A  substructure‐aware graph neural network incorporating relation features for drug–drug interaction prediction

Liangcheng Dong, Baoming Feng, Zengqian Deng, Jinlong Wang, Peihao Ni, Yuanyuan Zhang
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Abstract

Identifying drug–drug interactions (DDIs) is an important aspect of drug design research, and predicting DDIs serves as a crucial guarantee for avoiding potential adverse effects. Current substructure‐based prediction methods still have some limitations: (i) The process of substructure extraction does not fully exploit the graph structure information of drugs, as it only evaluates the importance of different radius substructures from a single perspective. (ii) The process of constructing drug representations has overlooked the significant impact of relation embedding on optimizing drug representations. In this work, we propose a substructure‐aware graph neural network incorporating relation features (RFSA‐DDI) for DDI prediction, which introduces a directed message passing neural network with substructure attention mechanism based on graph self‐adaptive pooling (GSP‐DMPNN) and a substructure‐aware interaction module incorporating relation features (RSAM). GSP‐DMPNN utilizes graph self‐adaptive pooling to comprehensively consider node features and local drug information for adaptive extraction of substructures. RSAM interacts drug features with relation representations to enhance their respective features individually, highlighting substructures that significantly impact predictions. RFSA‐DDI is evaluated on two real‐world datasets. Compared to existing methods, RFSA‐DDI demonstrates certain advantages in both transductive and inductive settings, effectively handling the task of predicting DDIs for unseen drugs and exhibiting good generalization capability. The experimental results show that RFSA‐DDI can effectively capture valuable structural information of drugs more accurately for DDI prediction, and provide more reliable assistance for potential DDIs detection in drug development and treatment stages.
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结合关系特征的亚结构感知图神经网络用于药物相互作用预测
识别药物间相互作用(DDIs)是药物设计研究的一个重要方面,而预测 DDIs 则是避免潜在不良反应的重要保证。目前基于亚结构的预测方法仍存在一些局限性:(i) 亚结构提取过程没有充分利用药物的图结构信息,因为它只是从单一角度评估不同半径亚结构的重要性。(ii) 构建药物表征的过程忽略了关系嵌入对优化药物表征的重要影响。在这项工作中,我们提出了一种结合关系特征的亚结构感知图神经网络(RFSA-DDI)用于 DDI 预测,该网络引入了基于图自适应池的具有亚结构关注机制的有向消息传递神经网络(GSP-DMPNN)和结合关系特征的亚结构感知交互模块(RSAM)。GSP-DMPNN 利用图自适应池综合考虑节点特征和本地药物信息,以自适应提取子结构。RSAM 将药物特征与关系表征相互作用,单独增强各自的特征,突出对预测有重大影响的子结构。RFSA-DDI 在两个实际数据集上进行了评估。与现有方法相比,RFSA-DDI 在转导和归纳环境中都表现出一定的优势,能有效处理预测未见药物的 DDI 任务,并表现出良好的泛化能力。实验结果表明,RFSA-DDI 能有效捕获药物的宝贵结构信息,更准确地进行 DDI 预测,为药物研发和治疗阶段的潜在 DDIs 检测提供更可靠的帮助。
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Deterministic modelling of asymptomatic spread and disease stage progression in vaccine preventable infectious diseases Perspectives on benchmarking foundation models for network biology In silico designing and optimization of anti‐epidermal growth factor receptor scaffolds by complementary‐determining regions‐grafting technique Mathematical modeling of evolution of cell networks in epithelial tissues A  substructure‐aware graph neural network incorporating relation features for drug–drug interaction prediction
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