Resolving candidate genes of mouse skeletal muscle QTL via RNA-Seq and expression network analyses

<p>Abstract</p> <p>Background</p> <p>We have recently identified a number of Quantitative Trait Loci (QTL) contributing to the 2-fold muscle weight difference between the LG/J and SM/J mouse strains and refined their confidence intervals. To facilitate nomination of the...

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Main Authors: Lionikas Arimantas, Meharg Caroline, Derry Jonathan MJ, Ratkevicius Aivaras, Carroll Andrew M, Vandenbergh David J, Blizard David A
Format: Article
Language:English
Published: BMC 2012-11-01
Series:BMC Genomics
Subjects:
QTL
Online Access:http://www.biomedcentral.com/1471-2164/13/592
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spelling doaj-1e27fb1dd678454dab69b460b71f9a232020-11-25T01:27:25ZengBMCBMC Genomics1471-21642012-11-0113159210.1186/1471-2164-13-592Resolving candidate genes of mouse skeletal muscle QTL via RNA-Seq and expression network analysesLionikas ArimantasMeharg CarolineDerry Jonathan MJRatkevicius AivarasCarroll Andrew MVandenbergh David JBlizard David A<p>Abstract</p> <p>Background</p> <p>We have recently identified a number of Quantitative Trait Loci (QTL) contributing to the 2-fold muscle weight difference between the LG/J and SM/J mouse strains and refined their confidence intervals. To facilitate nomination of the candidate genes responsible for these differences we examined the transcriptome of the tibialis anterior (TA) muscle of each strain by RNA-Seq.</p> <p>Results</p> <p>13,726 genes were expressed in mouse skeletal muscle. Intersection of a set of 1061 differentially expressed transcripts with a mouse muscle Bayesian Network identified a coherent set of differentially expressed genes that we term the LG/J and SM/J Regulatory Network (LSRN). The integration of the QTL, transcriptome and the network analyses identified eight key drivers of the LSRN (<it>Kdr</it>, <it>Plbd1</it>, <it>Mgp</it>, <it>Fah</it>, <it>Prss23</it>, <it>2310014F06Rik</it>, <it>Grtp1</it>, <it>Stk10</it>) residing within five QTL regions, which were either polymorphic or differentially expressed between the two strains and are strong candidates for quantitative trait genes (QTGs) underlying muscle mass. The insight gained from network analysis including the ability to make testable predictions is illustrated by annotating the LSRN with knowledge-based signatures and showing that the SM/J state of the network corresponds to a more oxidative state. We validated this prediction by NADH tetrazolium reductase staining in the TA muscle revealing higher oxidative potential of the SM/J compared to the LG/J strain (p<0.03).</p> <p>Conclusion</p> <p>Thus, integration of fine resolution QTL mapping, RNA-Seq transcriptome information and mouse muscle Bayesian Network analysis provides a novel and unbiased strategy for nomination of muscle QTGs.</p> http://www.biomedcentral.com/1471-2164/13/592Functional genomicsQTLSkeletal muscleGene expression
collection DOAJ
language English
format Article
sources DOAJ
author Lionikas Arimantas
Meharg Caroline
Derry Jonathan MJ
Ratkevicius Aivaras
Carroll Andrew M
Vandenbergh David J
Blizard David A
spellingShingle Lionikas Arimantas
Meharg Caroline
Derry Jonathan MJ
Ratkevicius Aivaras
Carroll Andrew M
Vandenbergh David J
Blizard David A
Resolving candidate genes of mouse skeletal muscle QTL via RNA-Seq and expression network analyses
BMC Genomics
Functional genomics
QTL
Skeletal muscle
Gene expression
author_facet Lionikas Arimantas
Meharg Caroline
Derry Jonathan MJ
Ratkevicius Aivaras
Carroll Andrew M
Vandenbergh David J
Blizard David A
author_sort Lionikas Arimantas
title Resolving candidate genes of mouse skeletal muscle QTL via RNA-Seq and expression network analyses
title_short Resolving candidate genes of mouse skeletal muscle QTL via RNA-Seq and expression network analyses
title_full Resolving candidate genes of mouse skeletal muscle QTL via RNA-Seq and expression network analyses
title_fullStr Resolving candidate genes of mouse skeletal muscle QTL via RNA-Seq and expression network analyses
title_full_unstemmed Resolving candidate genes of mouse skeletal muscle QTL via RNA-Seq and expression network analyses
title_sort resolving candidate genes of mouse skeletal muscle qtl via rna-seq and expression network analyses
publisher BMC
series BMC Genomics
issn 1471-2164
publishDate 2012-11-01
description <p>Abstract</p> <p>Background</p> <p>We have recently identified a number of Quantitative Trait Loci (QTL) contributing to the 2-fold muscle weight difference between the LG/J and SM/J mouse strains and refined their confidence intervals. To facilitate nomination of the candidate genes responsible for these differences we examined the transcriptome of the tibialis anterior (TA) muscle of each strain by RNA-Seq.</p> <p>Results</p> <p>13,726 genes were expressed in mouse skeletal muscle. Intersection of a set of 1061 differentially expressed transcripts with a mouse muscle Bayesian Network identified a coherent set of differentially expressed genes that we term the LG/J and SM/J Regulatory Network (LSRN). The integration of the QTL, transcriptome and the network analyses identified eight key drivers of the LSRN (<it>Kdr</it>, <it>Plbd1</it>, <it>Mgp</it>, <it>Fah</it>, <it>Prss23</it>, <it>2310014F06Rik</it>, <it>Grtp1</it>, <it>Stk10</it>) residing within five QTL regions, which were either polymorphic or differentially expressed between the two strains and are strong candidates for quantitative trait genes (QTGs) underlying muscle mass. The insight gained from network analysis including the ability to make testable predictions is illustrated by annotating the LSRN with knowledge-based signatures and showing that the SM/J state of the network corresponds to a more oxidative state. We validated this prediction by NADH tetrazolium reductase staining in the TA muscle revealing higher oxidative potential of the SM/J compared to the LG/J strain (p<0.03).</p> <p>Conclusion</p> <p>Thus, integration of fine resolution QTL mapping, RNA-Seq transcriptome information and mouse muscle Bayesian Network analysis provides a novel and unbiased strategy for nomination of muscle QTGs.</p>
topic Functional genomics
QTL
Skeletal muscle
Gene expression
url http://www.biomedcentral.com/1471-2164/13/592
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