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Ligand and Structure-Based Classification Models for Prediction of P-Glycoprotein Inhibitors

[Image: see text] The ABC transporter P-glycoprotein (P-gp) actively transports a wide range of drugs and toxins out of cells, and is therefore related to multidrug resistance and the ADME profile of therapeutics. Thus, development of predictive in silico models for the identification of P-gp inhibi...

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Autores principales: Klepsch, Freya, Vasanthanathan, Poongavanam, Ecker, Gerhard F.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2013
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3904775/
https://www.ncbi.nlm.nih.gov/pubmed/24050383
http://dx.doi.org/10.1021/ci400289j
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author Klepsch, Freya
Vasanthanathan, Poongavanam
Ecker, Gerhard F.
author_facet Klepsch, Freya
Vasanthanathan, Poongavanam
Ecker, Gerhard F.
author_sort Klepsch, Freya
collection PubMed
description [Image: see text] The ABC transporter P-glycoprotein (P-gp) actively transports a wide range of drugs and toxins out of cells, and is therefore related to multidrug resistance and the ADME profile of therapeutics. Thus, development of predictive in silico models for the identification of P-gp inhibitors is of great interest in the field of drug discovery and development. So far in silico P-gp inhibitor prediction was dominated by ligand-based approaches because of the lack of high-quality structural information about P-gp. The present study aims at comparing the P-gp inhibitor/noninhibitor classification performance obtained by docking into a homology model of P-gp, to supervised machine learning methods, such as Kappa nearest neighbor, support vector machine (SVM), random fores,t and binary QSAR, by using a large, structurally diverse data set. In addition, the applicability domain of the models was assessed using an algorithm based on Euclidean distance. Results show that random forest and SVM performed best for classification of P-gp inhibitors and noninhibitors, correctly predicting 73/75% of the external test set compounds. Classification based on the docking experiments using the scoring function ChemScore resulted in the correct prediction of 61% of the external test set. This demonstrates that ligand-based models currently remain the methods of choice for accurately predicting P-gp inhibitors. However, structure-based classification offers information about possible drug/protein interactions, which helps in understanding the molecular basis of ligand-transporter interaction and could therefore also support lead optimization.
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spelling pubmed-39047752014-01-29 Ligand and Structure-Based Classification Models for Prediction of P-Glycoprotein Inhibitors Klepsch, Freya Vasanthanathan, Poongavanam Ecker, Gerhard F. J Chem Inf Model [Image: see text] The ABC transporter P-glycoprotein (P-gp) actively transports a wide range of drugs and toxins out of cells, and is therefore related to multidrug resistance and the ADME profile of therapeutics. Thus, development of predictive in silico models for the identification of P-gp inhibitors is of great interest in the field of drug discovery and development. So far in silico P-gp inhibitor prediction was dominated by ligand-based approaches because of the lack of high-quality structural information about P-gp. The present study aims at comparing the P-gp inhibitor/noninhibitor classification performance obtained by docking into a homology model of P-gp, to supervised machine learning methods, such as Kappa nearest neighbor, support vector machine (SVM), random fores,t and binary QSAR, by using a large, structurally diverse data set. In addition, the applicability domain of the models was assessed using an algorithm based on Euclidean distance. Results show that random forest and SVM performed best for classification of P-gp inhibitors and noninhibitors, correctly predicting 73/75% of the external test set compounds. Classification based on the docking experiments using the scoring function ChemScore resulted in the correct prediction of 61% of the external test set. This demonstrates that ligand-based models currently remain the methods of choice for accurately predicting P-gp inhibitors. However, structure-based classification offers information about possible drug/protein interactions, which helps in understanding the molecular basis of ligand-transporter interaction and could therefore also support lead optimization. American Chemical Society 2013-09-19 2014-01-27 /pmc/articles/PMC3904775/ /pubmed/24050383 http://dx.doi.org/10.1021/ci400289j Text en Copyright © 2013 American Chemical Society Terms of Use (http://pubs.acs.org/page/policy/authorchoice_termsofuse.html)
spellingShingle Klepsch, Freya
Vasanthanathan, Poongavanam
Ecker, Gerhard F.
Ligand and Structure-Based Classification Models for Prediction of P-Glycoprotein Inhibitors
title Ligand and Structure-Based Classification Models for Prediction of P-Glycoprotein Inhibitors
title_full Ligand and Structure-Based Classification Models for Prediction of P-Glycoprotein Inhibitors
title_fullStr Ligand and Structure-Based Classification Models for Prediction of P-Glycoprotein Inhibitors
title_full_unstemmed Ligand and Structure-Based Classification Models for Prediction of P-Glycoprotein Inhibitors
title_short Ligand and Structure-Based Classification Models for Prediction of P-Glycoprotein Inhibitors
title_sort ligand and structure-based classification models for prediction of p-glycoprotein inhibitors
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3904775/
https://www.ncbi.nlm.nih.gov/pubmed/24050383
http://dx.doi.org/10.1021/ci400289j
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