Network-based survival-associated module biomarker and its crosstalk with cell death genes in ovarian cancer

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Abstract

Ovarian cancer remains a dismal disease with diagnosing in the late, metastatic stages, therefore, there is a growing realization of the critical need to develop effective biomarkers for understanding underlying mechanisms. Although existing evidences demonstrate the important role of the single genetic abnormality in pathogenesis, the perturbations of interactors in the complex network are often ignored. Moreover, ovarian cancer diagnosis and treatment still exist a large gap that need to be bridged. In this work, we adopted a network-based survival-associated approach to capture a 12-gene network module based on differential co-expression PPI network in the advanced-stage, high-grade ovarian serous cystadenocarcinoma. Then, regulatory genes (protein-coding genes and non-coding genes) direct interacting with the module were found to be significantly overlapped with cell death genes. More importantly, these overlapping genes tightly clustered together pointing to the module, deciphering the crosstalk between network-based survival-associated module and cell death in ovarian cancer.

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CITATION STYLE

APA

Jin, N., Wu, H., Miao, Z., Huang, Y., Hu, Y., Bi, X., … Wang, D. (2015). Network-based survival-associated module biomarker and its crosstalk with cell death genes in ovarian cancer. Scientific Reports, 5. https://doi.org/10.1038/srep11566

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