化学信息学
小分子
结构生物学
化学空间
蛋白质-蛋白质相互作用
药物重新定位
药物开发
药物靶点
虚拟筛选
对接(动物)
生物
作者
Daniel J. Evans,Remy A. Yovanno,Sanim Rahman,David W. Cao,Morgan Q. Beckett,Milan H. Patel,Afif F. Bandak,Albert Y. Lau
标识
DOI:10.1021/acs.jcim.1c00204
摘要
Structure-based drug discovery efforts require knowledge of where drug-binding sites are located on target proteins. To address the challenge of finding druggable sites, we developed a machine-learning algorithm called TACTICS (trajectory-based analysis of conformations to identify cryptic sites), which uses an ensemble of molecular structures (such as molecular dynamics simulation data) as input. First, TACTICS uses k-means clustering to select a small number of conformations that represent the overall conformational heterogeneity of the data. Then, TACTICS uses a random forest model to identify potentially bindable residues in each selected conformation, based on protein motion and geometry. Lastly, residues in possible binding pockets are scored using fragment docking. As proof-of-principle, TACTICS was applied to the analysis of simulations of the SARS-CoV-2 main protease and methyltransferase and the Yersinia pestis aryl carrier protein. Our approach recapitulates known small-molecule binding sites and predicts the locations of sites not previously observed in experimentally determined structures. The TACTICS code is available at https://github.com/Albert-Lau-Lab/tactics_protein_analysis.
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