A side-effect free method for identifying cancer drug targets

Abstract Identifying effective drug targets, with little or no side effects, remains an ever challenging task. A potential pitfall of failing to uncover the correct drug targets, due to side effect of pleiotropic genes, might lead the potential drugs to be illicit and withdrawn. Simplifying disease...

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Main Authors: Md. Izhar Ashraf, Seng-Kai Ong, Shama Mujawar, Shrikant Pawar, Pallavi More, Somnath Paul, Chandrajit Lahiri
Format: Article
Language:English
Published: Nature Publishing Group 2018-04-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-018-25042-2
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spelling doaj-646e2a0ba9394df089c4ab16254ef5b62020-12-08T04:55:52ZengNature Publishing GroupScientific Reports2045-23222018-04-01811910.1038/s41598-018-25042-2A side-effect free method for identifying cancer drug targetsMd. Izhar Ashraf0Seng-Kai Ong1Shama Mujawar2Shrikant Pawar3Pallavi More4Somnath Paul5Chandrajit Lahiri6The Institute of Mathematical SciencesDepartment of Biological Sciences, Sunway UniversityDepartment of Biological Sciences, Sunway UniversityDepartment of Computer Science & Department of Biology, Georgia State UniversityDepartment of Bioinformatics, University of PuneDepartment of Computer Science and Engineering, Birla Institute of TechnologyThe Institute of Mathematical SciencesAbstract Identifying effective drug targets, with little or no side effects, remains an ever challenging task. A potential pitfall of failing to uncover the correct drug targets, due to side effect of pleiotropic genes, might lead the potential drugs to be illicit and withdrawn. Simplifying disease complexity, for the investigation of the mechanistic aspects and identification of effective drug targets, have been done through several approaches of protein interactome analysis. Of these, centrality measures have always gained importance in identifying candidate drug targets. Here, we put forward an integrated method of analysing a complex network of cancer and depict the importance of k-core, functional connectivity and centrality (KFC) for identifying effective drug targets. Essentially, we have extracted the proteins involved in the pathways leading to cancer from the pathway databases which enlist real experimental datasets. The interactions between these proteins were mapped to build an interactome. Integrative analyses of the interactome enabled us to unearth plausible reasons for drugs being rendered withdrawn, thereby giving future scope to pharmaceutical industries to potentially avoid them (e.g. ESR1, HDAC2, F2, PLG, PPARA, RXRA, etc). Based upon our KFC criteria, we have shortlisted ten proteins (GRB2, FYN, PIK3R1, CBL, JAK2, LCK, LYN, SYK, JAK1 and SOCS3) as effective candidates for drug development.https://doi.org/10.1038/s41598-018-25042-2
collection DOAJ
language English
format Article
sources DOAJ
author Md. Izhar Ashraf
Seng-Kai Ong
Shama Mujawar
Shrikant Pawar
Pallavi More
Somnath Paul
Chandrajit Lahiri
spellingShingle Md. Izhar Ashraf
Seng-Kai Ong
Shama Mujawar
Shrikant Pawar
Pallavi More
Somnath Paul
Chandrajit Lahiri
A side-effect free method for identifying cancer drug targets
Scientific Reports
author_facet Md. Izhar Ashraf
Seng-Kai Ong
Shama Mujawar
Shrikant Pawar
Pallavi More
Somnath Paul
Chandrajit Lahiri
author_sort Md. Izhar Ashraf
title A side-effect free method for identifying cancer drug targets
title_short A side-effect free method for identifying cancer drug targets
title_full A side-effect free method for identifying cancer drug targets
title_fullStr A side-effect free method for identifying cancer drug targets
title_full_unstemmed A side-effect free method for identifying cancer drug targets
title_sort side-effect free method for identifying cancer drug targets
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2018-04-01
description Abstract Identifying effective drug targets, with little or no side effects, remains an ever challenging task. A potential pitfall of failing to uncover the correct drug targets, due to side effect of pleiotropic genes, might lead the potential drugs to be illicit and withdrawn. Simplifying disease complexity, for the investigation of the mechanistic aspects and identification of effective drug targets, have been done through several approaches of protein interactome analysis. Of these, centrality measures have always gained importance in identifying candidate drug targets. Here, we put forward an integrated method of analysing a complex network of cancer and depict the importance of k-core, functional connectivity and centrality (KFC) for identifying effective drug targets. Essentially, we have extracted the proteins involved in the pathways leading to cancer from the pathway databases which enlist real experimental datasets. The interactions between these proteins were mapped to build an interactome. Integrative analyses of the interactome enabled us to unearth plausible reasons for drugs being rendered withdrawn, thereby giving future scope to pharmaceutical industries to potentially avoid them (e.g. ESR1, HDAC2, F2, PLG, PPARA, RXRA, etc). Based upon our KFC criteria, we have shortlisted ten proteins (GRB2, FYN, PIK3R1, CBL, JAK2, LCK, LYN, SYK, JAK1 and SOCS3) as effective candidates for drug development.
url https://doi.org/10.1038/s41598-018-25042-2
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