Personalized <i>In Vitro</i> and <i>In Vivo</i> Cancer Models to Guide Precision Medicine

Chantal Pauli(Cornell University), Benjamin D. Hopkins(Cornell University), Davide Prandi(University of Trento), Reid Shaw(Precision for Medicine (United States)), Tarcisio Fedrizzi(University of Trento), Andrea Sboner(Cornell University), Verena Sailer(Cornell University), Michael A. Augello(Cornell University), Loredana Puca(Cornell University), Rachele Rosati(Precision for Medicine (United States)), Terra J. McNary(Cornell University), Yelena Churakova(Cornell University), Cynthia Cheung(Cornell University), Joanna Triscott(Cornell University), David J. Pisapia(Cornell University), Rema Rao(Cornell University), Juan Miguel Mosquera(Cornell University), Brian D. Robinson(Cornell University), Bishoy M. Faltas(Cornell University), Brooke E. Emerling(Cornell University), Vijayakrishna K. Gadi(Fred Hutch Cancer Center), Brady Bernard(Precision for Medicine (United States)), Olivier Elemento(Cornell University), Himisha Beltran(Cornell University), Francesca Demichelis(University of Trento), Christopher J. Kemp(Fred Hutch Cancer Center), Carla Grandori(Precision for Medicine (United States)), Lewis C. Cantley(Cornell University), Mark A. Rubin(Cornell University)
Cancer Discovery
March 22, 2017
Cited by 948Open Access
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Abstract

Abstract Precision medicine is an approach that takes into account the influence of individuals' genes, environment, and lifestyle exposures to tailor interventions. Here, we describe the development of a robust precision cancer care platform that integrates whole-exome sequencing with a living biobank that enables high-throughput drug screens on patient-derived tumor organoids. To date, 56 tumor-derived organoid cultures and 19 patient-derived xenograft (PDX) models have been established from the 769 patients enrolled in an Institutional Review Board–approved clinical trial. Because genomics alone was insufficient to identify therapeutic options for the majority of patients with advanced disease, we used high-throughput drug screening to discover effective treatment strategies. Analysis of tumor-derived cells from four cases, two uterine malignancies and two colon cancers, identified effective drugs and drug combinations that were subsequently validated using 3-D cultures and PDX models. This platform thereby promotes the discovery of novel therapeutic approaches that can be assessed in clinical trials and provides personalized therapeutic options for individual patients where standard clinical options have been exhausted. Significance: Integration of genomic data with drug screening from personalized in vitro and in vivo cancer models guides precision cancer care and fuels next-generation research. Cancer Discov; 7(5); 462–77. ©2017 AACR. See related commentary by Picco and Garnett, p. 456. This article is highlighted in the In This Issue feature, p. 443


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