Department of Computer Science at Harbin Institute of Technology. He currently works as a bioinformatician in Beth Israel Deaconess Medical Center.
Department of Life Science at Harbin Institute of Technology. His expertise is bioinformatics.
Brief Bioinform. 2021 Mar 22;22(2):2141-2150. doi: 10.1093/bib/bbaa044.
Identification of new drug-target interactions (DTIs) is an important but a time-consuming and costly step in drug discovery. In recent years, to mitigate these drawbacks, researchers have sought to identify DTIs using computational approaches. However, most existing methods construct drug networks and target networks separately, and then predict novel DTIs based on known associations between the drugs and targets without accounting for associations between drug-protein pairs (DPPs). To incorporate the associations between DPPs into DTI modeling, we built a DPP network based on multiple drugs and proteins in which DPPs are the nodes and the associations between DPPs are the edges of the network. We then propose a novel learning-based framework, 'graph convolutional network (GCN)-DTI', for DTI identification. The model first uses a graph convolutional network to learn the features for each DPP. Second, using the feature representation as an input, it uses a deep neural network to predict the final label. The results of our analysis show that the proposed framework outperforms some state-of-the-art approaches by a large margin.
识别新的药物-靶标相互作用(DTIs)是药物发现过程中的一个重要但耗时且昂贵的步骤。近年来,为了减轻这些缺点,研究人员寻求使用计算方法来识别 DTIs。然而,大多数现有的方法分别构建药物网络和靶标网络,然后基于药物和靶标之间的已知关联来预测新的 DTIs,而不考虑药物-蛋白对(DPP)之间的关联。为了将 DPP 之间的关联纳入 DTI 建模,我们构建了一个基于多种药物和蛋白质的 DPP 网络,其中 DPP 是节点,网络的边是 DPP 之间的关联。然后,我们提出了一种新的基于学习的框架“图卷积网络(GCN)-DTI”,用于 DTI 识别。该模型首先使用图卷积网络学习每个 DPP 的特征。其次,它使用特征表示作为输入,使用深度神经网络来预测最终标签。我们的分析结果表明,所提出的框架大大优于一些最先进的方法。