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Genome-wide identification of key modulators of gene-gene interaction networks in breast cancer
Authors:Yu-Chiao Chiu  Li-Ju Wang  Tzu-Hung Hsiao  Eric Y. Chuang  Yidong Chen
Affiliation:1.Greehey Children’s Cancer Research Institute,University of Texas Health Science Center at San Antonio,San Antonio,USA;2.Graduate Institute of Biomedical Electronics and Bioinformatics,National Taiwan University,Taipei,Taiwan;3.Research Center for Chinese Herbal Medicine, China Medical University,Taichung,Taiwan;4.Department of Medical Research,Taichung Veterans General Hospital,Taichung,Taiwan;5.Bioinformatics and Biostatistics Core, Center of Genomic Medicine,National Taiwan University,Taipei,Taiwan;6.Department of Epidemiology and Biostatistics,University of Texas Health Science Center at San Antonio,San Antonio,USA
Abstract:

Background

With the advances in high-throughput gene profiling technologies, a large volume of gene interaction maps has been constructed. A higher-level layer of gene-gene interaction, namely modulate gene interaction, is composed of gene pairs of which interaction strengths are modulated by (i.e., dependent on) the expression level of a key modulator gene. Systematic investigations into the modulation by estrogen receptor (ER), the best-known modulator gene, have revealed the functional and prognostic significance in breast cancer. However, a genome-wide identification of key modulator genes that may further unveil the landscape of modulated gene interaction is still lacking.

Results

We proposed a systematic workflow to screen for key modulators based on genome-wide gene expression profiles. We designed four modularity parameters to measure the ability of a putative modulator to perturb gene interaction networks. Applying the method to a dataset of 286 breast tumors, we comprehensively characterized the modularity parameters and identified a total of 973 key modulator genes. The modularity of these modulators was verified in three independent breast cancer datasets. ESR1, the encoding gene of ER, appeared in the list, and abundant novel modulators were illuminated. For instance, a prognostic predictor of breast cancer, SFRP1, was found the second modulator. Functional annotation analysis of the 973 modulators revealed involvements in ER-related cellular processes as well as immune- and tumor-associated functions.

Conclusions

Here we present, as far as we know, the first comprehensive analysis of key modulator genes on a genome-wide scale. The validity of filtering parameters as well as the conservativity of modulators among cohorts were corroborated. Our data bring new insights into the modulated layer of gene-gene interaction and provide candidates for further biological investigations.
Keywords:
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