Brief Funct Genomics. 2022 May 21;21(3):216-229. doi: 10.1093/bfgp/elac004.
The way of co-administration of drugs is a sensible strategy for treating complex diseases efficiently. Because of existing massive unknown interactions among drugs, predicting potential adverse drug-drug interactions (DDIs) accurately is promotive to prevent unanticipated interactions, which may cause significant harm to patients. Currently, numerous computational studies are focusing on potential DDIs prediction on account of traditional experiments in wet lab being time-consuming, labor-consuming, costly and inaccurate. These approaches performed well; however, many approaches did not consider multi-scale features and have the limitation that they cannot predict interactions among novel drugs. In this paper, we proposed a model of BioDKG-DDI, which integrates multi-feature with biochemical information to predict potential DDIs through an attention machine with superior performance. Molecular structure features, representation of drug global association using drug knowledge graph (DKG) and drug functional similarity features are fused by attention machine and predicted through deep neural network. A novel negative selecting method is proposed to certify the robustness and stability of our method. Then, three datasets with different sizes are used to test BioDKG-DDI. Furthermore, the comparison experiments and case studies can demonstrate the reliability of our method. Upon our finding, BioDKG-DDI is a robust, yet simple method and can be used as a benefic supplement to the experimental process.
联合用药是一种高效治疗复杂疾病的合理策略。由于药物之间存在大量未知的相互作用,准确预测潜在的药物-药物相互作用(DDI)有助于预防意外的相互作用,这些相互作用可能对患者造成严重的伤害。目前,由于传统的湿实验室实验既耗时、又费力、成本高且不准确,因此许多计算研究都集中在潜在的 DDI 预测上。这些方法表现良好;然而,许多方法没有考虑多尺度特征,并且具有不能预测新型药物之间相互作用的局限性。在本文中,我们提出了一种 BioDKG-DDI 模型,该模型通过具有优异性能的注意力机制,将多特征与生化信息相结合,预测潜在的 DDI。通过注意力机制融合分子结构特征、使用药物知识图谱(DKG)表示药物全局关联和药物功能相似性特征,并通过深度神经网络进行预测。提出了一种新的负选择方法来验证我们方法的鲁棒性和稳定性。然后,使用三个具有不同大小的数据集来测试 BioDKG-DDI。此外,对比实验和案例研究可以证明我们方法的可靠性。根据我们的发现,BioDKG-DDI 是一种稳健而简单的方法,可以作为实验过程的有益补充。