DocumentCode :
3601222
Title :
Functional Module Analysis for Gene Coexpression Networks with Network Integration
Author :
Shuqin Zhang ; Hongyu Zhao ; Ng, Michael K.
Author_Institution :
Center for Comput. Syst. Biol., Fudan Univ., Shanghai, China
Volume :
12
Issue :
5
fYear :
2015
Firstpage :
1146
Lastpage :
1160
Abstract :
Network has been a general tool for studying the complex interactions between different genes, proteins, and other small molecules. Module as a fundamental property of many biological networks has been widely studied and many computational methods have been proposed to identify the modules in an individual network. However, in many cases, a single network is insufficient for module analysis due to the noise in the data or the tuning of parameters when building the biological network. The availability of a large amount of biological networks makes network integration study possible. By integrating such networks, more informative modules for some specific disease can be derived from the networks constructed from different tissues, and consistent factors for different diseases can be inferred. In this paper, we have developed an effective method for module identification from multiple networks under different conditions. The problem is formulated as an optimization model, which combines the module identification in each individual network and alignment of the modules from different networks together. An approximation algorithm based on eigenvector computation is proposed. Our method outperforms the existing methods, especially when the underlying modules in multiple networks are different in simulation studies. We also applied our method to two groups of gene coexpression networks for humans, which include one for three different cancers, and one for three tissues from the morbidly obese patients. We identified 13 modules with three complete subgraphs, and 11 modules with two complete subgraphs, respectively. The modules were validated through Gene Ontology enrichment and KEGG pathway enrichment analysis. We also showed that the main functions of most modules for the corresponding disease have been addressed by other researchers, which may provide the theoretical basis for further studying the modules experimentally.
Keywords :
approximation theory; biological tissues; biology computing; cancer; eigenvalues and eigenfunctions; genetics; genomics; noise; ontologies (artificial intelligence); optimisation; proteins; KEGG pathway enrichment analysis; approximation algorithm; biological networks; cancers; complete subgraphs; computational methods; data noise; disease; eigenvector computation; functional module analysis; gene coexpression networks; gene ontology enrichment; individual network; module alignment; module identification; multiple networks; network integration; obese patients; optimization model; proteins; single network; small molecules; tissues; Biology; Clustering algorithms; Computational biology; Diseases; Optimization; Functional module identification; functional module identification; gene coexpression networks; network integration; spectral clustering;
fLanguage :
English
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
Publisher :
ieee
ISSN :
1545-5963
Type :
jour
DOI :
10.1109/TCBB.2015.2396073
Filename :
7018932
Link To Document :
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