: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 5
* maxHBint6: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 6
* maxHBint7: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 7
* maxHBint8: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 8
* maxHBint9: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 9
* maxHBint10: Maximum E-State descriptors of strength for potential Hydrogen Bonds of path length 10
* maxHsOH: Maximum atom-type H E-State: -OH
* maxHdNH: Maximum atom-type H E-State: =NH
* maxHsSH: Maximum atom-type H E-State: -SH
* maxHsNH2: Maximum atom-type H E-State: -NH2
* maxHssNH: Maximum atom-type H E-State: -NH-
* maxHaaNH: Maximum atom-type H E-State: :NH:
* maxHsNH3p: Maximum atom-type H E-State: -NH3+
* maxHssNH2p: Maximum atom-type H E-State: -NH2-+
* maxHsssNHp: Maximum atom-type H E-State: >NH-+
* maxHtCH: Maximum atom-type H E-State: #CH
* maxHdCH2: Maximum atom-type H E-State: =CH2
* maxHdsCH: Maximum atom-type H E-State: =CH-
* maxHaaCH: Maximum atom-type H E-State: :CH:
* maxHCHnX: Maximum atom-type H E-State: CHnX
* maxHCsats: Maximum atom-type H E-State: H bonded to B, Si, P, Ge, As, Se, Sn or Pb
* maxHCsatu: Maximum atom-type H E-State: H on C sp3 bonded to unsaturated C
* maxHAvin: Maximum atom-type H E-State: H on C vinyl bonded to C aromatic
* maxHother: Maximum atom-type H E-State: H on aaCH, dCH2 or dsCH
* maxHmisc: Maximum atom-type H E-State: H bonded to B, Si, P, Ge, As, Se, Sn or Pb
* maxsLi: Maximum atom-type E-State: -Li
* maxssBe: Maximum atom-type E-State: -Be-
* maxssssBem: Maximum atom-type E-State: >Be<-2
* maxsBH2: Maximum atom-type E-State: -BH2
* maxssBH: Maximum atom-type E-State: -BH-
* maxsssB: Maximum atom-type E-State: -B<
* maxssssBm: Maximum atom-type E-State: >B<-
* maxsCH3: Maximum atom-type E-State: -CH3
* maxdCH2: Maximum atom-type E-State: =CH2
* maxssCH2: Maximum atom-type E-State: -CH2-
* maxtCH: Maximum atom-type E-State: #CH
* maxdsCH: Maximum atom-type E-State: =CH-
* maxaaCH: Maximum atom-type E-State: :CH:
* maxsssCH: Maximum atom-type E-State: >CH-
* maxddC: Maximum atom-type E-State: =C=
* maxtsC: Maximum atom-type E-State: #C-
* maxdssC: Maximum atom-type E-State: =C<
* maxaasC: Maximum atom-type E-State: :C:-
* maxaaaC: Maximum atom-type E-State: ::C:
* maxssssC: Maximum atom-type E-State: >C<
* maxsNH3p: Maximum atom-type E-State: -NH3+
* maxsNH2: Maximum atom-type E-State: -NH2
* maxssNH2p: Maximum atom-type E-State: -NH2-+
* maxdNH: Maximum atom-type E-State: =NH
* maxssNH: Maximum atom-type E-State: -NH-
* maxaaNH: Maximum atom-type E-State: :NH:
* maxtN: Maximum atom-type E-State: #N
* maxsssNHp: Maximum atom-type E-State: >NH-+
* maxdsN: Maximum atom-type E-State: =N-
* maxaaN: Maximum atom-type E-State: :N:
* maxsssN: Maximum atom-type E-State: >N-
* maxddsN: Maximum atom-type E-State: -N<<
* maxaasN: Maximum atom-type E-State: :N:-
* maxssssNp: Maximum atom-type E-State: >N<+
* maxsOH: Maximum atom-type E-State: -OH
* maxdO: Maximum atom-type E-State: =O
* maxssO: Maximum atom-type E-State: -O-
* maxaaO: Maximum atom-type E-State: :O:
* maxaOm: Maximum atom-type E-State: :O-0.5
* maxsOm: Maximum atom-type E-State: -O-
* maxsF: Maximum atom-type E-State: -F
* maxsSiH3: Maximum atom-type E-State: -SiH3
* maxssSiH2: Maximum atom-type E-State: -SiH2-
* maxsssSiH: Maximum atom-type E-State: >SiH-
* maxssssSi: Maximum atom-type E-State: >Si<
* maxsPH2: Maximum atom-type E-State: -PH2
* maxssPH: Maximum atom-type E-State: -PH-
* maxsssP: Maximum atom-type E-State: >P-
* maxdsssP: Maximum atom-type E-State: ->P=
* maxddsP: Maximum atom-type E-State: -=P=
* maxsssssP: Maximum atom-type E-State: ->P<
* maxsSH: Maximum atom-type E-State: -SH
* maxdS: Maximum atom-type E-State: =S
* maxssS: Maximum atom-type E-State: -S-
* maxaaS: Maximum atom-type E-State: aSa
* maxdssS: Maximum atom-type E-State: >S=
* maxddssS: Maximum atom-type E-State: >S==
* maxssssssS: Maximum atom-type E-State: >S<<
* maxSm: Maximum atom-type E-State: -S-
* maxsCl: Maximum atom-type E-State: -Cl
* maxsGeH3: Maximum atom-type E-State: -GeH3
* maxssGeH2: Maximum atom-type E-State: -GeH2-
* maxsssGeH: Maximum atom-type E-State: >GeH-
* maxssssGe: Maximum atom-type E-State: >Ge<
* maxsAsH2: Maximum atom-type E-State: -AsH2
* maxssAsH: Maximum atom-type E-State: -AsH-
* maxsssAs: Maximum atom-type E-State: >As-
* maxdsssAs: Maximum atom-type E-State: ->As=
* maxddsAs: Maximum atom-type E-State: -=As=
* maxsssssAs: Maximum atom-type E-State: ->As<
* maxsSeH: Maximum atom-type E-State: -SeH
* maxdSe: Maximum atom-type E-State: =Se
* maxssSe: Maximum atom-type E-State: -Se-
* maxaaSe: Maximum atom-type E-State: aSea
* maxdssSe: Maximum atom-type E-State: >Se=
* maxssssssSe: Maximum atom-type E-State: >Se<<
* maxddssSe: Maximum atom-type E-State: -=Se=-
* maxsBr: Maximum atom-type E-State: -Br
* maxsSnH3: Maximum atom-type E-State: -SnH3
* maxssSnH2: Maximum atom-type E-State: -SnH2-
* maxsssSnH: Maximum atom-type E-State: >SnH-
* maxssssSn: Maximum atom-type E-State: >Sn<
* maxsI: Maximum atom-type E-State: -I
* maxsPbH3: Maximum atom-type E-State: -PbH3
* maxssPbH2: Maximum atom-type E-State: -PbH2-
* maxsssPbH: Maximum atom-type E-State: >PbH-
* maxssssPb: Maximum atom-type E-State: >Pb<
* sumI: Sum of the intrinsic state values I
* meanI: Mean intrinsic state values I
* hmax: Maximum H E-State
* gmax: Maximum E-State
* hmin: Minimum H E-State
* gmin: Minimum E-State
* LipoaffinityIndex: Lipoaffinity index
* MAXDN: Maximum negative intrinsic state di?fference in the molecule (related to the nucleophilicity of the molecule). Using deltaV = (Zv-maxBondedHydrogens) /(atomicNumber-Zv-1). Gramatica, P., Corradi, M., and Consonni, V. (2000). Modelling and prediction of soil sorption coefficients of non-ionic organic pesticides by molecular descriptors. Chemosphere 41, 763-777.
* MAXDP: Maximum positive intrinsic state di?fference in the molecule (related to the electrophilicity of the molecule).  Using deltaV = (Zv-maxBondedHydrogens) /(atomicNumber-Zv-1). Gramatica, P., Corradi, M., and Consonni, V. (2000). Modelling and prediction of soil sorption coefficients of non-ionic organic pesticides by molecular descriptors. Chemosphere 41, 763-777.
* DELS: Sum of all atoms intrinsic state differences (measure of total charge transfer in the molecule).  Using deltaV = (Zv-maxBondedHydrogens) /(atomicNumber-Zv-1). Gramatica, P., Corradi, M., and Consonni, V. (2000). Modelling and prediction of soil sorption coefficients of non-ionic organic pesticides by molecular descriptors. Chemosphere 41, 763-777.
* MAXDN2: Maximum negative intrinsic state di?fference in the molecule (related to the nucleophilicity of the molecule). Using deltaV = Zv-maxBondedHydrogens. Gramatica, P., Corradi, M., and Consonni, V. (2000). Modelling and prediction of soil sorption coefficients of non-ionic organic pesticides by molecular descriptors. Chemosphere 41, 763-777.
* MAXDP2: Maximum positive intrinsic state di?fference in the molecule (related to the electrophilicity of the molecule). Using deltaV = Zv-maxBondedHydrogens. Gramatica, P., Corradi, M., and Consonni, V. (2000). Modelling and prediction of soil sorption coefficients of non-ionic organic pesticides by molecular descriptors. Chemosphere 41, 763-777.
* DELS2: Sum of all atoms intrinsic state differences (measure of total charge transfer in the molecule). Using deltaV = Zv-maxBondedHydrogens. Gramatica, P., Corradi, M., and Consonni, V. (2000). Modelling and prediction of soil sorption coefficients of non-ionic organic pesticides by molecular descriptors. Chemosphere 41, 763-777.

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_ExtFP

PaDEL ExtFPfingerprint

CDK extended fingerprint - Extends the Fingerprinter with additional bits
describing ring features

* Number of bits: 1024
* Bit prefix: ExtFP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_ExtendedTopochemicalAtom

ExtendedTopochemicalAtom PaDEL descriptor

The following features are calculated:

* ETA_Alpha: Sum of alpha values of all non-hydrogen vertices of a molecule
* ETA_AlphaP: Sum of alpha values of all non-hydrogen vertices of a molecule relative to molecular size
* ETA_dAlpha_A: A measure of count of non-hydrogen heteroatoms
* ETA_dAlpha_B: A measure of count of hydrogen bond acceptor atoms and/or polar surface area
* ETA_Epsilon_1: A measure of electronegative atom count
* ETA_Epsilon_2: A measure of electronegative atom count
* ETA_Epsilon_3: A measure of electronegative atom count
* ETA_Epsilon_4: A measure of electronegative atom count
* ETA_Epsilon_5: A measure of electronegative atom count
* ETA_dEpsilon_A: A measure of contribution of unsaturation and electronegative atom count
* ETA_dEpsilon_B: A measure of contribution of unsaturation
* ETA_dEpsilon_C: A measure of contribution of electronegativity
* ETA_dEpsilon_D: A measure of contribution of hydrogen bond donor atoms
* ETA_Psi_1: A measure of hydrogen bonding propensity of the molecules and/or polar surface area
* ETA_dPsi_A: A measure of hydrogen bonding propensity of the molecules
* ETA_dPsi_B: A measure of hydrogen bonding propensity of the molecules
* ETA_Shape_P: Shape index P
* ETA_Shape_Y: Shape index Y
* ETA_Shape_X: Shape index X
* ETA_Beta: A measure of electronic features of the molecule
* ETA_BetaP: A measure of electronic features of the molecule relative to molecular size
* ETA_Beta_s: A measure of electronegative atom count of the molecule
* ETA_BetaP_s: A measure of electronegative atom count of the molecule relative to molecular size
* ETA_Beta_ns: A measure of electron-richness of the molecule
* ETA_BetaP_ns: A measure of electron-richness of the molecule relative to molecular size
* ETA_dBeta: A measure of relative unsaturation content
* ETA_dBetaP: A measure of relative unsaturation content relative to molecular size
* ETA_Beta_ns_d: A measure of lone electrons entering into resonance
* ETA_BetaP_ns_d: A measure of lone electrons entering into resonance relative to molecular size
* ETA_Eta: Composite index Eta
* ETA_EtaP: Composite index Eta relative to molecular size
* ETA_Eta_R: Composite index Eta for reference alkane
* ETA_Eta_F: Functionality index EtaF
* ETA_EtaP_F: Functionality index EtaF relative to molecular size
* ETA_Eta_L: Local index Eta_local
* ETA_EtaP_L: Local index Eta_local relative to molecular size
* ETA_Eta_R_L: Local index Eta_local for reference alkane
* ETA_Eta_F_L: Local functionality contribution EtaF_local
* ETA_EtaP_F_L: Local functionality contribution EtaF_local relative to molecular size
* ETA_Eta_B: Branching index EtaB
* ETA_EtaP_B: Branching index EtaB relative to molecular size
* ETA_Eta_B_RC: Branching index EtaB (with ring correction)
* ETA_EtaP_B_RC: Branching index EtaB (with ring correction) relative to molecular size

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_FMF

FMF PaDEL descriptor

The following features are calculated:

* FMF: Complexity of a molecule

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_FP

PaDEL FPfingerprint

CDK fingerprint - Fingerprint of length 1024 and search depth of 8

* Number of bits: nan
* Bit prefix: FP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_FragmentComplexity

FragmentComplexity PaDEL descriptor

The following features are calculated:

* fragC: Complexity of a system

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_GraphFP

PaDEL GraphFPfingerprint

CDK graph only fingerprint - Specialized version of the Fingerprinter which does
not take bond orders into account

* Number of bits: nan
* Bit prefix: GraphFP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_GravitationalIndex

GravitationalIndex 3D PaDEL descriptor

The following features are calculated:

* GRAV-1: Gravitational index of heavy atoms 
* GRAV-2: Square root of gravitational index of heavy atoms 
* GRAV-3: Cube root of gravitational index of heavy atoms 
* GRAVH-1: Gravitational index - hydrogens included 
* GRAVH-2: Square root of hydrogen-included gravitational index 
* GRAVH-3: Cube root of hydrogen-included gravitational index 
* GRAV-4: Gravitational index of all pairs of atoms (not just bonded pairs) 
* GRAV-5: Square root of gravitational index of all pairs of atoms (not just bonded pairs) 
* GRAV-6: Cube root of gravitational index of all pairs of atoms (not just bonded pairs) 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_HBondAcceptorCount

HBondAcceptorCount PaDEL descriptor

The following features are calculated:

* nHBAcc: Number of hydrogen bond acceptors (using CDK HBondAcceptorCountDescriptor algorithm)
* nHBAcc2: Number of hydrogen bond acceptors (any oxygen         any nitrogen where the formal charge of the nitrogen is non-positive (i.e. formal charge <= 0) except a non-aromatic nitrogen that is adjacent to an oxygen and aromatic ring, or an aromatic nitrogen with a hydrogen atom in a ring, or an aromatic nitrogen with 3 neighouring atoms in a ring, or a nitrogen with total bond order >=4      any fluorine)
* nHBAcc3: Number of hydrogen bond acceptors (any oxygen         any nitrogen where the formal charge of the nitrogen is non-positive (i.e. formal charge <= 0) except a non-aromatic nitrogen that is adjacent to an oxygen and aromatic ring, or an aromatic nitrogen with a hydrogen atom in a ring, or an aromatic nitrogen with 3 neighouring atoms in a ring, or a nitrogen with total bond order >=4, or a nitrogen in an amide bond      any fluorine)
* nHBAcc_Lipinski: Number of hydrogen bond acceptors (using Lipinski's definition: any nitrogen  any oxygen)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_HBondDonorCount

HBondDonorCount PaDEL descriptor

The following features are calculated:

* nHBDon: Number of hydrogen bond donors (using CDK HBondDonorCountDescriptor algorithm)
* nHBDon_Lipinski: Number of hydrogen bond donors (using Lipinski's definition: Any OH or NH. Each available hydrogen atom is counted as one hydrogen bond donor)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_HybridizationRatio

HybridizationRatio PaDEL descriptor

The following features are calculated:

* HybRatio: Fraction of sp3 carbons to sp2 carbons

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_InformationContent

InformationContent PaDEL descriptor

The following features are calculated:

* IC0: Information content index (neighborhood symmetry of 0-order)
* IC1: Information content index (neighborhood symmetry of 1-order)
* IC2: Information content index (neighborhood symmetry of 2-order)
* IC3: Information content index (neighborhood symmetry of 3-order)
* IC4: Information content index (neighborhood symmetry of 4-order)
* IC5: Information content index (neighborhood symmetry of 5-order)
* TIC0: Total information content index (neighborhood symmetry of 0-order)
* TIC1: Total information content index (neighborhood symmetry of 1-order)
* TIC2: Total information content index (neighborhood symmetry of 2-order)
* TIC3: Total information content index (neighborhood symmetry of 3-order)
* TIC4: Total information content index (neighborhood symmetry of 4-order)
* TIC5: Total information content index (neighborhood symmetry of 5-order)
* SIC0: Structural information content index (neighborhood symmetry of 0-order)
* SIC1: Structural information content index (neighborhood symmetry of 1-order)
* SIC2: Structural information content index (neighborhood symmetry of 2-order)
* SIC3: Structural information content index (neighborhood symmetry of 3-order)
* SIC4: Structural information content index (neighborhood symmetry of 4-order)
* SIC5: Structural information content index (neighborhood symmetry of 5-order)
* CIC0: Complementary information content index (neighborhood symmetry of 0-order)
* CIC1: Complementary information content index (neighborhood symmetry of 1-order)
* CIC2: Complementary information content index (neighborhood symmetry of 2-order)
* CIC3: Complementary information content index (neighborhood symmetry of 3-order)
* CIC4: Complementary information content index (neighborhood symmetry of 4-order)
* CIC5: Complementary information content index (neighborhood symmetry of 5-order)
* BIC0: Bond information content index (neighborhood symmetry of 0-order)
* BIC1: Bond information content index (neighborhood symmetry of 1-order)
* BIC2: Bond information content index (neighborhood symmetry of 2-order)
* BIC3: Bond information content index (neighborhood symmetry of 3-order)
* BIC4: Bond information content index (neighborhood symmetry of 4-order)
* BIC5: Bond information content index (neighborhood symmetry of 5-order)
* MIC0: Modified information content index (neighborhood symmetry of 0-order)
* MIC1: Modified information content index (neighborhood symmetry of 1-order)
* MIC2: Modified information content index (neighborhood symmetry of 2-order)
* MIC3: Modified information content index (neighborhood symmetry of 3-order)
* MIC4: Modified information content index (neighborhood symmetry of 4-order)
* MIC5: Modified information content index (neighborhood symmetry of 5-order)
* ZMIC0: Z-modified information content index (neighborhood symmetry of 0-order)
* ZMIC1: Z-modified information content index (neighborhood symmetry of 1-order)
* ZMIC2: Z-modified information content index (neighborhood symmetry of 2-order)
* ZMIC3: Z-modified information content index (neighborhood symmetry of 3-order)
* ZMIC4: Z-modified information content index (neighborhood symmetry of 4-order)
* ZMIC5: Z-modified information content index (neighborhood symmetry of 5-order)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_KRFP

PaDEL KRFPfingerprint

Klekota-Roth fingerprint - Presence of chemical substructures

* Number of bits: 4860
* Bit prefix: KRFP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_KRFPC

PaDEL KRFPCfingerprint

Klekota-Roth fingerprint count - Count of chemical substructures

* Number of bits: 4860
* Bit prefix: KRFPC


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_KappaShapeIndices

KappaShapeIndices PaDEL descriptor

The following features are calculated:

* Kier1: First kappa shape index 
* Kier2: Second kappa shape index 
* Kier3: Third kappa (?) shape index 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_LargestChain

LargestChain PaDEL descriptor

The following features are calculated:

* nAtomLC: Number of atoms in the largest chain

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_LargestPiSystem

LargestPiSystem PaDEL descriptor

The following features are calculated:

* nAtomP: Number of atoms in the largest pi system

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_LengthOverBreadth

LengthOverBreadth 3D PaDEL descriptor

The following features are calculated:

* LOBMAX: The maximum L/B ratio 
* LOBMIN: The L/B ratio for the rotation that results in the minimum area

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_LongestAliphaticChain

LongestAliphaticChain PaDEL descriptor

The following features are calculated:

* nAtomLAC: Number of atoms in the longest aliphatic chain

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_MACCSFP

PaDEL MACCSFPfingerprint

MACCS fingerprint - MACCS keys

* Number of bits: 166
* Bit prefix: MACCSFP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_MDE

MDE PaDEL descriptor

The following features are calculated:

* MDEC-11: Molecular distance edge between all primary carbons
* MDEC-12: Molecular distance edge between all primary and secondary carbons
* MDEC-13: Molecular distance edge between all primary and tertiary carbons
* MDEC-14: Molecular distance edge between all primary and quaternary carbons 
* MDEC-22: Molecular distance edge between all secondary carbons 
* MDEC-23: Molecular distance edge between all secondary and tertiary carbons
* MDEC-24: Molecular distance edge between all secondary and quaternary carbons 
* MDEC-33: Molecular distance edge between all tertiary carbons
* MDEC-34: Molecular distance edge between all tertiary and quaternary carbons 
* MDEC-44: Molecular distance edge between all quaternary carbons 
* MDEO-11: Molecular distance edge between all primary oxygens 
* MDEO-12: Molecular distance edge between all primary and secondary oxygens 
* MDEO-22: Molecular distance edge between all secondary oxygens 
* MDEN-11: Molecular distance edge between all primary nitrogens
* MDEN-12: Molecular distance edge between all primary and secondary nitrogens 
* MDEN-13: Molecular distance edge between all primary and tertiary niroqens 
* MDEN-22: Molecular distance edge between all secondary nitroqens 
* MDEN-23: Molecular distance edge between all secondary and tertiary nitrogens 
* MDEN-33: Molecular distance edge between all tertiary nitrogens

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_MLFER

MLFER PaDEL descriptor

The following features are calculated:

* MLFER_A: Overall or summation solute hydrogen bond acidity
* MLFER_BH: Overall or summation solute hydrogen bond basicity
* MLFER_BO: Overall or summation solute hydrogen bond basicity
* MLFER_S: Combined dipolarity/polarizability
* MLFER_E: Excessive molar refraction
* MLFER_L: Solute gas-hexadecane partition coefficient

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_MannholdLogP

MannholdLogP PaDEL descriptor

The following features are calculated:

* MLogP: Mannhold LogP

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_McGowanVolume

McGowanVolume PaDEL descriptor

The following features are calculated:

* McGowan_Volume: McGowan characteristic volume

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_MomentOfInertia

MomentOfInertia 3D PaDEL descriptor

The following features are calculated:

* MOMI-X: Moment of inertia along X axis 
* MOMI-Y: Moment of inertia along Y axis 
* MOMI-Z: Moment of inertia along Z axis 
* MOMI-XY: X/Y 
* MOMI-XZ: X/Z 
* MOMI-YZ: Y/Z 
* MOMI-R: Radius of gyration 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_PathCount

PathCount PaDEL descriptor

The following features are calculated:

* MPC2: Molecular path count of order 2
* MPC3: Molecular path count of order 3
* MPC4: Molecular path count of order 4
* MPC5: Molecular path count of order 5
* MPC6: Molecular path count of order 6
* MPC7: Molecular path count of order 7
* MPC8: Molecular path count of order 8
* MPC9: Molecular path count of order 9
* MPC10: Molecular path count of order 10
* TPC: Total path count (up to order 10)
* piPC1: Conventional bond order ID number of order 1 (ln(1+x)
* piPC2: Conventional bond order ID number of order 2 (ln(1+x)
* piPC3: Conventional bond order ID number of order 3 (ln(1+x)
* piPC4: Conventional bond order ID number of order 4 (ln(1+x)
* piPC5: Conventional bond order ID number of order 5 (ln(1+x)
* piPC6: Conventional bond order ID number of order 6 (ln(1+x)
* piPC7: Conventional bond order ID number of order 7 (ln(1+x)
* piPC8: Conventional bond order ID number of order 8 (ln(1+x)
* piPC9: Conventional bond order ID number of order 9 (ln(1+x)
* piPC10: Conventional bond order ID number of order 10 (ln(1+x)
* TpiPC: Total conventional bond order (up to order 10) (ln(1+x))
* R_TpiPCTPC: Ratio of total conventional bond order (up to order 10) with total path count (up to order 10)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_PetitjeanNumber

PetitjeanNumber PaDEL descriptor

The following features are calculated:

* PetitjeanNumber: Petitjean number

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_PetitjeanShapeIndex

PetitjeanShapeIndex 3D PaDEL descriptor

The following features are calculated:

* geomRadius: Geometrical radius (minimum geometric eccentricity)
* geomDiameter: Geometrical diameter (maximum geometric eccentricity)
* geomShape: Petitjean geometric shape index 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_PubchemFP

PaDEL PubchemFPfingerprint

Pubchem fingerprint - Pubchem fingerprint

* Number of bits: 881
* Bit prefix: PubchemFP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_RDF

RDF 3D PaDEL descriptor

The following features are calculated:

* RDF10u: Radial distribution function - 010 / unweighted
* RDF15u: Radial distribution function - 015 / unweighted
* RDF20u: Radial distribution function - 020 / unweighted
* RDF25u: Radial distribution function - 025 / unweighted
* RDF30u: Radial distribution function - 030 / unweighted
* RDF35u: Radial distribution function - 035 / unweighted
* RDF40u: Radial distribution function - 040 / unweighted
* RDF45u: Radial distribution function - 045 / unweighted
* RDF50u: Radial distribution function - 050 / unweighted
* RDF55u: Radial distribution function - 055 / unweighted
* RDF60u: Radial distribution function - 060 / unweighted
* RDF65u: Radial distribution function - 065 / unweighted
* RDF70u: Radial distribution function - 070 / unweighted
* RDF75u: Radial distribution function - 075 / unweighted
* RDF80u: Radial distribution function - 080 / unweighted
* RDF85u: Radial distribution function - 085 / unweighted
* RDF90u: Radial distribution function - 090 / unweighted
* RDF95u: Radial distribution function - 095 / unweighted
* RDF100u: Radial distribution function - 100 / unweighted
* RDF105u: Radial distribution function - 105 / unweighted
* RDF110u: Radial distribution function - 110 / unweighted
* RDF115u: Radial distribution function - 115 / unweighted
* RDF120u: Radial distribution function - 120 / unweighted
* RDF125u: Radial distribution function - 125 / unweighted
* RDF130u: Radial distribution function - 130 / unweighted
* RDF135u: Radial distribution function - 135 / unweighted
* RDF140u: Radial distribution function - 140 / unweighted
* RDF145u: Radial distribution function - 145 / unweighted
* RDF150u: Radial distribution function - 150 / unweighted
* RDF155u: Radial distribution function - 155 / unweighted
* RDF10m: Radial distribution function - 010 / weighted by relative mass
* RDF15m: Radial distribution function - 015 / weighted by relative mass
* RDF20m: Radial distribution function - 020 / weighted by relative mass
* RDF25m: Radial distribution function - 025 / weighted by relative mass
* RDF30m: Radial distribution function - 030 / weighted by relative mass
* RDF35m: Radial distribution function - 035 / weighted by relative mass
* RDF40m: Radial distribution function - 040 / weighted by relative mass
* RDF45m: Radial distribution function - 045 / weighted by relative mass
* RDF50m: Radial distribution function - 050 / weighted by relative mass
* RDF55m: Radial distribution function - 055 / weighted by relative mass
* RDF60m: Radial distribution function - 060 / weighted by relative mass
* RDF65m: Radial distribution function - 065 / weighted by relative mass
* RDF70m: Radial distribution function - 070 / weighted by relative mass
* RDF75m: Radial distribution function - 075 / weighted by relative mass
* RDF80m: Radial distribution function - 080 / weighted by relative mass
* RDF85m: Radial distribution function - 085 / weighted by relative mass
* RDF90m: Radial distribution function - 090 / weighted by relative mass
* RDF95m: Radial distribution function - 095 / weighted by relative mass
* RDF100m: Radial distribution function - 100 / weighted by relative mass
* RDF105m: Radial distribution function - 105 / weighted by relative mass
* RDF110m: Radial distribution function - 110 / weighted by relative mass
* RDF115m: Radial distribution function - 115 / weighted by relative mass
* RDF120m: Radial distribution function - 120 / weighted by relative mass
* RDF125m: Radial distribution function - 125 / weighted by relative mass
* RDF130m: Radial distribution function - 130 / weighted by relative mass
* RDF135m: Radial distribution function - 135 / weighted by relative mass
* RDF140m: Radial distribution function - 140 / weighted by relative mass
* RDF145m: Radial distribution function - 145 / weighted by relative mass
* RDF150m: Radial distribution function - 150 / weighted by relative mass
* RDF155m: Radial distribution function - 155 / weighted by relative mass
* RDF10v: Radial distribution function - 010 / weighted by relative van der Waals volumes
* RDF15v: Radial distribution function - 015 / weighted by relative van der Waals volumes
* RDF20v: Radial distribution function - 020 / weighted by relative van der Waals volumes
* RDF25v: Radial distribution function - 025 / weighted by relative van der Waals volumes
* RDF30v: Radial distribution function - 030 / weighted by relative van der Waals volumes
* RDF35v: Radial distribution function - 035 / weighted by relative van der Waals volumes
* RDF40v: Radial distribution function - 040 / weighted by relative van der Waals volumes
* RDF45v: Radial distribution function - 045 / weighted by relative van der Waals volumes
* RDF50v: Radial distribution function - 050 / weighted by relative van der Waals volumes
* RDF55v: Radial distribution function - 055 / weighted by relative van der Waals volumes
* RDF60v: Radial distribution function - 060 / weighted by relative van der Waals volumes
* RDF65v: Radial distribution function - 065 / weighted by relative van der Waals volumes
* RDF70v: Radial distribution function - 070 / weighted by relative van der Waals volumes
* RDF75v: Radial distribution function - 075 / weighted by relative van der Waals volumes
* RDF80v: Radial distribution function - 080 / weighted by relative van der Waals volumes
* RDF85v: Radial distribution function - 085 / weighted by relative van der Waals volumes
* RDF90v: Radial distribution function - 090 / weighted by relative van der Waals volumes
* RDF95v: Radial distribution function - 095 / weighted by relative van der Waals volumes
* RDF100v: Radial distribution function - 100 / weighted by relative van der Waals volumes
* RDF105v: Radial distribution function - 105 / weighted by relative van der Waals volumes
* RDF110v: Radial distribution function - 110 / weighted by relative van der Waals volumes
* RDF115v: Radial distribution function - 115 / weighted by relative van der Waals volumes
* RDF120v: Radial distribution function - 120 / weighted by relative van der Waals volumes
* RDF125v: Radial distribution function - 125 / weighted by relative van der Waals volumes
* RDF130v: Radial distribution function - 130 / weighted by relative van der Waals volumes
* RDF135v: Radial distribution function - 135 / weighted by relative van der Waals volumes
* RDF140v: Radial distribution function - 140 / weighted by relative van der Waals volumes
* RDF145v: Radial distribution function - 145 / weighted by relative van der Waals volumes
* RDF150v: Radial distribution function - 150 / weighted by relative van der Waals volumes
* RDF155v: Radial distribution function - 155 / weighted by relative van der Waals volumes
* RDF10e: Radial distribution function - 010 / weighted by relative Sanderson electronegativities
* RDF15e: Radial distribution function - 015 / weighted by relative Sanderson electronegativities
* RDF20e: Radial distribution function - 020 / weighted by relative Sanderson electronegativities
* RDF25e: Radial distribution function - 025 / weighted by relative Sanderson electronegativities
* RDF30e: Radial distribution function - 030 / weighted by relative Sanderson electronegativities
* RDF35e: Radial distribution function - 035 / weighted by relative Sanderson electronegativities
* RDF40e: Radial distribution function - 040 / weighted by relative Sanderson electronegativities
* RDF45e: Radial distribution function - 045 / weighted by relative Sanderson electronegativities
* RDF50e: Radial distribution function - 050 / weighted by relative Sanderson electronegativities
* RDF55e: Radial distribution function - 055 / weighted by relative Sanderson electronegativities
* RDF60e: Radial distribution function - 060 / weighted by relative Sanderson electronegativities
* RDF65e: Radial distribution function - 065 / weighted by relative Sanderson electronegativities
* RDF70e: Radial distribution function - 070 / weighted by relative Sanderson electronegativities
* RDF75e: Radial distribution function - 075 / weighted by relative Sanderson electronegativities
* RDF80e: Radial distribution function - 080 / weighted by relative Sanderson electronegativities
* RDF85e: Radial distribution function - 085 / weighted by relative Sanderson electronegativities
* RDF90e: Radial distribution function - 090 / weighted by relative Sanderson electronegativities
* RDF95e: Radial distribution function - 095 / weighted by relative Sanderson electronegativities
* RDF100e: Radial distribution function - 100 / weighted by relative Sanderson electronegativities
* RDF105e: Radial distribution function - 105 / weighted by relative Sanderson electronegativities
* RDF110e: Radial distribution function - 110 / weighted by relative Sanderson electronegativities
* RDF115e: Radial distribution function - 115 / weighted by relative Sanderson electronegativities
* RDF120e: Radial distribution function - 120 / weighted by relative Sanderson electronegativities
* RDF125e: Radial distribution function - 125 / weighted by relative Sanderson electronegativities
* RDF130e: Radial distribution function - 130 / weighted by relative Sanderson electronegativities
* RDF135e: Radial distribution function - 135 / weighted by relative Sanderson electronegativities
* RDF140e: Radial distribution function - 140 / weighted by relative Sanderson electronegativities
* RDF145e: Radial distribution function - 145 / weighted by relative Sanderson electronegativities
* RDF150e: Radial distribution function - 150 / weighted by relative Sanderson electronegativities
* RDF155e: Radial distribution function - 155 / weighted by relative Sanderson electronegativities
* RDF10p: Radial distribution function - 010 / weighted by relative polarizabilities
* RDF15p: Radial distribution function - 015 / weighted by relative polarizabilities
* RDF20p: Radial distribution function - 020 / weighted by relative polarizabilities
* RDF25p: Radial distribution function - 025 / weighted by relative polarizabilities
* RDF30p: Radial distribution function - 030 / weighted by relative polarizabilities
* RDF35p: Radial distribution function - 035 / weighted by relative polarizabilities
* RDF40p: Radial distribution function - 040 / weighted by relative polarizabilities
* RDF45p: Radial distribution function - 045 / weighted by relative polarizabilities
* RDF50p: Radial distribution function - 050 / weighted by relative polarizabilities
* RDF55p: Radial distribution function - 055 / weighted by relative polarizabilities
* RDF60p: Radial distribution function - 060 / weighted by relative polarizabilities
* RDF65p: Radial distribution function - 065 / weighted by relative polarizabilities
* RDF70p: Radial distribution function - 070 / weighted by relative polarizabilities
* RDF75p: Radial distribution function - 075 / weighted by relative polarizabilities
* RDF80p: Radial distribution function - 080 / weighted by relative polarizabilities
* RDF85p: Radial distribution function - 085 / weighted by relative polarizabilities
* RDF90p: Radial distribution function - 090 / weighted by relative polarizabilities
* RDF95p: Radial distribution function - 095 / weighted by relative polarizabilities
* RDF100p: Radial distribution function - 100 / weighted by relative polarizabilities
* RDF105p: Radial distribution function - 105 / weighted by relative polarizabilities
* RDF110p: Radial distribution function - 110 / weighted by relative polarizabilities
* RDF115p: Radial distribution function - 115 / weighted by relative polarizabilities
* RDF120p: Radial distribution function - 120 / weighted by relative polarizabilities
* RDF125p: Radial distribution function - 125 / weighted by relative polarizabilities
* RDF130p: Radial distribution function - 130 / weighted by relative polarizabilities
* RDF135p: Radial distribution function - 135 / weighted by relative polarizabilities
* RDF140p: Radial distribution function - 140 / weighted by relative polarizabilities
* RDF145p: Radial distribution function - 145 / weighted by relative polarizabilities
* RDF150p: Radial distribution function - 150 / weighted by relative polarizabilities
* RDF155p: Radial distribution function - 155 / weighted by relative polarizabilities
* RDF10i: Radial distribution function - 010 / weighted by relative first ionization potential
* RDF15i: Radial distribution function - 015 / weighted by relative first ionization potential
* RDF20i: Radial distribution function - 020 / weighted by relative first ionization potential
* RDF25i: Radial distribution function - 025 / weighted by relative first ionization potential
* RDF30i: Radial distribution function - 030 / weighted by relative first ionization potential
* RDF35i: Radial distribution function - 035 / weighted by relative first ionization potential
* RDF40i: Radial distribution function - 040 / weighted by relative first ionization potential
* RDF45i: Radial distribution function - 045 / weighted by relative first ionization potential
* RDF50i: Radial distribution function - 050 / weighted by relative first ionization potential
* RDF55i: Radial distribution function - 055 / weighted by relative first ionization potential
* RDF60i: Radial distribution function - 060 / weighted by relative first ionization potential
* RDF65i: Radial distribution function - 065 / weighted by relative first ionization potential
* RDF70i: Radial distribution function - 070 / weighted by relative first ionization potential
* RDF75i: Radial distribution function - 075 / weighted by relative first ionization potential
* RDF80i: Radial distribution function - 080 / weighted by relative first ionization potential
* RDF85i: Radial distribution function - 085 / weighted by relative first ionization potential
* RDF90i: Radial distribution function - 090 / weighted by relative first ionization potential
* RDF95i: Radial distribution function - 095 / weighted by relative first ionization potential
* RDF100i: Radial distribution function - 100 / weighted by relative first ionization potential
* RDF105i: Radial distribution function - 105 / weighted by relative first ionization potential
* RDF110i: Radial distribution function - 110 / weighted by relative first ionization potential
* RDF115i: Radial distribution function - 115 / weighted by relative first ionization potential
* RDF120i: Radial distribution function - 120 / weighted by relative first ionization potential
* RDF125i: Radial distribution function - 125 / weighted by relative first ionization potential
* RDF130i: Radial distribution function - 130 / weighted by relative first ionization potential
* RDF135i: Radial distribution function - 135 / weighted by relative first ionization potential
* RDF140i: Radial distribution function - 140 / weighted by relative first ionization potential
* RDF145i: Radial distribution function - 145 / weighted by relative first ionization potential
* RDF150i: Radial distribution function - 150 / weighted by relative first ionization potential
* RDF155i: Radial distribution function - 155 / weighted by relative first ionization potential
* RDF10s: Radial distribution function - 010 / weighted by relative I-state
* RDF15s: Radial distribution function - 015 / weighted by relative I-state
* RDF20s: Radial distribution function - 020 / weighted by relative I-state
* RDF25s: Radial distribution function - 025 / weighted by relative I-state
* RDF30s: Radial distribution function - 030 / weighted by relative I-state
* RDF35s: Radial distribution function - 035 / weighted by relative I-state
* RDF40s: Radial distribution function - 040 / weighted by relative I-state
* RDF45s: Radial distribution function - 045 / weighted by relative I-state
* RDF50s: Radial distribution function - 050 / weighted by relative I-state
* RDF55s: Radial distribution function - 055 / weighted by relative I-state
* RDF60s: Radial distribution function - 060 / weighted by relative I-state
* RDF65s: Radial distribution function - 065 / weighted by relative I-state
* RDF70s: Radial distribution function - 070 / weighted by relative I-state
* RDF75s: Radial distribution function - 075 / weighted by relative I-state
* RDF80s: Radial distribution function - 080 / weighted by relative I-state
* RDF85s: Radial distribution function - 085 / weighted by relative I-state
* RDF90s: Radial distribution function - 090 / weighted by relative I-state
* RDF95s: Radial distribution function - 095 / weighted by relative I-state
* RDF100s: Radial distribution function - 100 / weighted by relative I-state
* RDF105s: Radial distribution function - 105 / weighted by relative I-state
* RDF110s: Radial distribution function - 110 / weighted by relative I-state
* RDF115s: Radial distribution function - 115 / weighted by relative I-state
* RDF120s: Radial distribution function - 120 / weighted by relative I-state
* RDF125s: Radial distribution function - 125 / weighted by relative I-state
* RDF130s: Radial distribution function - 130 / weighted by relative I-state
* RDF135s: Radial distribution function - 135 / weighted by relative I-state
* RDF140s: Radial distribution function - 140 / weighted by relative I-state
* RDF145s: Radial distribution function - 145 / weighted by relative I-state
* RDF150s: Radial distribution function - 150 / weighted by relative I-state
* RDF155s: Radial distribution function - 155 / weighted by relative I-state

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_RingCount

RingCount PaDEL descriptor

The following features are calculated:

* nRing: Number of rings
* n3Ring: Number of 3-membered rings
* n4Ring: Number of 4-membered rings
* n5Ring: Number of 5-membered rings
* n6Ring: Number of 6-membered rings
* n7Ring: Number of 7-membered rings
* n8Ring: Number of 8-membered rings
* n9Ring: Number of 9-membered rings
* n10Ring: Number of 10-membered rings
* n11Ring: Number of 11-membered rings
* n12Ring: Number of 12-membered rings
* nG12Ring: Number of >12-membered rings
* nFRing: Number of fused rings
* nF4Ring: Number of 4-membered fused rings
* nF5Ring: Number of 5-membered fused rings
* nF6Ring: Number of 6-membered fused rings
* nF7Ring: Number of 7-membered fused rings
* nF8Ring: Number of 8-membered fused rings
* nF9Ring: Number of 9-membered fused rings
* nF10Ring: Number of 10-membered fused rings
* nF11Ring: Number of 11-membered fused rings
* nF12Ring: Number of 12-membered fused rings
* nFG12Ring: Number of >12-membered fused rings
* nTRing: Number of rings (includes counts from fused rings)
* nT4Ring: Number of 4-membered rings (includes counts from fused rings)
* nT5Ring: Number of 5-membered rings (includes counts from fused rings)
* nT6Ring: Number of 6-membered rings (includes counts from fused rings)
* nT7Ring: Number of 7-membered rings (includes counts from fused rings)
* nT8Ring: Number of 8-membered rings (includes counts from fused rings)
* nT9Ring: Number of 9-membered rings (includes counts from fused rings)
* nT10Ring: Number of 10-membered rings (includes counts from fused rings)
* nT11Ring: Number of 11-membered rings (includes counts from fused rings)
* nT12Ring: Number of 12-membered rings (includes counts from fused rings)
* nTG12Ring: Number of >12-membered rings (includes counts from fused rings)
* nHeteroRing: Number of rings containing heteroatoms (N, O, P, S, or halogens)
* n3HeteroRing: Number of 3-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n4HeteroRing: Number of 4-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n5HeteroRing: Number of 5-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n6HeteroRing: Number of 6-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n7HeteroRing: Number of 7-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n8HeteroRing: Number of 8-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n9HeteroRing: Number of 9-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n10HeteroRing: Number of 10-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n11HeteroRing: Number of 11-membered rings containing heteroatoms (N, O, P, S, or halogens)
* n12HeteroRing: Number of 12-membered rings containing heteroatoms (N, O, P, S, or halogens)
* nG12HeteroRing: Number of >12-membered rings containing heteroatoms (N, O, P, S, or halogens)
* nFHeteroRing: Number of fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF4HeteroRing: Number of 4-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF5HeteroRing: Number of 5-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF6HeteroRing: Number of 6-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF7HeteroRing: Number of 7-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF8HeteroRing: Number of 8-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF9HeteroRing: Number of 9-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF10HeteroRing: Number of 10-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF11HeteroRing: Number of 11-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nF12HeteroRing: Number of 12-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nFG12HeteroRing: Number of >12-membered fused rings containing heteroatoms (N, O, P, S, or halogens)
* nTHeteroRing: Number of rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT4HeteroRing: Number of 4-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT5HeteroRing: Number of 5-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT6HeteroRing: Number of 6-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT7HeteroRing: Number of 7-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT8HeteroRing: Number of 8-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT9HeteroRing: Number of 9-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT10HeteroRing: Number of 10-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT11HeteroRing: Number of 11-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nT12HeteroRing: Number of 12-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)
* nTG12HeteroRing: Number of >12-membered rings (includes counts from fused rings) containing heteroatoms (N, O, P, S, or halogens)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_RotatableBondsCount

RotatableBondsCount PaDEL descriptor

The following features are calculated:

* nRotB: Number of rotatable bonds, excluding terminal bonds
* RotBFrac: Fraction of rotatable bonds, excluding terminal bonds
* nRotBt: Number of rotatable bonds, including terminal bonds
* RotBtFrac: Fraction of rotatable bonds, including terminal bonds

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_RuleOfFive

RuleOfFive PaDEL descriptor

The following features are calculated:

* LipinskiFailures: Number failures of the Lipinski's Rule Of 5

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_SubFP

PaDEL SubFPfingerprint

Substructure fingerprint - Presence of SMARTS Patterns for Functional Group
Classification by Christian Laggner

* Number of bits: 307
* Bit prefix: SubFP


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_SubFPC

PaDEL SubFPCfingerprint

Substructure fingerprint count - Count of SMARTS Patterns for Functional Group
Classification by Christian Laggner

* Number of bits: 307
* Bit prefix: SubFPC


All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


## Parameters

* size (type: Optional; default: None): Description unavailable.
* search_depth (type: Optional; default: None): Description unavailable.



# padel_TPSA

TPSA PaDEL descriptor

The following features are calculated:

* TopoPSA: Topological polar surface area

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_Topological

Topological PaDEL descriptor

The following features are calculated:

* topoRadius: Topological radius (minimum atom eccentricity)
* topoDiameter: Topological diameter (maximum atom eccentricity)
* topoShape: Petitjean topological shape index 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_TopologicalCharge

TopologicalCharge PaDEL descriptor

The following features are calculated:

* GGI1: Topological charge index of order 1
* GGI2: Topological charge index of order 2
* GGI3: Topological charge index of order 3
* GGI4: Topological charge index of order 4
* GGI5: Topological charge index of order 5
* GGI6: Topological charge index of order 6
* GGI7: Topological charge index of order 7
* GGI8: Topological charge index of order 8
* GGI9: Topological charge index of order 9
* GGI10: Topological charge index of order 10
* JGI1: Mean topological charge index of order 1
* JGI2: Mean topological charge index of order 2
* JGI3: Mean topological charge index of order 3
* JGI4: Mean topological charge index of order 4
* JGI5: Mean topological charge index of order 5
* JGI6: Mean topological charge index of order 6
* JGI7: Mean topological charge index of order 7
* JGI8: Mean topological charge index of order 8
* JGI9: Mean topological charge index of order 9
* JGI10: Mean topological charge index of order 10
* JGT: Global topological charge index

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_TopologicalDistanceMatrix

TopologicalDistanceMatrix PaDEL descriptor

The following features are calculated:

* SpMax_D: Leading eigenvalue from topological distance matrix
* SpDiam_D: Spectral diameter from topological distance matrix
* SpAD_D: Spectral absolute deviation from topological distance matrix
* SpMAD_D: Spectral mean absolute deviation from topological distance matrix
* EE_D: Estrada-like index from topological distance matrix
* VE1_D: Coefficient sum of the last eigenvector from topological distance matrix
* VE2_D: Average coefficient sum of the last eigenvector from topological distance matrix
* VE3_D: Logarithmic coefficient sum of the last eigenvector from topological distance matrix
* VR1_D: Randic-like eigenvector-based index from topological distance matrix
* VR2_D: Normalized Randic-like eigenvector-based index from topological distance matrix
* VR3_D: Logarithmic Randic-like eigenvector-based index from topological distance matrix

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_VABC

VABC PaDEL descriptor

The following features are calculated:

* VABC: Van der Waals volume calculated using the method proposed in [Zhao, Yuan H. and Abraham, Michael H. and Zissimos, Andreas M., Fast Calculation of van der Waals Volume as a Sum of Atomic and Bond Contributions and Its Application to Drug Compounds, The Journal of Organic Chemistry, 2003, 68:7368-7373]

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_VAdjMa

VAdjMa PaDEL descriptor

The following features are calculated:

* VAdjMat: Vertex adjacency information (magnitude)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_WHIM

WHIM 3D PaDEL descriptor

The following features are calculated:

* L1u: 1st component size directional WHIM index / unweighted
* L2u: 2nd component size directional WHIM index / unweighted
* L3u: 3rd component size directional WHIM index / unweighted
* P1u: 1st component shape directional WHIM index / unweighted
* P2u: 2nd component shape directional WHIM index / unweighted
* E1u: 1st component accessibility directional WHIM index / unweighted
* E2u: 2nd component accessibility directional WHIM index / unweighted
* E3u: 3rd component accessibility directional WHIM index / unweighted
* Tu: T total size index / unweighted
* Au: A total size index / unweighted
* Vu: V total size index / unweighted
* Ku: K global shape index / unweighted
* Du: D total accessibility index / unweighted
* L1m: 1st component size directional WHIM index / weighted by relative mass
* L2m: 2nd component size directional WHIM index / weighted by relative mass
* L3m: 3rd component size directional WHIM index / weighted by relative mass
* P1m: 1st component shape directional WHIM index / weighted by relative mass
* P2m: 2nd component shape directional WHIM index / weighted by relative mass
* E1m: 1st component accessibility directional WHIM index / weighted by relative mass
* E2m: 2nd component accessibility directional WHIM index / weighted by relative mass
* E3m: 3rd component accessibility directional WHIM index / weighted by relative mass
* Tm: T total size index / weighted by relative mass
* Am: A total size index / weighted by relative mass
* Vm: V total size index / weighted by relative mass
* Km: K global shape index / weighted by relative mass
* Dm: D total accessibility index / weighted by relative mass
* L1v: 1st component size directional WHIM index / weighted by relative van der Waals volumes
* L2v: 2nd component size directional WHIM index / weighted by relative van der Waals volumes
* L3v: 3rd component size directional WHIM index / weighted by relative van der Waals volumes
* P1v: 1st component shape directional WHIM index / weighted by relative van der Waals volumes
* P2v: 2nd component shape directional WHIM index / weighted by relative van der Waals volumes
* E1v: 1st component accessibility directional WHIM index / weighted by relative van der Waals volumes
* E2v: 2nd component accessibility directional WHIM index / weighted by relative van der Waals volumes
* E3v: 3rd component accessibility directional WHIM index / weighted by relative van der Waals volumes
* Tv: T total size index / weighted by relative van der Waals volumes
* Av: A total size index / weighted by relative van der Waals volumes
* Vv: V total size index / weighted by relative van der Waals volumes
* Kv: K global shape index / weighted by relative van der Waals volumes
* Dv: D total accessibility index / weighted by relative van der Waals volumes
* L1e: 1st component size directional WHIM index / weighted by relative Sanderson electronegativities
* L2e: 2nd component size directional WHIM index / weighted by relative Sanderson electronegativities
* L3e: 3rd component size directional WHIM index / weighted by relative Sanderson electronegativities
* P1e: 1st component shape directional WHIM index / weighted by relative Sanderson electronegativities
* P2e: 2nd component shape directional WHIM index / weighted by relative Sanderson electronegativities
* E1e: 1st component accessibility directional WHIM index / weighted by relative Sanderson electronegativities
* E2e: 2nd component accessibility directional WHIM index / weighted by relative Sanderson electronegativities
* E3e: 3rd component accessibility directional WHIM index / weighted by relative Sanderson electronegativities
* Te: T total size index / weighted by relative Sanderson electronegativities
* Ae: A total size index / weighted by relative Sanderson electronegativities
* Ve: V total size index / weighted by relative Sanderson electronegativities
* Ke: K global shape index / weighted by relative Sanderson electronegativities
* De: D total accessibility index / weighted by relative Sanderson electronegativities
* L1p: 1st component size directional WHIM index / weighted by relative polarizabilities
* L2p: 2nd component size directional WHIM index / weighted by relative polarizabilities
* L3p: 3rd component size directional WHIM index / weighted by relative polarizabilities
* P1p: 1st component shape directional WHIM index / weighted by relative polarizabilities
* P2p: 2nd component shape directional WHIM index / weighted by relative polarizabilities
* E1p: 1st component accessibility directional WHIM index / weighted by relative polarizabilities
* E2p: 2nd component accessibility directional WHIM index / weighted by relative polarizabilities
* E3p: 3rd component accessibility directional WHIM index / weighted by relative polarizabilities
* Tp: T total size index / weighted by relative polarizabilities
* Ap: A total size index / weighted by relative polarizabilities
* Vp: V total size index / weighted by relative polarizabilities
* Kp: K global shape index / weighted by relative polarizabilities
* Dp: D total accessibility index / weighted by relative polarizabilities
* L1i: 1st component size directional WHIM index / weighted by relative first ionization potential
* L2i: 2nd component size directional WHIM index / weighted by relative first ionization potential
* L3i: 3rd component size directional WHIM index / weighted by relative first ionization potential
* P1i: 1st component shape directional WHIM index / weighted by relative first ionization potential
* P2i: 2nd component shape directional WHIM index / weighted by relative first ionization potential
* E1i: 1st component accessibility directional WHIM index / weighted by relative first ionization potential
* E2i: 2nd component accessibility directional WHIM index / weighted by relative first ionization potential
* E3i: 3rd component accessibility directional WHIM index / weighted by relative first ionization potential
* Ti: T total size index / weighted by relative first ionization potential
* Ai: A total size index / weighted by relative first ionization potential
* Vi: V total size index / weighted by relative first ionization potential
* Ki: K global shape index / weighted by relative first ionization potential
* Di: D total accessibility index / weighted by relative first ionization potential
* L1s: 1st component size directional WHIM index / weighted by relative I-state
* L2s: 2nd component size directional WHIM index / weighted by relative I-state
* L3s: 3rd component size directional WHIM index / weighted by relative I-state
* P1s: 1st component shape directional WHIM index / weighted by relative I-state
* P2s: 2nd component shape directional WHIM index / weighted by relative I-state
* E1s: 1st component accessibility directional WHIM index / weighted by relative I-state
* E2s: 2nd component accessibility directional WHIM index / weighted by relative I-state
* E3s: 3rd component accessibility directional WHIM index / weighted by relative I-state
* Ts: T total size index / weighted by relative I-state
* As: A total size index / weighted by relative I-state
* Vs: V total size index / weighted by relative I-state
* Ks: K global shape index / weighted by relative I-state
* Ds: D total accessibility index / weighted by relative I-state

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_WalkCount

WalkCount PaDEL descriptor

The following features are calculated:

* MWC2: Molecular walk count of order 2 (ln(1+x)
* MWC3: Molecular walk count of order 3 (ln(1+x)
* MWC4: Molecular walk count of order 4 (ln(1+x)
* MWC5: Molecular walk count of order 5 (ln(1+x)
* MWC6: Molecular walk count of order 6 (ln(1+x)
* MWC7: Molecular walk count of order 7 (ln(1+x)
* MWC8: Molecular walk count of order 8 (ln(1+x)
* MWC9: Molecular walk count of order 9 (ln(1+x)
* MWC10: Molecular walk count of order 10 (ln(1+x)
* TWC: Total walk count (up to order 10)
* SRW2: Self-returning walk count of order 2 (ln(1+x)
* SRW3: Self-returning walk count of order 3 (ln(1+x)
* SRW4: Self-returning walk count of order 4 (ln(1+x)
* SRW5: Self-returning walk count of order 5 (ln(1+x)
* SRW6: Self-returning walk count of order 6 (ln(1+x)
* SRW7: Self-returning walk count of order 7 (ln(1+x)
* SRW8: Self-returning walk count of order 8 (ln(1+x)
* SRW9: Self-returning walk count of order 9 (ln(1+x)
* SRW10: Self-returning walk count of order 10 (ln(1+x)
* TSRW: Total self-return walk count (up to order 10) (ln(1+x))

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_Weight

Weight PaDEL descriptor

The following features are calculated:

* MW: Molecular weight
* AMW: Average molecular weight (Molecular weight / Total number of atoms)

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_WeightedPath

WeightedPath PaDEL descriptor

The following features are calculated:

* WTPT-1: Molecular ID
* WTPT-2: Molecular ID / number of atoms
* WTPT-3: Sum of path lengths starting from heteroatoms
* WTPT-4: Sum of path lengths starting from oxygens
* WTPT-5: Sum of path lengths starting from nitrogens

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_WienerNumbers

WienerNumbers PaDEL descriptor

The following features are calculated:

* WPATH: Weiner path number 
* WPOL: Weiner polarity number 

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_XLogP

XLogP PaDEL descriptor

The following features are calculated:

* XLogP: XLogP

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# padel_ZagrebIndex

ZagrebIndex PaDEL descriptor

The following features are calculated:

* Zagreb: Sum of the squares of atom degree over all heavy atoms i

All values are calculated with the [PaDEL_pywrapper Python
package](https://github.com/OlivierBeq/PaDEL_pywrapper) based on
[PaDEL-descriptor](https://doi.org/10.1002/jcc.21707).

> Yap, Chun Wei. “PaDEL-Descriptor: An Open Source Software to Calculate
> Molecular Descriptors and Fingerprints.” Journal of Computational Chemistry
> 32, no. 7 (May 2011): 1466–74. https://doi.org/10.1002/jcc.21707.


# qed

QED feature calculator.

Quantitative estimation of drug-likeness features calculated with the [RDKit
cheminformatics
library](https://www.rdkit.org/docs/source/rdkit.Chem.QED.html)

> Bickerton, G. Richard, Gaia V. Paolini, Jérémy Besnard, Sorel Muresan, and
> Andrew L. Hopkins. “Quantifying the Chemical Beauty of Drugs.” Nature
> Chemistry 4, no. 2 (February 2012): 90–98.
> https://doi.org/10.1038/nchem.1243.

The following features are calculated:

* ALERTS: The number of structural alerts.
* ALOGP: The octanol-water partition coefficient.
* AROM: The number of aromatic rings.
* HBA: The number of hydrogen bond acceptors.
* HBD: The number of hydrogen bond donors.
* MW: The molecular weight.
* PSA: Polar surface area.
* ROTB: The number of rotatable bonds.


# rdkdesc

RDK descriptor feature calculator.

Various chemical descriptors calculated with the RDKit cheminformatics
library: https://www.rdkit.org/docs/source/rdkit.Chem.Descriptors.html

The following features are calculated:

* FpDensityMorgan1
* FpDensityMorgan2
* FpDensityMorgan3
* MaxAbsPartialCharge
* MaxPartialCharge
* MinAbsPartialCharge
* MinPartialCharge
* NumRadicalElectrons
* NumValenceElectron


# rdkfp

RDK fingerprint feature calculator.

RDK topological fingerprint calculated with the [RDKit cheminformatics
library](https://www.rdkit.org/docs/source/rdkit.Chem.rdmolops.html#rdkit.Chem.rdmolops.RDKFingerprint

Each feature is a single bit of the feature vector.


## Parameters

* size (type: int; default: 2048): The fingerprint size. It should be 1024, 2048 or 4096.



# secfp

SECFP feature calculator.

SMILES Extended Connectivity Fingerprint f

MinHash Fingerprints (MHFP) / SMILES Extended Connectivity Fingerprints
(SECFP) calculated with [RDKit cheminformatics
library](https://rdkit.org/docs/source/rdkit.Chem.rdMHFPFingerprint.html).

> Probst, Daniel, and Jean-Louis Reymond. “A Probabilistic Molecular
> Fingerprint for Big Data Settings.” Journal of Cheminformatics 10, no. 1
> (December 18, 2018): 66. https://doi.org/10.1186/s13321-018-0321-8.

Each feature is a single bit of the feature vector.


## Parameters

* size (type: int; default: 2048): Description unavailable.



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Software Heritage — Copyright (C) 2015–2026, The Software Heritage developers. License: GNU AGPLv3+.
The source code of Software Heritage itself is available on our development forge.
The source code files archived by Software Heritage are available under their own copyright and licenses.
Terms of use: Archive access, API— Content policy— Contact— JavaScript license information— Web API