College of Artificial Intelligence, Nankai University, Tongyan Road, 300350, Tianjin, China.
College of Computer Science, Nankai University, Tongyan Road, 300350, Tianjin, China.
Brief Bioinform. 2022 Jan 17;23(1). doi: 10.1093/bib/bbab513.
In biomedical networks, molecular associations are important to understand biological processes and functions. Many computational methods, such as link prediction methods based on graph neural networks (GNNs), have been successfully applied in discovering molecular relationships with biological significance. However, it remains a challenge to explore a method that relies on representation learning of links for accurately predicting molecular associations. In this paper, we present a novel GNN based on link representation (LR-GNN) to identify potential molecular associations. LR-GNN applies a graph convolutional network (GCN)-encoder to obtain node embedding. To represent associations between molecules, we design a propagation rule that captures the node embedding of each GCN-encoder layer to construct the LR. Furthermore, the LRs of all layers are fused in output by a designed layer-wise fusing rule, which enables LR-GNN to output more accurate results. Experiments on four biomedical network data, including lncRNA-disease association, miRNA-disease association, protein-protein interaction and drug-drug interaction, show that LR-GNN outperforms state-of-the-art methods and achieves robust performance. Case studies are also presented on two datasets to verify the ability to predict unknown associations. Finally, we validate the effectiveness of the LR by visualization.
在生物医学网络中,分子关联对于理解生物过程和功能很重要。许多计算方法,如基于图神经网络(GNN)的链路预测方法,已成功应用于发现具有生物学意义的分子关系。然而,探索一种依赖链路表示学习来准确预测分子关联的方法仍然具有挑战性。在本文中,我们提出了一种基于链路表示(LR-GNN)的新型 GNN,用于识别潜在的分子关联。LR-GNN 应用图卷积网络(GCN)-编码器来获取节点嵌入。为了表示分子之间的关联,我们设计了一个传播规则,该规则捕获每个 GCN-编码器层的节点嵌入,以构建 LR。此外,通过设计的逐层融合规则在输出中融合所有层的 LR,这使得 LR-GNN 能够输出更准确的结果。在包括 lncRNA-疾病关联、miRNA-疾病关联、蛋白质-蛋白质相互作用和药物-药物相互作用在内的四个生物医学网络数据上的实验表明,LR-GNN 优于最先进的方法,并具有稳健的性能。还在两个数据集上进行了案例研究,以验证预测未知关联的能力。最后,我们通过可视化验证了 LR 的有效性。