| Literature DB >> 25171417 |
Livnat Jerby-Arnon1, Nadja Pfetzer2, Yedael Y Waldman3, Lynn McGarry2, Daniel James2, Emma Shanks2, Brinton Seashore-Ludlow4, Adam Weinstock3, Tamar Geiger5, Paul A Clemons4, Eyal Gottlieb2, Eytan Ruppin6.
Abstract
Synthetic lethality occurs when the inhibition of two genes is lethal while the inhibition of each single gene is not. It can be harnessed to selectively treat cancer by identifying inactive genes in a given cancer and targeting their synthetic lethal (SL) partners. We present a data-driven computational pipeline for the genome-wide identification of SL interactions in cancer by analyzing large volumes of cancer genomic data. First, we show that the approach successfully captures known SL partners of tumor suppressors and oncogenes. We then validate SL predictions obtained for the tumor suppressor VHL. Next, we construct a genome-wide network of SL interactions in cancer and demonstrate its value in predicting gene essentiality and clinical prognosis. Finally, we identify synthetic lethality arising from gene overactivation and use it to predict drug efficacy. These results form a computational basis for exploiting synthetic lethality to uncover cancer-specific susceptibilities.Entities:
Mesh:
Substances:
Year: 2014 PMID: 25171417 DOI: 10.1016/j.cell.2014.07.027
Source DB: PubMed Journal: Cell ISSN: 0092-8674 Impact factor: 41.582