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De novo identification of essential protein domains from CRISPR-Cas9 tiling-sgRNA knockout screens.


ABSTRACT: High-throughput CRISPR-Cas9 knockout screens using a tiling-sgRNA design permit in situ evaluation of protein domain function. Here, to facilitate de novo identification of essential protein domains from such screens, we propose ProTiler, a computational method for the robust mapping of CRISPR knockout hyper-sensitive (CKHS) regions, which refer to the protein regions associated with a strong sgRNA dropout effect in the screens. Applied to a published CRISPR tiling screen dataset, ProTiler identifies 175 CKHS regions in 83 proteins. Of these CKHS regions, more than 80% overlap with annotated Pfam domains, including all of the 15 known drug targets in the dataset. ProTiler also reveals unannotated essential domains, including the N-terminus of the SWI/SNF subunit SMARCB1, which is validated experimentally. Surprisingly, the CKHS regions are negatively correlated with phosphorylation and acetylation sites, suggesting that protein domains and post-translational modification sites have distinct sensitivities to CRISPR-Cas9 mediated amino acids loss.

SUBMITTER: He W 

PROVIDER: S-EPMC6778102 | biostudies-literature | 2019 Oct

REPOSITORIES: biostudies-literature

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De novo identification of essential protein domains from CRISPR-Cas9 tiling-sgRNA knockout screens.

He Wei W   Zhang Liang L   Villarreal Oscar D OD   Fu Rongjie R   Bedford Ella E   Dou Jingzhuang J   Patel Anish Y AY   Bedford Mark T MT   Shi Xiaobing X   Chen Taiping T   Bartholomew Blaine B   Xu Han H  

Nature communications 20191004 1


High-throughput CRISPR-Cas9 knockout screens using a tiling-sgRNA design permit in situ evaluation of protein domain function. Here, to facilitate de novo identification of essential protein domains from such screens, we propose ProTiler, a computational method for the robust mapping of CRISPR knockout hyper-sensitive (CKHS) regions, which refer to the protein regions associated with a strong sgRNA dropout effect in the screens. Applied to a published CRISPR tiling screen dataset, ProTiler ident  ...[more]

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