Drug Repositioning through Systematic Mining of Gene Coexpression Networks in Cancer.

Gene coexpression network analysis is a powerful "data-driven" approach essential for understanding cancer biology and mechanisms of tumor development. Yet, despite the completion of thousands of studies on cancer gene expression, there have been few attempts to normalize and integrate co-...

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Main Authors: Alexander E Ivliev, Peter A C 't Hoen, Dmitrii Borisevich, Yuri Nikolsky, Marina G Sergeeva
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5100910?pdf=render
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spelling doaj-306e7a07ad9e4f2eb62218c4c33869dd2020-11-25T00:42:29ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-011111e016505910.1371/journal.pone.0165059Drug Repositioning through Systematic Mining of Gene Coexpression Networks in Cancer.Alexander E IvlievPeter A C 't HoenDmitrii BorisevichYuri NikolskyMarina G SergeevaGene coexpression network analysis is a powerful "data-driven" approach essential for understanding cancer biology and mechanisms of tumor development. Yet, despite the completion of thousands of studies on cancer gene expression, there have been few attempts to normalize and integrate co-expression data from scattered sources in a concise "meta-analysis" framework. We generated such a resource by exploring gene coexpression networks in 82 microarray datasets from 9 major human cancer types. The analysis was conducted using an elaborate weighted gene coexpression network (WGCNA) methodology and identified over 3,000 robust gene coexpression modules. The modules covered a range of known tumor features, such as proliferation, extracellular matrix remodeling, hypoxia, inflammation, angiogenesis, tumor differentiation programs, specific signaling pathways, genomic alterations, and biomarkers of individual tumor subtypes. To prioritize genes with respect to those tumor features, we ranked genes within each module by connectivity, leading to identification of module-specific functionally prominent hub genes. To showcase the utility of this network information, we positioned known cancer drug targets within the coexpression networks and predicted that Anakinra, an anti-rheumatoid therapeutic agent, may be promising for development in colorectal cancer. We offer a comprehensive, normalized and well documented collection of >3000 gene coexpression modules in a variety of cancers as a rich data resource to facilitate further progress in cancer research.http://europepmc.org/articles/PMC5100910?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Alexander E Ivliev
Peter A C 't Hoen
Dmitrii Borisevich
Yuri Nikolsky
Marina G Sergeeva
spellingShingle Alexander E Ivliev
Peter A C 't Hoen
Dmitrii Borisevich
Yuri Nikolsky
Marina G Sergeeva
Drug Repositioning through Systematic Mining of Gene Coexpression Networks in Cancer.
PLoS ONE
author_facet Alexander E Ivliev
Peter A C 't Hoen
Dmitrii Borisevich
Yuri Nikolsky
Marina G Sergeeva
author_sort Alexander E Ivliev
title Drug Repositioning through Systematic Mining of Gene Coexpression Networks in Cancer.
title_short Drug Repositioning through Systematic Mining of Gene Coexpression Networks in Cancer.
title_full Drug Repositioning through Systematic Mining of Gene Coexpression Networks in Cancer.
title_fullStr Drug Repositioning through Systematic Mining of Gene Coexpression Networks in Cancer.
title_full_unstemmed Drug Repositioning through Systematic Mining of Gene Coexpression Networks in Cancer.
title_sort drug repositioning through systematic mining of gene coexpression networks in cancer.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description Gene coexpression network analysis is a powerful "data-driven" approach essential for understanding cancer biology and mechanisms of tumor development. Yet, despite the completion of thousands of studies on cancer gene expression, there have been few attempts to normalize and integrate co-expression data from scattered sources in a concise "meta-analysis" framework. We generated such a resource by exploring gene coexpression networks in 82 microarray datasets from 9 major human cancer types. The analysis was conducted using an elaborate weighted gene coexpression network (WGCNA) methodology and identified over 3,000 robust gene coexpression modules. The modules covered a range of known tumor features, such as proliferation, extracellular matrix remodeling, hypoxia, inflammation, angiogenesis, tumor differentiation programs, specific signaling pathways, genomic alterations, and biomarkers of individual tumor subtypes. To prioritize genes with respect to those tumor features, we ranked genes within each module by connectivity, leading to identification of module-specific functionally prominent hub genes. To showcase the utility of this network information, we positioned known cancer drug targets within the coexpression networks and predicted that Anakinra, an anti-rheumatoid therapeutic agent, may be promising for development in colorectal cancer. We offer a comprehensive, normalized and well documented collection of >3000 gene coexpression modules in a variety of cancers as a rich data resource to facilitate further progress in cancer research.
url http://europepmc.org/articles/PMC5100910?pdf=render
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