Prediction of the sequence-specific cleavage activity of Cas9 variants

Several Streptococcus pyogenes Cas9 (SpCas9) variants have been developed to improve an enzyme’s specificity or to alter or broaden its protospacer-adjacent motif (PAM) compatibility, but selecting the optimal variant for a given target sequence and application remains difficult. To build computatio...

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Veröffentlicht in:Nature biotechnology 2020-11, Vol.38 (11), p.1328-1336
Hauptverfasser: Kim, Nahye, Kim, Hui Kwon, Lee, Sungtae, Seo, Jung Hwa, Choi, Jae Woo, Park, Jinman, Min, Seonwoo, Yoon, Sungroh, Cho, Sung-Rae, Kim, Hyongbum Henry
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Sprache:eng
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Zusammenfassung:Several Streptococcus pyogenes Cas9 (SpCas9) variants have been developed to improve an enzyme’s specificity or to alter or broaden its protospacer-adjacent motif (PAM) compatibility, but selecting the optimal variant for a given target sequence and application remains difficult. To build computational models to predict the sequence-specific activity of 13 SpCas9 variants, we first assessed their cleavage efficiency at 26,891 target sequences. We found that, of the 256 possible four-nucleotide NNNN sequences, 156 can be used as a PAM by at least one of the SpCas9 variants. For the high-fidelity variants, overall activity could be ranked as SpCas9 ≥ Sniper-Cas9 > eSpCas9(1.1) > SpCas9-HF1 > HypaCas9 ≈ xCas9 >> evoCas9, whereas their overall specificities could be ranked as evoCas9 >> HypaCas9 ≥ SpCas9-HF1 ≈ eSpCas9(1.1) > xCas9 > Sniper-Cas9 > SpCas9. Using these data, we developed 16 deep-learning-based computational models that accurately predict the activity of these variants at any target sequence. Deep-learning models predict the Cas9 variant with optimal activity and specificity for any target sequence.
ISSN:1087-0156
1546-1696
DOI:10.1038/s41587-020-0537-9