Jung Kyoon Choi1, Ungsik Yu, Ook Joon Yoo, Sangsoo Kim. 1. National Genome Information Center, Korea Research Institute of Bioscience and Biotechnology, 52 Ueun-dong, Yuseong-gu, Daejeon, Korea.
Abstract
MOTIVATION: Microarrays have been used to identify differential expression of individual genes or cluster genes that are coexpressed over various conditions. However, alteration in coexpression relationships has not been studied. Here we introduce a model for finding differential coexpression from microarrays and test its biological validity with respect to cancer. RESULTS: We collected 10 published gene expression datasets from cancers of 13 different tissues and constructed 2 distinct coexpression networks: a tumor network and normal network. Comparison of the two networks showed that cancer affected many coexpression relationships. Functional changes such as alteration in energy metabolism, promotion of cell growth and enhanced immune activity were accompanied with coexpression changes. Coregulation of collagen genes that may control invasion and metastatic spread of tumor cells was also found. Cluster analysis in the tumor network identified groups of highly interconnected genes related to ribosomal protein synthesis, the cell cycle and antigen presentation. Metallothionein expression was also found to be clustered, which may play a role in apoptosis control in tumor cells. Our results show that this model would serve as a novel method for analyzing microarrays beyond the specific implications for cancer.
MOTIVATION: Microarrays have been used to identify differential expression of individual genes or cluster genes that are coexpressed over various conditions. However, alteration in coexpression relationships has not been studied. Here we introduce a model for finding differential coexpression from microarrays and test its biological validity with respect to cancer. RESULTS: We collected 10 published gene expression datasets from cancers of 13 different tissues and constructed 2 distinct coexpression networks: a tumor network and normal network. Comparison of the two networks showed that cancer affected many coexpression relationships. Functional changes such as alteration in energy metabolism, promotion of cell growth and enhanced immune activity were accompanied with coexpression changes. Coregulation of collagen genes that may control invasion and metastatic spread of tumor cells was also found. Cluster analysis in the tumor network identified groups of highly interconnected genes related to ribosomal protein synthesis, the cell cycle and antigen presentation. Metallothionein expression was also found to be clustered, which may play a role in apoptosis control in tumor cells. Our results show that this model would serve as a novel method for analyzing microarrays beyond the specific implications for cancer.
Authors: Bai Zhang; Huai Li; Rebecca B Riggins; Ming Zhan; Jianhua Xuan; Zhen Zhang; Eric P Hoffman; Robert Clarke; Yue Wang Journal: Bioinformatics Date: 2008-12-26 Impact factor: 6.937
Authors: Bai Zhang; Ye Tian; Lu Jin; Huai Li; Ie-Ming Shih; Subha Madhavan; Robert Clarke; Eric P Hoffman; Jianhua Xuan; Leena Hilakivi-Clarke; Yue Wang Journal: Bioinformatics Date: 2011-02-03 Impact factor: 6.937