Computational and Chemical Biology, Fondazione Istituto Italiano di Tecnologia, 16163 Genoa, Italy.
Department of Pharmacy and Biotechnology, University of Bologna, 40126 Bologna, Italy.
Chem Rev. 2020 Dec 9;120(23):12788-12833. doi: 10.1021/acs.chemrev.0c00534. Epub 2020 Oct 2.
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.
计算研究在化学和生物物理学中扮演着越来越重要的角色,这主要得益于硬件和算法的改进。在药物发现和开发中,计算研究可以降低将新药推向市场的成本和风险。计算模拟主要用于通过估计有前途的新化合物与蛋白质的结合亲和力来优化这些化合物。由于模拟系统的复杂性,这具有挑战性。为了评估模拟在药物发现中的当前和未来价值,我们回顾了在接近非遍历条件下采样复杂自由能景观和估计非常缓慢的药物相关过程的速率系数的高级方法的关键应用。我们概述了这项研究背后的统计力学和计算背景,包括定向分子动力学和元动力学等方法。我们回顾了最近在药理学和药物发现中的应用,并讨论了从业者的可能指导方针。机器学习的最新趋势也简要讨论了。由于表征和量化稀有事件的方法的快速发展,模拟在药物发现中的作用可能会扩大,使其成为实验和临床方法的有价值的补充。