PURPOSE: High-grade serous ovarian cancers are heterogeneous not only in terms of clinical outcome but also at the molecular level. Our aim was to establish a novel risk classification system based on a gene expression signature for predicting overall survival, leading to suggesting novel therapeutic strategies for high-risk patients. EXPERIMENTAL DESIGN: In this large-scale cross-platform study of six microarray data sets consisting of 1,054 ovarian cancer patients, we developed a gene expression signature for predicting overall survival by applying elastic net and 10-fold cross-validation to a Japanese data set A (n = 260) and evaluated the signature in five other data sets. Subsequently, we investigated differences in the biological characteristics between high- and low-risk ovarian cancer groups. RESULTS: An elastic net analysis identified a 126-gene expression signature for predicting overall survival in patients with ovarian cancer using the Japanese data set A (multivariate analysis, P = 4 × 10(-20)). We validated its predictive ability with five other data sets using multivariate analysis (Tothill's data set, P = 1 × 10(-5); Bonome's data set, P = 0.0033; Dressman's data set, P = 0.0016; TCGA data set, P = 0.0027; Japanese data set B, P = 0.021). Through gene ontology and pathway analyses, we identified a significant reduction in expression of immune-response-related genes, especially on the antigen presentation pathway, in high-risk ovarian cancer patients. CONCLUSIONS: This risk classification based on the 126-gene expression signature is an accurate predictor of clinical outcome in patients with advanced stage high-grade serous ovarian cancer and has the potential to develop new therapeutic strategies for high-grade serous ovarian cancer patients.
PURPOSE: High-grade serous ovarian cancers are heterogeneous not only in terms of clinical outcome but also at the molecular level. Our aim was to establish a novel risk classification system based on a gene expression signature for predicting overall survival, leading to suggesting novel therapeutic strategies for high-risk patients. EXPERIMENTAL DESIGN: In this large-scale cross-platform study of six microarray data sets consisting of 1,054 ovarian cancerpatients, we developed a gene expression signature for predicting overall survival by applying elastic net and 10-fold cross-validation to a Japanese data set A (n = 260) and evaluated the signature in five other data sets. Subsequently, we investigated differences in the biological characteristics between high- and low-risk ovarian cancer groups. RESULTS: An elastic net analysis identified a 126-gene expression signature for predicting overall survival in patients with ovarian cancer using the Japanese data set A (multivariate analysis, P = 4 × 10(-20)). We validated its predictive ability with five other data sets using multivariate analysis (Tothill's data set, P = 1 × 10(-5); Bonome's data set, P = 0.0033; Dressman's data set, P = 0.0016; TCGA data set, P = 0.0027; Japanese data set B, P = 0.021). Through gene ontology and pathway analyses, we identified a significant reduction in expression of immune-response-related genes, especially on the antigen presentation pathway, in high-risk ovarian cancerpatients. CONCLUSIONS: This risk classification based on the 126-gene expression signature is an accurate predictor of clinical outcome in patients with advanced stage high-grade serous ovarian cancer and has the potential to develop new therapeutic strategies for high-grade serous ovarian cancerpatients.
Authors: Karina E Hew; Philip C Miller; Dorraya El-Ashry; Jun Sun; Alexandra H Besser; Tan A Ince; Mengnan Gu; Zhi Wei; Gao Zhang; Patricia Brafford; Wei Gao; Yiling Lu; Gordon B Mills; Joyce M Slingerland; Fiona Simpkins Journal: Clin Cancer Res Date: 2015-10-19 Impact factor: 12.531
Authors: Nicholas W Bateman; Elizabeth Jaworski; Wei Ao; Guisong Wang; Tracy Litzi; Elizabeth Dubil; Charlotte Marcus; Kelly A Conrads; Pang-ning Teng; Brian L Hood; Neil T Phippen; Lisa A Vasicek; William P McGuire; Keren Paz; David Sidransky; Chad A Hamilton; G Larry Maxwell; Kathleen M Darcy; Thomas P Conrads Journal: J Proteome Res Date: 2015-03-19 Impact factor: 4.466