Graphlet signature-based scoring method to estimate protein–ligand binding affinity

Over the years, various computational methodologies have been developed to understand and quantify receptor–ligand interactions. Protein–ligand interactions can also be explained in the form of a network and its properties. The ligand binding at the protein-active site is stabilized by formation of...

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Main Authors: Omkar Singh, Kunal Sawariya, Polamarasetty Aparoy
Format: Article
Language:English
Published: The Royal Society 2014-01-01
Series:Royal Society Open Science
Subjects:
Online Access:https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.140306
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spelling doaj-d59808ededf7487f96edc0d679c348cf2020-11-25T04:00:36ZengThe Royal SocietyRoyal Society Open Science2054-57032014-01-011410.1098/rsos.140306140306Graphlet signature-based scoring method to estimate protein–ligand binding affinityOmkar SinghKunal SawariyaPolamarasetty AparoyOver the years, various computational methodologies have been developed to understand and quantify receptor–ligand interactions. Protein–ligand interactions can also be explained in the form of a network and its properties. The ligand binding at the protein-active site is stabilized by formation of new interactions like hydrogen bond, hydrophobic and ionic. These non-covalent interactions when considered as links cause non-isomorphic sub-graphs in the residue interaction network. This study aims to investigate the relationship between these induced sub-graphs and ligand activity. Graphlet signature-based analysis of networks has been applied in various biological problems; the focus of this work is to analyse protein–ligand interactions in terms of neighbourhood connectivity and to develop a method in which the information from residue interaction networks, i.e. graphlet signatures, can be applied to quantify ligand affinity. A scoring method was developed, which depicts the variability in signatures adopted by different amino acids during inhibitor binding, and was termed as GSUS (graphlet signature uniqueness score). The score is specific for every individual inhibitor. Two well-known drug targets, COX-2 and CA-II and their inhibitors, were considered to assess the method. Residue interaction networks of COX-2 and CA-II with their respective inhibitors were used. Only hydrogen bond network was considered to calculate GSUS and quantify protein–ligand interaction in terms of graphlet signatures. The correlation of the GSUS with pIC50 was consistent in both proteins and better in comparison to the Autodock results. The GSUS scoring method was better in activity prediction of molecules with similar structure and diverse activity and vice versa. This study can be a major platform in developing approaches that can be used alone or together with existing methods to predict ligand affinity from protein–ligand complexes.https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.140306graphlet signatureinteraction networkdockingbinding affinity
collection DOAJ
language English
format Article
sources DOAJ
author Omkar Singh
Kunal Sawariya
Polamarasetty Aparoy
spellingShingle Omkar Singh
Kunal Sawariya
Polamarasetty Aparoy
Graphlet signature-based scoring method to estimate protein–ligand binding affinity
Royal Society Open Science
graphlet signature
interaction network
docking
binding affinity
author_facet Omkar Singh
Kunal Sawariya
Polamarasetty Aparoy
author_sort Omkar Singh
title Graphlet signature-based scoring method to estimate protein–ligand binding affinity
title_short Graphlet signature-based scoring method to estimate protein–ligand binding affinity
title_full Graphlet signature-based scoring method to estimate protein–ligand binding affinity
title_fullStr Graphlet signature-based scoring method to estimate protein–ligand binding affinity
title_full_unstemmed Graphlet signature-based scoring method to estimate protein–ligand binding affinity
title_sort graphlet signature-based scoring method to estimate protein–ligand binding affinity
publisher The Royal Society
series Royal Society Open Science
issn 2054-5703
publishDate 2014-01-01
description Over the years, various computational methodologies have been developed to understand and quantify receptor–ligand interactions. Protein–ligand interactions can also be explained in the form of a network and its properties. The ligand binding at the protein-active site is stabilized by formation of new interactions like hydrogen bond, hydrophobic and ionic. These non-covalent interactions when considered as links cause non-isomorphic sub-graphs in the residue interaction network. This study aims to investigate the relationship between these induced sub-graphs and ligand activity. Graphlet signature-based analysis of networks has been applied in various biological problems; the focus of this work is to analyse protein–ligand interactions in terms of neighbourhood connectivity and to develop a method in which the information from residue interaction networks, i.e. graphlet signatures, can be applied to quantify ligand affinity. A scoring method was developed, which depicts the variability in signatures adopted by different amino acids during inhibitor binding, and was termed as GSUS (graphlet signature uniqueness score). The score is specific for every individual inhibitor. Two well-known drug targets, COX-2 and CA-II and their inhibitors, were considered to assess the method. Residue interaction networks of COX-2 and CA-II with their respective inhibitors were used. Only hydrogen bond network was considered to calculate GSUS and quantify protein–ligand interaction in terms of graphlet signatures. The correlation of the GSUS with pIC50 was consistent in both proteins and better in comparison to the Autodock results. The GSUS scoring method was better in activity prediction of molecules with similar structure and diverse activity and vice versa. This study can be a major platform in developing approaches that can be used alone or together with existing methods to predict ligand affinity from protein–ligand complexes.
topic graphlet signature
interaction network
docking
binding affinity
url https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.140306
work_keys_str_mv AT omkarsingh graphletsignaturebasedscoringmethodtoestimateproteinligandbindingaffinity
AT kunalsawariya graphletsignaturebasedscoringmethodtoestimateproteinligandbindingaffinity
AT polamarasettyaparoy graphletsignaturebasedscoringmethodtoestimateproteinligandbindingaffinity
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