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Insights into an Original Pocket-Ligand Pair Classification: A Promising Tool for Ligand Profile Prediction

Pockets are today at the cornerstones of modern drug discovery projects and at the crossroad of several research fields, from structural biology to mathematical modeling. Being able to predict if a small molecule could bind to one or more protein targets or if a protein could bind to some given liga...

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Autores principales: Pérot, Stéphanie, Regad, Leslie, Reynès, Christelle, Spérandio, Olivier, Miteva, Maria A., Villoutreix, Bruno O., Camproux, Anne-Claude
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3688729/
https://www.ncbi.nlm.nih.gov/pubmed/23840299
http://dx.doi.org/10.1371/journal.pone.0063730
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author Pérot, Stéphanie
Regad, Leslie
Reynès, Christelle
Spérandio, Olivier
Miteva, Maria A.
Villoutreix, Bruno O.
Camproux, Anne-Claude
author_facet Pérot, Stéphanie
Regad, Leslie
Reynès, Christelle
Spérandio, Olivier
Miteva, Maria A.
Villoutreix, Bruno O.
Camproux, Anne-Claude
author_sort Pérot, Stéphanie
collection PubMed
description Pockets are today at the cornerstones of modern drug discovery projects and at the crossroad of several research fields, from structural biology to mathematical modeling. Being able to predict if a small molecule could bind to one or more protein targets or if a protein could bind to some given ligands is very useful for drug discovery endeavors, anticipation of binding to off- and anti-targets. To date, several studies explore such questions from chemogenomic approach to reverse docking methods. Most of these studies have been performed either from the viewpoint of ligands or targets. However it seems valuable to use information from both ligands and target binding pockets. Hence, we present a multivariate approach relating ligand properties with protein pocket properties from the analysis of known ligand-protein interactions. We explored and optimized the pocket-ligand pair space by combining pocket and ligand descriptors using Principal Component Analysis and developed a classification engine on this paired space, revealing five main clusters of pocket-ligand pairs sharing specific and similar structural or physico-chemical properties. These pocket-ligand pair clusters highlight correspondences between pocket and ligand topological and physico-chemical properties and capture relevant information with respect to protein-ligand interactions. Based on these pocket-ligand correspondences, a protocol of prediction of clusters sharing similarity in terms of recognition characteristics is developed for a given pocket-ligand complex and gives high performances. It is then extended to cluster prediction for a given pocket in order to acquire knowledge about its expected ligand profile or to cluster prediction for a given ligand in order to acquire knowledge about its expected pocket profile. This prediction approach shows promising results and could contribute to predict some ligand properties critical for binding to a given pocket, and conversely, some key pocket properties for ligand binding.
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spelling pubmed-36887292013-07-09 Insights into an Original Pocket-Ligand Pair Classification: A Promising Tool for Ligand Profile Prediction Pérot, Stéphanie Regad, Leslie Reynès, Christelle Spérandio, Olivier Miteva, Maria A. Villoutreix, Bruno O. Camproux, Anne-Claude PLoS One Research Article Pockets are today at the cornerstones of modern drug discovery projects and at the crossroad of several research fields, from structural biology to mathematical modeling. Being able to predict if a small molecule could bind to one or more protein targets or if a protein could bind to some given ligands is very useful for drug discovery endeavors, anticipation of binding to off- and anti-targets. To date, several studies explore such questions from chemogenomic approach to reverse docking methods. Most of these studies have been performed either from the viewpoint of ligands or targets. However it seems valuable to use information from both ligands and target binding pockets. Hence, we present a multivariate approach relating ligand properties with protein pocket properties from the analysis of known ligand-protein interactions. We explored and optimized the pocket-ligand pair space by combining pocket and ligand descriptors using Principal Component Analysis and developed a classification engine on this paired space, revealing five main clusters of pocket-ligand pairs sharing specific and similar structural or physico-chemical properties. These pocket-ligand pair clusters highlight correspondences between pocket and ligand topological and physico-chemical properties and capture relevant information with respect to protein-ligand interactions. Based on these pocket-ligand correspondences, a protocol of prediction of clusters sharing similarity in terms of recognition characteristics is developed for a given pocket-ligand complex and gives high performances. It is then extended to cluster prediction for a given pocket in order to acquire knowledge about its expected ligand profile or to cluster prediction for a given ligand in order to acquire knowledge about its expected pocket profile. This prediction approach shows promising results and could contribute to predict some ligand properties critical for binding to a given pocket, and conversely, some key pocket properties for ligand binding. Public Library of Science 2013-06-20 /pmc/articles/PMC3688729/ /pubmed/23840299 http://dx.doi.org/10.1371/journal.pone.0063730 Text en © 2013 Pérot et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Pérot, Stéphanie
Regad, Leslie
Reynès, Christelle
Spérandio, Olivier
Miteva, Maria A.
Villoutreix, Bruno O.
Camproux, Anne-Claude
Insights into an Original Pocket-Ligand Pair Classification: A Promising Tool for Ligand Profile Prediction
title Insights into an Original Pocket-Ligand Pair Classification: A Promising Tool for Ligand Profile Prediction
title_full Insights into an Original Pocket-Ligand Pair Classification: A Promising Tool for Ligand Profile Prediction
title_fullStr Insights into an Original Pocket-Ligand Pair Classification: A Promising Tool for Ligand Profile Prediction
title_full_unstemmed Insights into an Original Pocket-Ligand Pair Classification: A Promising Tool for Ligand Profile Prediction
title_short Insights into an Original Pocket-Ligand Pair Classification: A Promising Tool for Ligand Profile Prediction
title_sort insights into an original pocket-ligand pair classification: a promising tool for ligand profile prediction
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3688729/
https://www.ncbi.nlm.nih.gov/pubmed/23840299
http://dx.doi.org/10.1371/journal.pone.0063730
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