Optimization of C-to-G base editors with sequence context preference predictable by machine learning methods

Efficient and precise base editors (BEs) for C-to-G transversion are highly desirable. However, the sequence context affecting editing outcome largely remains unclear. Here we report engineered C-to-G BEs of high efficiency and fidelity, with the sequence context predictable via machine-learning met...

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Veröffentlicht in:Nature communications 2021-08, Vol.12 (1), p.4902-4902, Article 4902
Hauptverfasser: Yuan, Tanglong, Yan, Nana, Fei, Tianyi, Zheng, Jitan, Meng, Juan, Li, Nana, Liu, Jing, Zhang, Haihang, Xie, Long, Ying, Wenqin, Li, Di, Shi, Lei, Sun, Yongsen, Li, Yongyao, Li, Yixue, Sun, Yidi, Zuo, Erwei
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Sprache:eng
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Zusammenfassung:Efficient and precise base editors (BEs) for C-to-G transversion are highly desirable. However, the sequence context affecting editing outcome largely remains unclear. Here we report engineered C-to-G BEs of high efficiency and fidelity, with the sequence context predictable via machine-learning methods. By changing the species origin and relative position of uracil-DNA glycosylase and deaminase, together with codon optimization, we obtain optimized C-to-G BEs (OPTI-CGBEs) for efficient C-to-G transversion. The motif preference of OPTI-CGBEs for editing 100 endogenous sites is determined in HEK293T cells. Using a sgRNA library comprising 41,388 sequences, we develop a deep-learning model that accurately predicts the OPTI-CGBE editing outcome for targeted sites with specific sequence context. These OPTI-CGBEs are further shown to be capable of efficient base editing in mouse embryos for generating Tyr -edited offspring. Thus, these engineered CGBEs are useful for efficient and precise base editing, with outcome predictable based on sequence context of targeted sites. C->G transversions can be highly desirable editing outcomes. Here the authors optimise CGBEs and provide a deep learning model for predicting editing outcomes based on sequence context.
ISSN:2041-1723
2041-1723
DOI:10.1038/s41467-021-25217-y