College of Computer Science and Technology, China University of Petroleum (East China), Qingdao, 266580, China.
College of Information and Control Engineering, Qingdao University of Technology, Qingdao, 266520, China.
Interdiscip Sci. 2024 Sep;16(3):568-578. doi: 10.1007/s12539-024-00608-z. Epub 2024 Mar 14.
Recognizing drug-target interactions (DTI) stands as a pivotal element in the expansive field of drug discovery. Traditional biological wet experiments, although valuable, are time-consuming and costly as methods. Recently, computational methods grounded in network learning have demonstrated great advantages by effective topological feature extraction and attracted extensive research attention. However, most existing network-based learning methods only consider the low-order binary correlation between individual drug and target, neglecting the potential higher-order correlation information derived from multiple drugs and targets. High-order information, as an essential component, exhibits complementarity with low-order information. Hence, the incorporation of higher-order associations between drugs and targets, while adequately integrating them with the existing lower-order information, could potentially yield substantial breakthroughs in predicting drug-target interactions. We propose a novel dual channels network-based learning model CHL-DTI that converges high-order information from hypergraphs and low-order information from ordinary graph for drug-target interaction prediction. The convergence of high-low order information in CHL-DTI is manifested in two key aspects. First, during the feature extraction stage, the model integrates both high-level semantic information and low-level topological information by combining hypergraphs and ordinary graph. Second, CHL-DTI fully fuse the innovative introduced drug-protein pairs (DPP) hypergraph network structure with ordinary topological network structure information. Extensive experimentation conducted on three public datasets showcases the superior performance of CHL-DTI in DTI prediction tasks when compared to SOTA methods. The source code of CHL-DTI is available at https://github.com/UPCLyy/CHL-DTI .
识别药物-靶标相互作用 (DTI) 是药物发现领域的一个关键要素。传统的生物学湿实验虽然有价值,但作为方法来说既耗时又昂贵。最近,基于网络学习的计算方法通过有效的拓扑特征提取显示出了巨大的优势,引起了广泛的研究关注。然而,大多数现有的基于网络的学习方法仅考虑单个药物和靶标之间的低阶二元相关性,忽略了来自多个药物和靶标潜在的高阶相关信息。高阶信息作为一个重要组成部分,与低阶信息具有互补性。因此,在预测药物-靶标相互作用时,将药物和靶标之间的高阶关联纳入其中,同时充分整合现有的低阶信息,可能会取得重大突破。我们提出了一种新颖的双通道基于网络的学习模型 CHL-DTI,用于药物-靶标相互作用预测,该模型从超图中汇聚高阶信息,从普通图中汇聚低阶信息。CHL-DTI 中高低阶信息的汇聚体现在两个关键方面。首先,在特征提取阶段,模型通过结合超图和普通图来整合高阶语义信息和低阶拓扑信息。其次,CHL-DTI 充分融合了创新的引入的药物-蛋白对 (DPP) 超图网络结构与普通拓扑网络结构信息。在三个公共数据集上进行的广泛实验表明,与 SOTA 方法相比,CHL-DTI 在 DTI 预测任务中具有优越的性能。CHL-DTI 的源代码可在 https://github.com/UPCLyy/CHL-DTI 上获得。