可药性
蛋白质数据库
共价键
计算生物学
生物信息学
非共价相互作用
蛋白质数据库
蛋白质组
计算机科学
半胱氨酸
化学
小分子
蛋白质结构
生物化学
分子
生物
基因
有机化学
酶
氢键
作者
Hongyan Du,Dejun Jiang,Junbo Gao,Xujun Zhang,Lingxiao Jiang,Yundian Zeng,Zhenhua Wu,Chao Shen,Lei Xu,Dongsheng Cao,Tingjun Hou,Peichen Pan
出处
期刊:Research
[AAAS00]
日期:2022-01-01
卷期号:2022: 9873564-9873564
被引量:21
标识
DOI:10.34133/2022/9873564
摘要
Covalent ligands have attracted increasing attention due to their unique advantages, such as long residence time, high selectivity, and strong binding affinity. They also show promise for targets where previous efforts to identify noncovalent small molecule inhibitors have failed. However, our limited knowledge of covalent binding sites has hindered the discovery of novel ligands. Therefore, developing in silico methods to identify covalent binding sites is highly desirable. Here, we propose DeepCoSI, the first structure-based deep graph learning model to identify ligandable covalent sites in the protein. By integrating the characterization of the binding pocket and the interactions between each cysteine and the surrounding environment, DeepCoSI achieves state-of-the-art predictive performances. The validation on two external test sets which mimic the real application scenarios shows that DeepCoSI has strong ability to distinguish ligandable sites from the others. Finally, we profiled the entire set of protein structures in the RCSB Protein Data Bank (PDB) with DeepCoSI to evaluate the ligandability of each cysteine for covalent ligand design, and made the predicted data publicly available on website.
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