dcVar: A Method for Identifying Common Variants that Modulate Differential Correlation Structures in Gene Expression Data

Recent studies have implicated the role of differential co-expression or correlation structure in gene expression data to help explain phenotypic differences. However, few attempts have been made to characterize the function of variants based on their role in regulating differential co-expression. H...

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Main Authors: Caleb A Lareau, Bill C White, Courtney eMontgomery, Brett A McKinney
Format: Article
Language:English
Published: Frontiers Media S.A. 2015-10-01
Series:Frontiers in Genetics
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fgene.2015.00312/full
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spelling doaj-3b4b542ef3dd466bb955ae0a04ef880d2020-11-25T00:12:30ZengFrontiers Media S.A.Frontiers in Genetics1664-80212015-10-01610.3389/fgene.2015.00312152370dcVar: A Method for Identifying Common Variants that Modulate Differential Correlation Structures in Gene Expression DataCaleb A Lareau0Caleb A Lareau1Bill C White2Courtney eMontgomery3Brett A McKinney4Brett A McKinney5University of TulsaOklahoma Medical Research FoundationUniversity of TulsaOklahoma Medical Research FoundationUniversity of TulsaLaureate Institute for Brain ResearchRecent studies have implicated the role of differential co-expression or correlation structure in gene expression data to help explain phenotypic differences. However, few attempts have been made to characterize the function of variants based on their role in regulating differential co-expression. Here we describe a statistical methodology that identifies pairs of transcripts that display differential correlation structure conditioned on genotypes of variants that regulate co-expression. Additionally, we present a user-friendly, computationally efficient tool, dcVar, that can be applied to expression quantitative trait loci (eQTL) or RNA-Seq datasets to infer differential co-expression variants (dcVars). We apply dcVar to the HapMap3 eQTL dataset and demonstrate the utility of this methodology at uncovering novel function of variants of interest with examples from a height genome-wide association and cancer drug resistance. We provide evidence that differential correlation structure is a valuable intermediate molecular phenotype for further characterizing the function of variants identified in GWAS and related studies.http://journal.frontiersin.org/Journal/10.3389/fgene.2015.00312/fullGenome-Wide Association StudyeQTLRNA-Seqmolecular phenotypeCommon Variantmicroarray gene expression
collection DOAJ
language English
format Article
sources DOAJ
author Caleb A Lareau
Caleb A Lareau
Bill C White
Courtney eMontgomery
Brett A McKinney
Brett A McKinney
spellingShingle Caleb A Lareau
Caleb A Lareau
Bill C White
Courtney eMontgomery
Brett A McKinney
Brett A McKinney
dcVar: A Method for Identifying Common Variants that Modulate Differential Correlation Structures in Gene Expression Data
Frontiers in Genetics
Genome-Wide Association Study
eQTL
RNA-Seq
molecular phenotype
Common Variant
microarray gene expression
author_facet Caleb A Lareau
Caleb A Lareau
Bill C White
Courtney eMontgomery
Brett A McKinney
Brett A McKinney
author_sort Caleb A Lareau
title dcVar: A Method for Identifying Common Variants that Modulate Differential Correlation Structures in Gene Expression Data
title_short dcVar: A Method for Identifying Common Variants that Modulate Differential Correlation Structures in Gene Expression Data
title_full dcVar: A Method for Identifying Common Variants that Modulate Differential Correlation Structures in Gene Expression Data
title_fullStr dcVar: A Method for Identifying Common Variants that Modulate Differential Correlation Structures in Gene Expression Data
title_full_unstemmed dcVar: A Method for Identifying Common Variants that Modulate Differential Correlation Structures in Gene Expression Data
title_sort dcvar: a method for identifying common variants that modulate differential correlation structures in gene expression data
publisher Frontiers Media S.A.
series Frontiers in Genetics
issn 1664-8021
publishDate 2015-10-01
description Recent studies have implicated the role of differential co-expression or correlation structure in gene expression data to help explain phenotypic differences. However, few attempts have been made to characterize the function of variants based on their role in regulating differential co-expression. Here we describe a statistical methodology that identifies pairs of transcripts that display differential correlation structure conditioned on genotypes of variants that regulate co-expression. Additionally, we present a user-friendly, computationally efficient tool, dcVar, that can be applied to expression quantitative trait loci (eQTL) or RNA-Seq datasets to infer differential co-expression variants (dcVars). We apply dcVar to the HapMap3 eQTL dataset and demonstrate the utility of this methodology at uncovering novel function of variants of interest with examples from a height genome-wide association and cancer drug resistance. We provide evidence that differential correlation structure is a valuable intermediate molecular phenotype for further characterizing the function of variants identified in GWAS and related studies.
topic Genome-Wide Association Study
eQTL
RNA-Seq
molecular phenotype
Common Variant
microarray gene expression
url http://journal.frontiersin.org/Journal/10.3389/fgene.2015.00312/full
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