PanDrugs: a novel method to prioritize anticancer drug treatments according to individual genomic data

Elena Piñeiro-Yáñez(Spanish National Cancer Research Centre), Miguel Reboiro‐Jato(Universidade de Vigo), Gonzalo Goméz-López(Spanish National Cancer Research Centre), Javier Perales-Patón(Spanish National Cancer Research Centre), Kevin Troulé(Spanish National Cancer Research Centre), José Manuel Rodrı́guez, Héctor Tejero(Spanish National Cancer Research Centre), Takeshi Shimamura(Loyola University Chicago), Pedro P. López‐Casas(Spanish National Cancer Research Centre), Julián Carretero(Universitat de València), Alfonso Valencia(Spanish National Cancer Research Centre), Manuel Hidalgo(Beth Israel Deaconess Medical Center), Daniel Glez‐Peña(Universidade de Vigo), Fátima Al‐Shahrour(Spanish National Cancer Research Centre)
Genome Medicine
May 29, 2018
Cited by 125Open Access
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Abstract

BACKGROUND: Large-sequencing cancer genome projects have shown that tumors have thousands of molecular alterations and their frequency is highly heterogeneous. In such scenarios, physicians and oncologists routinely face lists of cancer genomic alterations where only a minority of them are relevant biomarkers to drive clinical decision-making. For this reason, the medical community agrees on the urgent need of methodologies to establish the relevance of tumor alterations, assisting in genomic profile interpretation, and, more importantly, to prioritize those that could be clinically actionable for cancer therapy. RESULTS: We present PanDrugs, a new computational methodology to guide the selection of personalized treatments in cancer patients using the variant lists provided by genome-wide sequencing analyses. PanDrugs offers the largest database of drug-target associations available from well-known targeted therapies to preclinical drugs. Scoring data-driven gene cancer relevance and drug feasibility PanDrugs interprets genomic alterations and provides a prioritized evidence-based list of anticancer therapies. Our tool represents the first drug prescription strategy applying a rational based on pathway context, multi-gene markers impact and information provided by functional experiments. Our approach has been systematically applied to TCGA patients and successfully validated in a cancer case study with a xenograft mouse model demonstrating its utility. CONCLUSIONS: PanDrugs is a feasible method to identify potentially druggable molecular alterations and prioritize drugs to facilitate the interpretation of genomic landscape and clinical decision-making in cancer patients. Our approach expands the search of druggable genomic alterations from the concept of cancer driver genes to the druggable pathway context extending anticancer therapeutic options beyond already known cancer genes. The methodology is public and easily integratable with custom pipelines through its programmatic API or its docker image. The PanDrugs webtool is freely accessible at http://www.pandrugs.org .


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