标杆管理
人类蛋白质组计划
对接(动物)
蛋白质组
药物发现
Boosting(机器学习)
化学
药物开发
管道(软件)
自动停靠
计算生物学
药品
计算机科学
机器学习
生物信息学
生物
蛋白质组学
生物化学
医学
业务
药理学
生物信息学
营销
护理部
基因
程序设计语言
作者
Qing Luo,Sheng Wang,HY Li,Liangzhen Zheng,Yuguang Mu,Jingjing Guo
摘要
Abstract Predicting the binding of ligands to the human proteome via reverse‐docking methods enables the understanding of ligand's interactions with potential protein targets in the human body, thereby facilitating drug repositioning and the evaluation of potential off‐target effects or toxic side effects of drugs. In this study, we constructed 11 reverse docking pipelines by integrating site prediction tools (PointSite and SiteMap), docking programs (Glide and AutoDock Vina), and scoring functions (Glide, Autodock Vina, RTMScore, DeepRMSD, and OnionNet‐SFCT), and then thoroughly benchmarked their predictive capabilities. The results show that the Glide_SFCT (PS) pipeline exhibited the best target prediction performance based on the atomic structure models in AlphaFold2 human proteome. It achieved a success rate of 27.8% when considering the top 100 ranked prediction. This pipeline effectively narrows the range of potential targets within the human proteome, laying a foundation for drug target prediction, off‐target assessment, and toxicity prediction, ultimately boosting drug development. By facilitating these critical aspects of drug discovery and development, our work has the potential to ultimately accelerate the identification of new therapeutic agents and improve drug safety.
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