联营
计算机科学
成对比较
人工神经网络
理论计算机科学
图形
人工智能
机器学习
作者
Shuangli Li,Jingbo Zhou,Tong Xu,Liang Huang,Fan Wang,Haoyi Xiong,Weili Huang,Dejing Dou,Hui Xiong
出处
期刊:Knowledge Discovery and Data Mining
日期:2021-08-13
卷期号:: 975-985
被引量:90
标识
DOI:10.1145/3447548.3467311
摘要
Drug discovery often relies on the successful prediction of protein-ligand binding affinity. Recent advances have shown great promise in applying graph neural networks (GNNs) for better affinity prediction by learning the representations of protein-ligand complexes. However, existing solutions usually treat protein-ligand complexes as topological graph data, thus the biomolecular structural information is not fully utilized. The essential long-range interactions among atoms are also neglected in GNN models. To this end, we propose a structure-aware interactive graph neural network (SIGN) which consists of two components: polar-inspired graph attention layers (PGAL) and pairwise interactive pooling (PiPool). Specifically, PGAL iteratively performs the node-edge aggregation process to update embeddings of nodes and edges while preserving the distance and angle information among atoms. Then, PiPool is adopted to gather interactive edges with a subsequent reconstruction loss to reflect the global interactions. Exhaustive experimental study on two benchmarks verifies the superiority of SIGN.
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