计算机科学
推论
钥匙(锁)
蛋白质工程
合理设计
人工智能
计算生物学
突变
序列(生物学)
稳健性(进化)
蛋白质结构
深度学习
编码(内存)
核酸酶
蛋白质设计
迭代求精
机器学习
机制(生物学)
工程类
生物系统
基因组工程
作者
Feng Xu,Zilong Zhao,Chang Liu,Meixia Yu,Ke Li,Yilin Jing,Peiyang Li,Beibei Xin,Jian Chen,E Lizhu,Chuan Qin,Zhijia Yang,Hainan Zhao
标识
DOI:10.1002/sstr.202500674
摘要
Predicting the structurally diverse Cas12 nucleases remains challenging for general protein modeling algorithms, hindering rational engineering to enhance their genome‐editing capabilities. Here we present Cas12Fold, a deep learning framework tailored to Cas12 proteins. Cas12Fold leverages the deep evolutionary information from Cas12‐focused sequences and structures, and employs an iterative structure‐based alignment strategy to resolve conformational complexity. This approach achieves superior accuracy compared to existing methods in modeling key functional domains and capturing alternative conformations. Cas12Fold improves the structure predictions for previously refractory Cas12 proteins, including the phage‐encoded Casλ, a type V enzyme with extensive sequence and structural diversity. Accurate models generated by Cas12Fold enable robust inference of mechanistically critical residues. Guided by these predictions, structure‐based mutagenesis of DNA‐binding sites enhanced the genome‐editing efficiency of Cas12j.4. Cas12Fold thus provides a robust and generalizable platform for both mechanistic studies and the rational engineering of CRISPR–Cas12 systems.
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