地图集(解剖学)
癌症
依赖关系(UML)
基因组
计算生物学
生物
地图学
地理
计算机科学
遗传学
人工智能
解剖
基因
作者
Xu Shi,Christos Gekas,Daniel Verduzco,Sakina M. Petiwala,Cynthia Jeffries,Charles Lu,Erin Murphy,Tifani Anton,Andy H. Vo,Zhiguang Xiao,Priya Narayanan,Bee-Chun Sun,Aloma D’Souza,J. Matthew Barnes,Somdutta Roy,Cyril Y. Ramathal,Michael J. Flister,Zoltán Dezső
标识
DOI:10.1038/s43018-024-00789-y
摘要
Abstract Cancer dependency maps have accelerated the discovery of tumor vulnerabilities that can be exploited as drug targets when translatable to patients. The Cancer Genome Atlas (TCGA) is a compendium of ‘maps’ detailing the genetic, epigenetic and molecular changes that occur during the pathogenesis of cancer, yet it lacks a dependency map to translate gene essentiality in patient tumors. Here, we used machine learning to build translational dependency maps for patient tumors, which identified tumor vulnerabilities that predict drug responses and disease outcomes. A similar approach was used to map gene tolerability in healthy tissues to prioritize tumor vulnerabilities with the best therapeutic windows. A subset of patient-translatable synthetic lethalities were experimentally tested, including PAPSS1 / PAPSS12 and CNOT7 / CNOT78 , which were validated in vitro and in vivo. Notably, PAPSS1 synthetic lethality was driven by collateral deletion of PAPSS2 with PTEN and was correlated with patient survival. Finally, the translational dependency map is provided as a web-based application for exploring tumor vulnerabilities.
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