Mining maximal cohesive induced subnetworks and patterns by integrating biological networks with gene profile data

被引:0
作者
Rami Alroobi
Syed Ahmed
Saeed Salem
机构
[1] Department of Computer Science North Dakota State University,
来源
Interdisciplinary Sciences: Computational Life Sciences | 2013年 / 5卷
关键词
interaction networks; biological complexes; induced subnetworks; cohesive subnetworks;
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学科分类号
摘要
With the availability of vast amounts of protein-protein, protein-DNA interactions, and genome-wide mRNA expression data for several organisms, identifying biological complexes has emerged as a major task in systems biology. Most of the existing approaches for complex identification have focused on utilizing one source of data. Recent research has shown that systematic integration of gene profile data with interaction data yields significant patterns. In this paper, we introduce the problem of mining maximal cohesive subnetworks that satisfy user-defined constraints defined over the gene profiles of the reported subnetworks. Moreover, we introduce the problem of finding maximal cohesive patterns which are sets of cohesive genes. Experiments on Yeast and Human datasets show the effectiveness of the proposed approach by assessing the overlap of the discovered subnetworks with known biological complexes. Moreover, GO enrichment analysis shows that the discovered subnetworks are biologically significant.
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页码:211 / 224
页数:13
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  • [1] Altman R(2001)Whole-genome expression analysis: Challenges beyond clustering Curr Opin Struct Biol 11 340-347
  • [2] Raychaudhuri S(2003)An automated method for finding molecular complexes in large protein interaction networks BMC Bioinformatics 4 1-27
  • [3] Bader G(2007)Still stratus not altocumulus: Further evidence against the date/party hub distinction PLoS Biol 5 E154-i631
  • [4] Hogue C(2010)Module discovery by exhaustive search for densely connected, co-expressed regions in biomolecular interaction networks PLoSe ONE 5 E13348-E11
  • [5] Batada N(2010)Inferring cancer subnetwork markers using density-constrained biclustering Bioinformatics 26 i625-4257
  • [6] Reguly T(2005)A global view of pleiotropy and phenotypically derived gene function in yeast Mol Syst Biol 1 E1-940
  • [7] Breitkreutz A(2000)Genomic expression programs in the response of yeast cells to environmental changes Mol Biol Cell 11 4241-242
  • [8] Boucher L(2009)Enumeration of condition-dependent dense modules in protein interaction networks Bioinformatics 25 933-623
  • [9] Breitkreutz B-J(2005)GenMax: An efficient algorithm for mining maximal frequent itemsets Data Min Knowl Discov 11 223-S154
  • [10] Hurst L(1999)Evidence that phospholipase C-gamma2 interacts with SLP-76, Syk, Lyn, LAT and the Fc receptor gammachain after stimulation of the collagen receptor glycoprotein VI in human platelets Fed Eur Biochem Soc J 263 612-120