Wang Mengdi, Lei Xiujuan, Liu Lian, Chen Jianrui, Wu Fang-Xiang
IEEE J Biomed Health Inform. 2024 Sep 11;PP. doi: 10.1109/JBHI.2024.3458794.
Accurate prediction of drug-target interactions (DTIs) is essential for advancing drug discovery and repurposing. However, the sparsity of DTI data limits the effectiveness of existing computational methods, which primarily focus on sparse DTI networks and have poor performance in aggregating information from neighboring nodes and representing isolated nodes within the network. In this study, we propose a novel deep learning framework, named GIAE-DTI, which considers cross-modal similarity of drugs and targets and constructs a heterogeneous network for DTI prediction. Firstly, the model calculates the cross-modal similarity of drugs and proteins from the relationships among drugs, proteins, diseases, and side effects, and performs similarity integration by taking the average. Then, a drug-target heterogeneous network is constructed, including drug-drug interactions, protein-protein interactions, and drug-target interactions processed by weighted K nearest known neighbors. In the heterogeneous network, a graph autoencoder based on a graph isomorphism network is employed for feature extraction, while a dual decoder is utilized to achieve better self-supervised learning, resulting in latent feature representations for drugs and targets. Finally, a deep neural network is employed to predict DTIs. The experimental results indicate that on the benchmark dataset, GIAE-DTI achieves AUC and AUPR scores of 0.9533 and 0.9619, respectively, in DTI prediction, outperforming the current state-of-the-art methods. Additionally, case studies on four 5-hydroxytryptamine receptor-related targets and five drugs related to mental diseases show the great potential of the proposed method in practical applications.
准确预测药物-靶点相互作用(DTIs)对于推进药物发现和重新利用至关重要。然而,DTI数据的稀疏性限制了现有计算方法的有效性,这些方法主要关注稀疏的DTI网络,在聚合来自相邻节点的信息以及表示网络内的孤立节点方面表现不佳。在本研究中,我们提出了一种名为GIAE-DTI的新型深度学习框架,该框架考虑了药物和靶点的跨模态相似性,并构建了一个用于DTI预测的异构网络。首先,该模型从药物、蛋白质、疾病和副作用之间的关系计算药物和蛋白质的跨模态相似性,并通过求平均值进行相似性整合。然后,构建一个药物-靶点异构网络,包括药物-药物相互作用、蛋白质-蛋白质相互作用以及通过加权K近邻已知邻居处理的药物-靶点相互作用。在异构网络中,采用基于图同构网络的图自动编码器进行特征提取,同时利用双解码器实现更好的自监督学习,从而得到药物和靶点的潜在特征表示。最后,使用深度神经网络预测DTIs。实验结果表明,在基准数据集上,GIAE-DTI在DTI预测中分别实现了0.9533和0.9619的AUC和AUPR分数,优于当前的最先进方法。此外,对四个5-羟色胺受体相关靶点和五种与精神疾病相关药物的案例研究表明,该方法在实际应用中具有巨大潜力。