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Get Free AccessThe type V-I CRISPR-Cas system is becoming increasingly more attractive for genome editing. However, natural nucleases of this system often exhibit low efficiency, limiting their application. Here, we used structure-guided rational design and protein engineering to optimize an uncharacterized Cas12i nuclease, Cas12i3. As a result, we developed Cas-SF01, a Cas12i3 variant that exhibits significantly improved gene editing activity in mammalian cells. Cas-SF01 shows comparable or superior editing performance compared to SpCas9 and other Cas12 nucleases. Compared to natural Cas12i3, Cas-SF01 has an expanded PAM range and effectively recognizes NTTN and noncanonical NATN and TTVN PAMs. In addition, we identified an amino acid substitution, D876R, that markedly reduced the off-target effect while maintaining high on-target activity, leading to the development of Cas-SF01
Zhiqiang Duan, Yafeng Liang, Jialei Sun, Hongjin Zheng, Tong Lin, Pengyu Luo, Mengge Wang, Ruiheng Liu, Ying Chen, Guo Shu-hua, Nannan Jia, Hongtao Xie, Meili Zhou, Minghui Xia, Kaijun Zhao, Shuhui Wang, Na Liu, Y. Jia, Wei Si, Qitong Chen, Yechun Hong, Ruilin Tian, Jian Kang Zhu (2024). An engineered Cas12i nuclease that is an efficient genome editing tool in animals and plants. , 5(2), DOI: https://doi.org/10.1016/j.xinn.2024.100564.
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Type
Article
Year
2024
Authors
23
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1016/j.xinn.2024.100564
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