Random forest-based modelling to detect biomarkers for prostate cancer progression.
Reka TothHeiko SchiffmannClaudia Hube-MaggFranziska BüscheckDoris HöflmayerSören WeidemannPatrick LebokChristoph FrauneSarah MinnerThorsten SchlommGuido SauterChristoph PlassYassen AssenovRonald SimonJan MeinersClarissa GerhäuserPublished in: Clinical epigenetics (2019)
Our results highlight the prognostic relevance of methylation loss in PMD regions, as well as of several candidate genes not previously associated with PCa progression. Our robust and externally validated PCa classification model either directly or via protein expression analyses of the identified top-ranked candidate genes will support the clinical management of prostate cancer.