Chen Jiatao, Zhang Liang, Cheng Ke, Jin Bo, Lu Xinjiang, Che Chao
IEEE/ACM Trans Comput Biol Bioinform. 2023 Sep-Oct;20(5):2781-2789. doi: 10.1109/TCBB.2022.3153963. Epub 2023 Oct 9.
Recent advances in graph representation learning provide new opportunities for computational drug-target interaction (DTI) prediction. However, it still suffers from deficiencies of dependence on manual labels and vulnerability to attacks. Inspired by the success of self-supervised learning (SSL) algorithms, which can leverage input data itself as supervision,we propose SupDTI, a SSL-enhanced drug-target interaction prediction framework based on a heterogeneous network (i.e., drug-protein, drug-drug, and protein-protein interaction network; drug-disease, drug-side-effect, and protein-disease association network; drug-structure and protein-sequence similarity network). Specifically, SupDTI is an end-to-end learning framework consisting of five components. First, localized and globalized graph convolutions are designed to capture the nodes' information from both local and global perspectives, respectively. Then, we develop a variational autoencoder to constrain the nodes' representation to have desired statistical characteristics. Finally, a unified self-supervised learning strategy is leveraged to enhance the nodes' representation, namely, a contrastive learning module is employed to enable the nodes' representation to fit the graph-level representation, followed by a generative learning module which further maximizes the node-level agreement across the global and local views by learning the probabilistic connectivity distribution of the original heterogeneous network. Experimental results show that our model can achieve better prediction performance than state-of-the-art methods.
图表示学习的最新进展为计算药物-靶点相互作用(DTI)预测提供了新机遇。然而,它仍存在依赖人工标签以及易受攻击的缺陷。受自监督学习(SSL)算法成功的启发,其可将输入数据本身用作监督,我们提出了SupDTI,这是一种基于异构网络(即药物-蛋白质、药物-药物和蛋白质-蛋白质相互作用网络;药物-疾病、药物-副作用和蛋白质-疾病关联网络;药物-结构和蛋白质-序列相似性网络)的SSL增强型药物-靶点相互作用预测框架。具体而言,SupDTI是一个由五个组件组成的端到端学习框架。首先,设计局部和全局图卷积,分别从局部和全局视角捕捉节点信息。然后,我们开发了一个变分自编码器来约束节点表示以具有所需的统计特征。最后,利用统一的自监督学习策略来增强节点表示,即采用对比学习模块使节点表示适应图级表示,随后是生成学习模块,其通过学习原始异构网络的概率连接分布进一步最大化全局和局部视图之间的节点级一致性。实验结果表明,我们的模型能够比现有方法实现更好的预测性能。