克拉斯
表型
大规模并行测序
计算生物学
癌症基因组测序
遗传学
基因
生物
巨量平行
基因组
损失函数
癌症研究
计算机科学
函数增益
癌症
编码(社会科学)
生物信息学
DNA测序
突变
外显子组测序
作者
Oana Ursu,James Neal,Emily A. Shea,Pratiksha I. Thakore,Livnat Jerby-Arnon,Lan K. Nguyen,Danielle Dionne,Celeste Diaz,Julia Bauman,M M Mosaad,Christian R. Fagre,April Lo,Maria McSharry,Andrew O. Giacomelli,Seav Huong Ly,Orit Rozenblatt-Rosen,William C. Hahn,Andrew J. Aguirre,Alice H. Berger,Aviv Regev,Jesse S. Boehm
标识
DOI:10.1038/s41587-021-01160-7
摘要
Genome sequencing studies have identified millions of somatic variants in cancer, but it remains challenging to predict the phenotypic impact of most. Experimental approaches to distinguish impactful variants often use phenotypic assays that report on predefined gene-specific functional effects in bulk cell populations. Here, we develop an approach to functionally assess variant impact in single cells by pooled Perturb-seq. We measured the impact of 200 TP53 and KRAS variants on RNA profiles in over 300,000 single lung cancer cells, and used the profiles to categorize variants into phenotypic subsets to distinguish gain-of-function, loss-of-function and dominant negative variants, which we validated by comparison with orthogonal assays. We discovered that KRAS variants did not merely fit into discrete functional categories, but spanned a continuum of gain-of-function phenotypes, and that their functional impact could not have been predicted solely by their frequency in patient cohorts. Our work provides a scalable, gene-agnostic method for coding variant impact phenotyping, with potential applications in multiple disease settings.
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