Discovering robust prognostic gene signatures as biomarkers using genomics data can be challenging. We have developed a simple but efficient method for discovering prognostic biomarkers in cancer gene expression data sets using modules derived from a highly reliable gene functional interaction network. When applied to breast cancer, we discover a novel 31-gene signature associated with patient survival. The signature replicates across 5 independent gene expression studies, and outperforms 48 published gene signatures. When applied to ovarian cancer, the algorithm identifies a 75-gene signature associated with patient survival. A Cytoscape plugin implementation of the signature discovery method is available at http://wiki.reactome.org/index.php/Reactome_FI_Cytoscape_Plugin.
CITATION STYLE
Wu, G., & Stein, L. (2012). A network module-based method for identifying cancer prognostic signatures. Genome Biology, 13(12), R112. https://doi.org/10.1186/gb-2012-13-12-r112
Mendeley helps you to discover research relevant for your work.