| Literature DB >> 25419216 |
Alexander Pearlman1, Christopher Campbell1, Eric Brooks2, Alex Genshaft2, Shahin Shajahan2, Michael Ittman3, G Steven Bova4, Jonathan Melamed5, Ilona Holcomb6, Robert J Schneider7, Harry Ostrer1.
Abstract
The transition of cancer from a localized tumor to a distant metastasis is not well understood for prostate and many other cancers, partly, because of the scarcity of tumor samples, especially metastases, from cancer patients with long-term clinical follow-up. To overcome this limitation, we developed a semi-supervised clustering method using the tumor genomic DNA copy number alterations to classify each patient into inferred clinical outcome groups of metastatic potential. Our data set was comprised of 294 primary tumors and 49 metastases from 5 independent cohorts of prostate cancer patients. The alterations were modeled based on Darwin's evolutionary selection theory and the genes overlapping these altered genomic regions were used to develop a metastatic potential score for a prostate cancer primary tumor. The function of the proteins encoded by some of the predictor genes promote escape from anoikis, a pathway of apoptosis, deregulated in metastases. We evaluated the metastatic potential score with other clinical predictors available at diagnosis using a Cox proportional hazards model and show our proposed score was the only significant predictor of metastasis free survival. The metastasis gene signature and associated score could be applied directly to copy number alteration profiles from patient biopsies positive for prostate cancer.Entities:
Year: 2012 PMID: 25419216 PMCID: PMC4240515 DOI: 10.1155/2012/873570
Source DB: PubMed Journal: J Probab Stat ISSN: 1687-952X