清脆的
计算生物学
癌症
药物发现
药物开发
鉴定(生物学)
Cas9
癌细胞系
生物
基因组学
基因组
癌细胞
优先次序
计算机科学
生物信息学
药品
遗传学
基因
药理学
经济
管理科学
植物
作者
Fiona M. Behan,Francesco Iorio,Gabriele Picco,Emanuel Gonçalves,Charlotte Beaver,Giorgia Migliardi,Rita Santos,Yanhua Rao,Francesco Sassi,Marika Pinnelli,Rizwan Ansari,Sarah Harper,David A. Jackson,Rebecca McRae,Rachel Pooley,Piers Wilkinson,Dieudonne van der Meer,David J. Dow,Carolyn Buser‐Doepner,Andrea Bertotti
出处
期刊:Nature
[Nature Portfolio]
日期:2019-04-10
卷期号:568 (7753): 511-516
被引量:1132
标识
DOI:10.1038/s41586-019-1103-9
摘要
Functional genomics approaches can overcome limitations—such as the lack of identification of robust targets and poor clinical efficacy—that hamper cancer drug development. Here we performed genome-scale CRISPR–Cas9 screens in 324 human cancer cell lines from 30 cancer types and developed a data-driven framework to prioritize candidates for cancer therapeutics. We integrated cell fitness effects with genomic biomarkers and target tractability for drug development to systematically prioritize new targets in defined tissues and genotypes. We verified one of our most promising dependencies, the Werner syndrome ATP-dependent helicase, as a synthetic lethal target in tumours from multiple cancer types with microsatellite instability. Our analysis provides a resource of cancer dependencies, generates a framework to prioritize cancer drug targets and suggests specific new targets. The principles described in this study can inform the initial stages of drug development by contributing to a new, diverse and more effective portfolio of cancer drug targets. In a screen of 324 human cancer cell lines and utilising a systematic target prioritization framework, the Werner syndrome ATP-dependent helicase is shown to be a synthetic lethal target in tumours from multiple cancer types with microsatellite instability, providing a new target for cancer drug development.
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