Author:
Iwata Teppei,Sedukhina Anna S.,Kubota Manabu,Oonuma Shigeko,Maeda Ichiro,Yoshiike Miki,Usuba Wataru,Minagawa Kimino,Hames Eleina,Meguro Rei,Cho Sunny,Chien Stephen H. H.,Urabe Shiro,Pae Sookhee,Palanisamy Kishore,Kumai Toshio,Yudo Kazuo,Kikuchi Eiji,Sato Ko
Abstract
AbstractA subset of prostate cancer displays a poor clinical outcome. Therefore, identifying this poor prognostic subset within clinically aggressive groups (defined as a Gleason score (GS) ≧8) and developing effective treatments are essential if we are to improve prostate cancer survival. Here, we performed a bioinformatics analysis of a TCGA dataset (GS ≧8) to identify pathways upregulated in a prostate cancer cohort with short survival. When conducting bioinformatics analyses, the definition of factors such as “overexpression” and “shorter survival” is vital, as poor definition may lead to mis-estimations. To eliminate this possibility, we defined an expression cutoff value using an algorithm calculated by a Cox regression model, and the hazard ratio for each gene was set so as to identify genes whose expression levels were associated with shorter survival. Next, genes associated with shorter survival were entered into pathway analysis to identify pathways that were altered in a shorter survival cohort. We identified pathways involving upregulation of GRB2. Overexpression of GRB2 was linked to shorter survival in the TCGA dataset, a finding validated by histological examination of biopsy samples taken from the patients for diagnostic purposes. Thus, GRB2 is a novel biomarker that predicts shorter survival of patients with aggressive prostate cancer (GS ≧8).
Funder
Japan Society for the Promotion of Science
Publisher
Springer Science and Business Media LLC
Cited by
6 articles.
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