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Open Access

Identifying MicroRNA and Gene Expression Networks Using Graph Communities

Benika HallAndrew QuitadamoXinghua Shi( )
Department of Bioinformatics, University of North Carolina at Charlotte, Charlotte, NC 28213, USA.
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Abstract

Integrative network analysis is powerful in helping understand the underlying mechanisms of genetic and epigenetic perturbations for disease studies. Although it becomes clear that microRNAs, one type of epigenetic factors, have direct effect on target genes, it is unclear how microRNAs perturb downstream genetic neighborhood. Hence, we propose a network community approach to integrate microRNA and gene expression profiles, to construct an integrative genetic network perturbed by microRNAs. We apply this approach to an ovarian cancer dataset from The Cancer Genome Atlas project to identify the fluctuation of microRNA expression and its effects on gene expression. First, we perform expression quantitative loci analysis between microRNA and gene expression profiles via both a classical regression framework and a sparse learning model. Then, we apply the spin glass community detection algorithm to find genetic neighborhoods of the microRNAs and their associated genes. Finally, we construct an integrated network between microRNA and gene expression based on their community structure. Various disease related microRNAs and genes, particularly related to ovarian cancer, are identified in this network. Such an integrative network allows us to investigate the genetic neighborhood affected by microRNA expression that may lead to disease manifestation and progression.

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Tsinghua Science and Technology
Pages 176-195
Cite this article:
Hall B, Quitadamo A, Shi X. Identifying MicroRNA and Gene Expression Networks Using Graph Communities. Tsinghua Science and Technology, 2016, 21(2): 176-195. https://doi.org/10.1109/TST.2016.7442501

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Received: 02 August 2015
Revised: 21 October 2015
Accepted: 13 November 2015
Published: 31 March 2016
© The author(s) 2016
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