FP-ADMET: a compendium of fingerprint-based ADMET prediction models

Abstract Motivation The absorption, distribution, metabolism, excretion, and toxicity (ADMET) of drugs plays a key role in determining which among the potential candidates are to be prioritized. In silico approaches based on machine learning methods are becoming increasing popular, but are nonethele...

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Main Author: Vishwesh Venkatraman
Format: Article
Language:English
Published: BMC 2021-09-01
Series:Journal of Cheminformatics
Subjects:
Online Access:https://doi.org/10.1186/s13321-021-00557-5
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spelling doaj-bbc62c856acc4c57bf78a79b91686ee02021-10-03T11:48:16ZengBMCJournal of Cheminformatics1758-29462021-09-0113111210.1186/s13321-021-00557-5FP-ADMET: a compendium of fingerprint-based ADMET prediction modelsVishwesh Venkatraman0Norwegian University of Science and TechnologyAbstract Motivation The absorption, distribution, metabolism, excretion, and toxicity (ADMET) of drugs plays a key role in determining which among the potential candidates are to be prioritized. In silico approaches based on machine learning methods are becoming increasing popular, but are nonetheless limited by the availability of data. With a view to making both data and models available to the scientific community, we have developed FPADMET which is a repository of molecular fingerprint-based predictive models for ADMET properties. Summary In this article, we have examined the efficacy of fingerprint-based machine learning models for a large number of ADMET-related properties. The predictive ability of a set of 20 different binary fingerprints (based on substructure keys, atom pairs, local path environments, as well as custom fingerprints such as all-shortest paths) for over 50 ADMET and ADMET-related endpoints have been evaluated as part of the study. We find that for a majority of the properties, fingerprint-based random forest models yield comparable or better performance compared with traditional 2D/3D molecular descriptors. Availability The models are made available as part of open access software that can be downloaded from https://gitlab.com/vishsoft/fpadmet .https://doi.org/10.1186/s13321-021-00557-5ADMETMachine learningMolecular fingerprints
collection DOAJ
language English
format Article
sources DOAJ
author Vishwesh Venkatraman
spellingShingle Vishwesh Venkatraman
FP-ADMET: a compendium of fingerprint-based ADMET prediction models
Journal of Cheminformatics
ADMET
Machine learning
Molecular fingerprints
author_facet Vishwesh Venkatraman
author_sort Vishwesh Venkatraman
title FP-ADMET: a compendium of fingerprint-based ADMET prediction models
title_short FP-ADMET: a compendium of fingerprint-based ADMET prediction models
title_full FP-ADMET: a compendium of fingerprint-based ADMET prediction models
title_fullStr FP-ADMET: a compendium of fingerprint-based ADMET prediction models
title_full_unstemmed FP-ADMET: a compendium of fingerprint-based ADMET prediction models
title_sort fp-admet: a compendium of fingerprint-based admet prediction models
publisher BMC
series Journal of Cheminformatics
issn 1758-2946
publishDate 2021-09-01
description Abstract Motivation The absorption, distribution, metabolism, excretion, and toxicity (ADMET) of drugs plays a key role in determining which among the potential candidates are to be prioritized. In silico approaches based on machine learning methods are becoming increasing popular, but are nonetheless limited by the availability of data. With a view to making both data and models available to the scientific community, we have developed FPADMET which is a repository of molecular fingerprint-based predictive models for ADMET properties. Summary In this article, we have examined the efficacy of fingerprint-based machine learning models for a large number of ADMET-related properties. The predictive ability of a set of 20 different binary fingerprints (based on substructure keys, atom pairs, local path environments, as well as custom fingerprints such as all-shortest paths) for over 50 ADMET and ADMET-related endpoints have been evaluated as part of the study. We find that for a majority of the properties, fingerprint-based random forest models yield comparable or better performance compared with traditional 2D/3D molecular descriptors. Availability The models are made available as part of open access software that can be downloaded from https://gitlab.com/vishsoft/fpadmet .
topic ADMET
Machine learning
Molecular fingerprints
url https://doi.org/10.1186/s13321-021-00557-5
work_keys_str_mv AT vishweshvenkatraman fpadmetacompendiumoffingerprintbasedadmetpredictionmodels
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