Precision gene editing using deep learning: A case study of the CRISPR-Cas9 editor

Zhengrong Cui, Luqi Lin, Yanqi Zong, Yizhi Chen, Sihao Wang
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Abstract

This article reviews the application cases of CRISPR/Cas9 gene editing technology, as well as the challenges and limitations. Firstly, the application of CRISPR/Cas9 technology based on deep learning in predicting the targeting efficiency of sgRNA is introduced, and the steps of data acquisition, pre-processing and feature engineering are described in detail. It then discusses the non-specific cutting and cytotoxicity challenges of CRISPR/Cas9 technology, as well as strategies for solving these challenges using deep learning techniques. Finally, the paper emphasizes the importance of deep learning techniques to mitigate the cytotoxicity problems in CRISPR/Cas9 technology, and points out that the establishment of these models can improve the safety and efficiency of gene editing experiments, and provide important reference and guidance for research in related fields.
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利用深度学习进行精准基因编辑:CRISPR-Cas9 编辑器案例研究
本文回顾了CRISPR/Cas9基因编辑技术的应用案例,以及面临的挑战和局限。首先介绍了基于深度学习的CRISPR/Cas9技术在预测sgRNA靶向效率中的应用,详细描述了数据采集、预处理和特征工程等步骤。然后讨论了 CRISPR/Cas9 技术的非特异性切割和细胞毒性难题,以及利用深度学习技术解决这些难题的策略。最后,论文强调了深度学习技术对缓解CRISPR/Cas9技术细胞毒性问题的重要性,并指出这些模型的建立可以提高基因编辑实验的安全性和效率,为相关领域的研究提供重要的参考和指导。
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