Inferring Gene Regulatory Networks Using Conditional Regulation Pattern to Guide Candidate Genes.

Combining path consistency (PC) algorithms with conditional mutual information (CMI) are widely used in reconstruction of gene regulatory networks. CMI has many advantages over Pearson correlation coefficient in measuring non-linear dependence to infer gene regulatory networks. It can also discrimin...

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Main Authors: Fei Xiao, Lin Gao, Yusen Ye, Yuxuan Hu, Ruijie He
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4865039?pdf=render
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spelling doaj-47cb806163f54580902c73f0843927242020-11-25T00:03:06ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01115e015495310.1371/journal.pone.0154953Inferring Gene Regulatory Networks Using Conditional Regulation Pattern to Guide Candidate Genes.Fei XiaoLin GaoYusen YeYuxuan HuRuijie HeCombining path consistency (PC) algorithms with conditional mutual information (CMI) are widely used in reconstruction of gene regulatory networks. CMI has many advantages over Pearson correlation coefficient in measuring non-linear dependence to infer gene regulatory networks. It can also discriminate the direct regulations from indirect ones. However, it is still a challenge to select the conditional genes in an optimal way, which affects the performance and computation complexity of the PC algorithm. In this study, we develop a novel conditional mutual information-based algorithm, namely RPNI (Regulation Pattern based Network Inference), to infer gene regulatory networks. For conditional gene selection, we define the co-regulation pattern, indirect-regulation pattern and mixture-regulation pattern as three candidate patterns to guide the selection of candidate genes. To demonstrate the potential of our algorithm, we apply it to gene expression data from DREAM challenge. Experimental results show that RPNI outperforms existing conditional mutual information-based methods in both accuracy and time complexity for different sizes of gene samples. Furthermore, the robustness of our algorithm is demonstrated by noisy interference analysis using different types of noise.http://europepmc.org/articles/PMC4865039?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Fei Xiao
Lin Gao
Yusen Ye
Yuxuan Hu
Ruijie He
spellingShingle Fei Xiao
Lin Gao
Yusen Ye
Yuxuan Hu
Ruijie He
Inferring Gene Regulatory Networks Using Conditional Regulation Pattern to Guide Candidate Genes.
PLoS ONE
author_facet Fei Xiao
Lin Gao
Yusen Ye
Yuxuan Hu
Ruijie He
author_sort Fei Xiao
title Inferring Gene Regulatory Networks Using Conditional Regulation Pattern to Guide Candidate Genes.
title_short Inferring Gene Regulatory Networks Using Conditional Regulation Pattern to Guide Candidate Genes.
title_full Inferring Gene Regulatory Networks Using Conditional Regulation Pattern to Guide Candidate Genes.
title_fullStr Inferring Gene Regulatory Networks Using Conditional Regulation Pattern to Guide Candidate Genes.
title_full_unstemmed Inferring Gene Regulatory Networks Using Conditional Regulation Pattern to Guide Candidate Genes.
title_sort inferring gene regulatory networks using conditional regulation pattern to guide candidate genes.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description Combining path consistency (PC) algorithms with conditional mutual information (CMI) are widely used in reconstruction of gene regulatory networks. CMI has many advantages over Pearson correlation coefficient in measuring non-linear dependence to infer gene regulatory networks. It can also discriminate the direct regulations from indirect ones. However, it is still a challenge to select the conditional genes in an optimal way, which affects the performance and computation complexity of the PC algorithm. In this study, we develop a novel conditional mutual information-based algorithm, namely RPNI (Regulation Pattern based Network Inference), to infer gene regulatory networks. For conditional gene selection, we define the co-regulation pattern, indirect-regulation pattern and mixture-regulation pattern as three candidate patterns to guide the selection of candidate genes. To demonstrate the potential of our algorithm, we apply it to gene expression data from DREAM challenge. Experimental results show that RPNI outperforms existing conditional mutual information-based methods in both accuracy and time complexity for different sizes of gene samples. Furthermore, the robustness of our algorithm is demonstrated by noisy interference analysis using different types of noise.
url http://europepmc.org/articles/PMC4865039?pdf=render
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AT lingao inferringgeneregulatorynetworksusingconditionalregulationpatterntoguidecandidategenes
AT yusenye inferringgeneregulatorynetworksusingconditionalregulationpatterntoguidecandidategenes
AT yuxuanhu inferringgeneregulatorynetworksusingconditionalregulationpatterntoguidecandidategenes
AT ruijiehe inferringgeneregulatorynetworksusingconditionalregulationpatterntoguidecandidategenes
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