| Literature DB >> 35412613 |
Xubin Li1, Elisabeth K Dowling2, Gonghong Yan1, Zeynep Dereli1, Behnaz Bozorgui1, Parisa Imanirad3, Jacob H Elnaggar4, Augustin Luna5,6, David G Menter7, Patrick G Pilié8, Timothy A Yap9, Scott Kopetz7, Chris Sander5,6, Anil Korkut1.
Abstract
Cancer cells depend on multiple driver alterations whose oncogenic effects can be suppressed by drug combinations. Here, we provide a comprehensive resource of precision combination therapies tailored to oncogenic coalterations that are recurrent across patient cohorts. To generate the resource, we developed Recurrent Features Leveraged for Combination Therapy (REFLECT), which integrates machine learning and cancer informatics algorithms. Using multiomic data, the method maps recurrent coalteration signatures in patient cohorts to combination therapies. We validated the REFLECT pipeline using data from patient-derived xenografts, in vitro drug screens, and a combination therapy clinical trial. These validations demonstrate that REFLECT-selected combination therapies have significantly improved efficacy, synergy, and survival outcomes. In patient cohorts with immunotherapy response markers, DNA repair aberrations, and HER2 activation, we have identified therapeutically actionable and recurrent coalteration signatures. REFLECT provides a resource and framework to design combination therapies tailored to tumor cohorts in data-driven clinical trials and preclinical studies. SIGNIFICANCE: We developed the predictive bioinformatics platform REFLECT and a multiomics- based precision combination therapy resource. The REFLECT-selected therapies lead to significant improvements in efficacy and patient survival in preclinical and clinical settings. Use of REFLECT can optimize therapeutic benefit through selection of drug combinations tailored to molecular signatures of tumors. See related commentary by Pugh and Haibe-Kains, p. 1416. This article is highlighted in the In This Issue feature, p. 1397. ©2022 American Association for Cancer Research.Entities:
Mesh:
Year: 2022 PMID: 35412613 PMCID: PMC9524464 DOI: 10.1158/2159-8290.CD-21-0832
Source DB: PubMed Journal: Cancer Discov ISSN: 2159-8274 Impact factor: 38.272