Xinjiang Technical Institute of Physics and Chemistry, Chinese Academy of Sciences, Urumqi 830011, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Brief Bioinform. 2022 May 13;23(3). doi: 10.1093/bib/bbac140.
Drug-drug interactions (DDIs) are known as the main cause of life-threatening adverse events, and their identification is a key task in drug development. Existing computational algorithms mainly solve this problem by using advanced representation learning techniques. Though effective, few of them are capable of performing their tasks on biomedical knowledge graphs (KGs) that provide more detailed information about drug attributes and drug-related triple facts. In this work, an attention-based KG representation learning framework, namely DDKG, is proposed to fully utilize the information of KGs for improved performance of DDI prediction. In particular, DDKG first initializes the representations of drugs with their embeddings derived from drug attributes with an encoder-decoder layer, and then learns the representations of drugs by recursively propagating and aggregating first-order neighboring information along top-ranked network paths determined by neighboring node embeddings and triple facts. Last, DDKG estimates the probability of being interacting for pairwise drugs with their representations in an end-to-end manner. To evaluate the effectiveness of DDKG, extensive experiments have been conducted on two practical datasets with different sizes, and the results demonstrate that DDKG is superior to state-of-the-art algorithms on the DDI prediction task in terms of different evaluation metrics across all datasets.
药物-药物相互作用(DDI)是已知的危及生命的不良事件的主要原因,其识别是药物开发的关键任务。现有的计算算法主要通过使用先进的表示学习技术来解决这个问题。虽然有效,但它们很少能够在提供有关药物属性和药物相关三元事实的更详细信息的生物医学知识图(KG)上执行其任务。在这项工作中,提出了一种基于注意力的 KG 表示学习框架,即 DDKG,以充分利用 KGs 的信息,提高 DDI 预测的性能。具体来说,DDKG 首先使用来自药物属性的嵌入初始化药物的表示,然后通过递归地沿着由邻接节点嵌入和三元事实确定的顶级网络路径传播和聚合一阶邻域信息来学习药物的表示。最后,DDKG 以端到端的方式使用它们的表示来估计成对药物相互作用的概率。为了评估 DDKG 的有效性,在两个具有不同大小的实际数据集上进行了广泛的实验,结果表明,在所有数据集的不同评估指标方面,DDKG 在 DDI 预测任务上优于最先进的算法。