2020
DOI: 10.1101/2020.05.22.101428
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Personalizedin-silicodrug response prediction based on the genetic landscape of muscle-invasive bladder cancer

Abstract: In bladder cancer (BLCA) there are, to date, no reliable diagnostics available to predict the potential benefit of a therapeutic approach. The extraordinarily high molecular heterogeneity of BLCA might explain its wide range of therapy responses to empiric treatments. To better stratify patients for treatment response, we present a highly automated workflow for in-silico drug response prediction based on a tumor's individual multi-omic profile. Within the TCGA-BLCA cohort, the algorithm identified a panel of 2… Show more

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