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PLANET: A Multi-objective Graph Neural Network Model for Protein–Ligand Binding Affinity Prediction

计算机科学 虚拟筛选 人工智能 对接(动物) 配体(生物化学) 图形 水准点(测量) 机器学习 蛋白质配体 药物发现 化学 理论计算机科学 生物化学 医学 受体 护理部 大地测量学 地理
作者
Xiangying Zhang,Haotian Gao,Haojie Wang,Zhihang Chen,Zhe Zhang,Xinchong Chen,Yan Li,Yifei Qi,Renxiao Wang
出处
期刊:Journal of Chemical Information and Modeling [American Chemical Society]
卷期号:64 (7): 2205-2220 被引量:106
标识
DOI:10.1021/acs.jcim.3c00253
摘要

Predicting protein-ligand binding affinity is a central issue in drug design. Various deep learning models have been published in recent years, where many of them rely on 3D protein-ligand complex structures as input and tend to focus on the single task of reproducing binding affinity. In this study, we have developed a graph neural network model called PLANET (Protein-Ligand Affinity prediction NETwork). This model takes the graph-represented 3D structure of the binding pocket on the target protein and the 2D chemical structure of the ligand molecule as input. It was trained through a multi-objective process with three related tasks, including deriving the protein-ligand binding affinity, protein-ligand contact map, and ligand distance matrix. Besides the protein-ligand complexes with known binding affinity data retrieved from the PDBbind database, a large number of non-binder decoys were also added to the training data for deriving the final model of PLANET. When tested on the CASF-2016 benchmark, PLANET exhibited a scoring power comparable to the best result yielded by other deep learning models as well as a reasonable ranking power and docking power. In virtual screening trials conducted on the DUD-E benchmark, PLANET's performance was notably better than several deep learning and machine learning models. As on the LIT-PCBA benchmark, PLANET achieved comparable accuracy as the conventional docking program Glide, but it only spent less than 1% of Glide's computation time to finish the same job because PLANET did not need exhaustive conformational sampling. Considering the decent accuracy and efficiency of PLANET in binding affinity prediction, it may become a useful tool for conducting large-scale virtual screening.
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