Li Yanbei, Fan Zhehuan, Rao Jingxin, Chen Zhiyi, Chu Qinyu, Zheng Mingyue, Li Xutong
School of Pharmaceutical Science and Technology, Hangzhou Institute for Advanced Study, UCAS, Hangzhou, Zhejiang Province, China.
Drug Discovery and Design Center, State Key Laboratory of Drug Research, Shanghai Institute of Materia Medica, Chinese Academy of Sciences, Shanghai, China.
Med Rev (2021). 2023 Oct 6;3(6):465-486. doi: 10.1515/mr-2023-0030. eCollection 2023 Dec.
Compound-protein interactions (CPIs) are critical in drug discovery for identifying therapeutic targets, drug side effects, and repurposing existing drugs. Machine learning (ML) algorithms have emerged as powerful tools for CPI prediction, offering notable advantages in cost-effectiveness and efficiency. This review provides an overview of recent advances in both structure-based and non-structure-based CPI prediction ML models, highlighting their performance and achievements. It also offers insights into CPI prediction-related datasets and evaluation benchmarks. Lastly, the article presents a comprehensive assessment of the current landscape of CPI prediction, elucidating the challenges faced and outlining emerging trends to advance the field.
复合蛋白相互作用(CPI)在药物发现中对于确定治疗靶点、药物副作用以及重新利用现有药物至关重要。机器学习(ML)算法已成为预测CPI的强大工具,在成本效益和效率方面具有显著优势。本综述概述了基于结构和非基于结构的CPI预测ML模型的最新进展,突出了它们的性能和成就。它还提供了有关CPI预测相关数据集和评估基准的见解。最后,本文对CPI预测的当前状况进行了全面评估,阐明了面临的挑战并概述了推动该领域发展的新兴趋势。