共价键
半胱氨酸
化学
亲核细胞
非共价相互作用
结合位点
氢键
组合化学
立体化学
生物化学
分子
有机化学
酶
催化作用
作者
Yanmin Zhang,Danfeng Zhang,Hao-Zhong Tian,Yu Jiao,Zhi‐Hao Shi,Ting Ran,Haichun Liu,Shuai Lü,Anyang Xu,Xin Qiao,Jing Pan,Lingfeng Yin,Weineng Zhou,Tao Lu,Yadong Chen
标识
DOI:10.1021/acs.molpharmaceut.6b00302
摘要
Covalent drugs have attracted increasing attention in recent years due to good inhibitory activity and selectivity. Targeting noncatalytic cysteines with irreversible inhibitors is a powerful approach for enhancing pharmacological potency and selectivity because cysteines can form covalent bonds with inhibitors through their nucleophilic thiol groups. However, most human kinases have multiple noncatalytic cysteines within the active site; to accurately predict which cysteine is most likely to form covalent bonds is of great importance but remains a challenge when designing irreversible inhibitors. In this work, FTMap was first applied to check its ability in predicting covalent binding site defined as the region where covalent bonds are formed between cysteines and irreversible inhibitors. Results show that it has excellent performance in detecting the hot spots within the binding pocket, and its hydrogen bond interaction frequency analysis could give us some interesting instructions for identification of covalent binding cysteines. Furthermore, we proposed a simple but useful covalent fragment probing approach and showed that it successfully predicted the covalent binding site of seven targets. By adopting a distance-based method, we observed that the closer the nucleophiles of covalent warheads are to the thiol group of a cysteine, the higher the possibility that a cysteine is prone to form a covalent bond. We believe that the combination of FTMap and our distance-based covalent fragment probing method can become a useful tool in detecting the covalent binding site of these targets.
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