Cross-dependent graph neural networks for molecular property prediction

可解释性 计算机科学 利用 表现力 理论计算机科学 分子图 图形 人工神经网络 节点(物理) 图同构 可视化 财产(哲学) 源代码 人工智能 折线图 程序设计语言 哲学 计算机安全 结构工程 认识论 工程类
作者
Hehuan Ma,Yatao Bian,Yu Rong,Wenbing Huang,Tingyang Xu,Weiyang Xie,Geyan Ye,Junzhou Huang
出处
期刊:Bioinformatics [Oxford University Press]
卷期号:38 (7): 2003-2009 被引量:60
标识
DOI:10.1093/bioinformatics/btac039
摘要

The crux of molecular property prediction is to generate meaningful representations of the molecules. One promising route is to exploit the molecular graph structure through graph neural networks (GNNs). Both atoms and bonds significantly affect the chemical properties of a molecule, so an expressive model ought to exploit both node (atom) and edge (bond) information simultaneously. Inspired by this observation, we explore the multi-view modeling with GNN (MVGNN) to form a novel paralleled framework, which considers both atoms and bonds equally important when learning molecular representations. In specific, one view is atom-central and the other view is bond-central, then the two views are circulated via specifically designed components to enable more accurate predictions. To further enhance the expressive power of MVGNN, we propose a cross-dependent message-passing scheme to enhance information communication of different views. The overall framework is termed as CD-MVGNN.We theoretically justify the expressiveness of the proposed model in terms of distinguishing non-isomorphism graphs. Extensive experiments demonstrate that CD-MVGNN achieves remarkably superior performance over the state-of-the-art models on various challenging benchmarks. Meanwhile, visualization results of the node importance are consistent with prior knowledge, which confirms the interpretability power of CD-MVGNN.The code and data underlying this work are available in GitHub at https://github.com/uta-smile/CD-MVGNN.Supplementary data are available at Bioinformatics online.
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