元动力学
药物发现
化学
生化工程
数据科学
分子动力学
补语(音乐)
计算生物学
计算机科学
纳米技术
管理科学
计算化学
生物化学
材料科学
互补
生物
工程类
经济
基因
表型
作者
Sergio Decherchi,Andrea Cavalli
出处
期刊:Chemical Reviews
[American Chemical Society]
日期:2020-10-02
卷期号:120 (23): 12788-12833
被引量:224
标识
DOI:10.1021/acs.chemrev.0c00534
摘要
Computational studies play an increasingly important role in chemistry and biophysics, mainly thanks to improvements in hardware and algorithms. In drug discovery and development, computational studies can reduce the costs and risks of bringing a new medicine to market. Computational simulations are mainly used to optimize promising new compounds by estimating their binding affinity to proteins. This is challenging due to the complexity of the simulated system. To assess the present and future value of simulation for drug discovery, we review key applications of advanced methods for sampling complex free-energy landscapes at near nonergodicity conditions and for estimating the rate coefficients of very slow processes of pharmacological interest. We outline the statistical mechanics and computational background behind this research, including methods such as steered molecular dynamics and metadynamics. We review recent applications to pharmacology and drug discovery and discuss possible guidelines for the practitioner. Recent trends in machine learning are also briefly discussed. Thanks to the rapid development of methods for characterizing and quantifying rare events, simulation's role in drug discovery is likely to expand, making it a valuable complement to experimental and clinical approaches.
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