苯甲脒
分子动力学
动力学
化学
计算机科学
计算生物学
生物系统
生物物理学
计算化学
生物
酶
物理
生物化学
量子力学
作者
Farzin Sohraby,Ariane Nunes‐Alves
标识
DOI:10.1016/j.tibs.2022.11.003
摘要
Binding kinetic parameters can be correlated with drug efficacy, which in recent years led to the development of various computational methods for predicting binding kinetic rates and gaining insight into protein-drug binding paths and mechanisms. In this review, we introduce and compare computational methods recently developed and applied to two systems, trypsin-benzamidine and kinase-inhibitor complexes. Methods involving enhanced sampling in molecular dynamics simulations or machine learning can be used not only to predict kinetic rates, but also to reveal factors modulating the duration of residence times, selectivity, and drug resistance to mutations. Methods which require less computational time to make predictions are highlighted, and suggestions to reduce the error of computed kinetic rates are presented.
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