Multi-layer stratified oncology platform utilizing transcriptomics, prostate cancer organoids, and modeling of drug response

利用转录组学、前列腺癌类器官和药物反应模型构建的多层分层肿瘤学平台

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作者:Juening Kang # ,Panagiotis Chouvardas # ,Andrew Maalouf ,Daniel Hanhart ,Laura Fernández Cerro ,Wanli Cheng ,Eva Compérat ,Katja Ovchinnikova ,Rahel Etter ,Michaela Medová ,Ulrich Schneeberger ,Beat Roth ,George N Thalmann ,Sofia Karkampouna ,Marianna Kruithof-de Julio

Abstract

The high intra-patient heterogeneity in multifocal primary prostate cancer (PCa) has curtailed the efficacy of current treatment options. By employing twin biopsies from multiple lesions with matched patient-derived organoids (PDO) models, the PCa molecular heterogeneity was investigated. We utilized genomics, transcriptomics and machine learning (ML) approaches to elucidate and predict the underlying mechanisms of pharmacological heterogeneity. Our data indicate a vulnerability of primary PCa organoids for small molecule inhibitors targeting receptor tyrosine kinases (MET, ALK, SRC). By exploring gene expression data from matched parental tissue in an unsupervised manner, we identified two distinct clusters of samples. Interestingly, the PDO drug responses were significantly different between the two clusters for 4/11 compounds tested. We developed a transcriptomics-based, cluster prediction model, which can accurately stratify samples into the two clusters. Notably, our prediction model is based on tissue profiles, therefore, it can be utilized to rapidly evaluate new cases and suggest promising drug candidates, even when PDO derivation is not feasible. Taken together, we propose a novel flexible stratified oncology approach that can swiftly and accurately highlight promising drug vulnerabilities of PCa patients.

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