Peng Lihong, Liu Xin, Yang Long, Liu Longlong, Bai Zongzheng, Chen Min, Lu Xu, Nie Libo
IEEE J Biomed Health Inform. 2025 Mar;29(3):1602-1612. doi: 10.1109/JBHI.2024.3375025. Epub 2025 Mar 6.
The identification of drug-target interactions (DTIs) is an essential step in drug discovery. In vitro experimental methods are expensive, laborious, and time-consuming. Deep learning has witnessed promising progress in DTI prediction. However, how to precisely represent drug and protein features is a major challenge for DTI prediction. Here, we developed an end-to-end DTI identification framework called BINDTI based on bi-directional Intention network. First, drug features are encoded with graph convolutional networks based on its 2D molecular graph obtained by its SMILES string. Next, protein features are encoded based on its amino acid sequence through a mixed model called ACmix, which integrates self-attention mechanism and convolution. Third, drug and target features are fused through bi-directional Intention network, which combines Intention and multi-head attention. Finally, unknown drug-target (DT) pairs are classified through multilayer perceptron based on the fused DT features. The results demonstrate that BINDTI greatly outperformed four baseline methods (i.e., CPI-GNN, TransfomerCPI, MolTrans, and IIFDTI) on the BindingDB, BioSNAP, DrugBank, and Human datasets. More importantly, it was more appropriate to predict new DTIs than the four baseline methods on imbalanced datasets. Ablation experimental results elucidated that both bi-directional Intention and ACmix could greatly advance DTI prediction. The fused feature visualization and case studies manifested that the predicted results by BINDTI were basically consistent with the true ones. We anticipate that the proposed BINDTI framework can find new low-cost drug candidates, improve drugs' virtual screening, and further facilitate drug repositioning as well as drug discovery.
药物-靶点相互作用(DTIs)的识别是药物发现过程中的关键步骤。体外实验方法成本高昂、操作繁琐且耗时。深度学习在DTI预测方面取得了显著进展。然而,如何精确表征药物和蛋白质特征是DTI预测面临的主要挑战。在此,我们基于双向意图网络开发了一个名为BINDTI的端到端DTI识别框架。首先,基于通过SMILES字符串获得的二维分子图,利用图卷积网络对药物特征进行编码。其次,通过一种名为ACmix的混合模型,基于氨基酸序列对蛋白质特征进行编码,该模型整合了自注意力机制和卷积。第三,通过结合意图和多头注意力的双向意图网络融合药物和靶点特征。最后,基于融合后的DT特征,通过多层感知器对未知的药物-靶点(DT)对进行分类。结果表明,在BindingDB、BioSNAP、DrugBank和Human数据集上,BINDTI的性能大大优于四种基线方法(即CPI-GNN、TransfomerCPI、MolTrans和IIFDTI)。更重要的是,在不平衡数据集上预测新的DTIs时,BINDTI比四种基线方法更合适。消融实验结果表明,双向意图和ACmix都能极大地提升DTI预测性能。融合特征可视化和案例研究表明,BINDTI的预测结果与真实结果基本一致。我们期望所提出的BINDTI框架能够发现新的低成本药物候选物,改善药物的虚拟筛选,并进一步促进药物重新定位以及药物发现。