计算生物学
生物
亚基因组mRNA
清脆的
计算机科学
遗传学
基因
作者
Francisco J. Sánchez‐Rivera,Bianca J. Diaz,Edward R. Kastenhuber,Henri Schmidt,Alyna Katti,Margaret C. Kennedy,Vincent Tem,Yu-Jui Ho,Josef Leibold,Stella Paffenholz,Francisco M. Barriga,Kevan Chu,Sukanya Goswami,Alexandra Wuest,Janelle Simon,Kaloyan M. Tsanov,Debyani Chakravarty,Hongxin Zhang,Christina Leslie,Scott W. Lowe
标识
DOI:10.1038/s41587-021-01172-3
摘要
Base editing can be applied to characterize single nucleotide variants of unknown function, yet defining effective combinations of single guide RNAs (sgRNAs) and base editors remains challenging. Here, we describe modular base-editing-activity 'sensors' that link sgRNAs and cognate target sites in cis and use them to systematically measure the editing efficiency and precision of thousands of sgRNAs paired with functionally distinct base editors. By quantifying sensor editing across >200,000 editor-sgRNA combinations, we provide a comprehensive resource of sgRNAs for introducing and interrogating cancer-associated single nucleotide variants in multiple model systems. We demonstrate that sensor-validated tools streamline production of in vivo cancer models and that integrating sensor modules in pooled sgRNA libraries can aid interpretation of high-throughput base editing screens. Using this approach, we identify several previously uncharacterized mutant TP53 alleles as drivers of cancer cell proliferation and in vivo tumor development. We anticipate that the framework described here will facilitate the functional interrogation of cancer variants in cell and animal models. Improved base editing libraries enable high-throughput functional analysis of single-nucleotide variants in cancer.
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