Interactive multi-hypergraph inferring and channel-enhanced and attribute-enhanced learning for drug-related side effect prediction

IF 7 2区 医学 Q1 BIOLOGY Computers in biology and medicine Pub Date : 2024-11-08 DOI:10.1016/j.compbiomed.2024.109321
Ping Xuan , Shien Wu , Hui Cui , Peiru Li , Toshiya Nakaguchi , Tiangang Zhang
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Abstract

Identifying the potential side effects for the interested drugs can help reduce harm to patients caused by drugs in clinical use and decrease the risk of drug development failure. Multiple functionally similar drugs often have multiple similar side effects, resulting in the closed relationships among these nodes. However, most of previous methods did not completely encode the features from the biological perspective to mine the complex associations between the drugs and side effects. A prediction model based on interactive multi-hypergraph inferring and channel-enhanced and attribute-enhanced learning, ICAL, was proposed to fuse the global correlations reflected by multiple hypergraphs and to learn the attributes of a pair of drug and side effect nodes enhanced by the channels and attributes. First, we designed a hypergraph architecture where a hyperedge reflects the complex correlations between a single drug (side effect) and all the drugs and side effects, and the entire hypergraph composed of the hyperedges reveals the global correlations of all the drugs and side effects. Two hypergraphs were established based on two types of drug similarities, and each hypergraph implies its specific complex relationships among multiple drugs and side effects. Second, we proposed an interactive hypergraph neural network to enable the learning of global correlation features of drugs and side effects from the two hypergraphs. It propagated the node features across multiple hypergraphs and encoded the context relationships within these hypergraphs. Besides, the attentions at the channel level and at the attribute level were proposed to integrate the semantic correlations among multiple channels and to encode the long-distance dependence within the attributes of a pair of drug and side effect. The experimental results based on cross-validation showed that our new model outperformed seven advanced prediction methods in terms of AUC, AUPR, and recall rates for the top-ranked candidates. The ablation studies showed the effectiveness of global correlation learning, node feature propagation across multiple hypergraphs, and channel and attribute enhanced pairwise attribute learning. The case studies on the candidate side effects related to five drugs further demonstrated ICAL’s effective application in discovering the reliable candidates.
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用于药物相关副作用预测的交互式多过图推断以及通道增强和属性增强学习。
识别相关药物的潜在副作用有助于减少临床用药对患者造成的伤害,降低药物研发失败的风险。多种功能相似的药物往往具有多种相似的副作用,从而形成这些节点之间的封闭关系。然而,以往的方法大多没有从生物学角度对特征进行完整编码,无法挖掘出药物与副作用之间的复杂关联。我们提出了一种基于交互式多超图推断和通道增强与属性增强学习的预测模型--ICAL,以融合多个超图所反映的全局相关性,并通过通道和属性增强学习一对药物和副作用节点的属性。首先,我们设计了一个超图结构,其中一个超边反映了单个药物(副作用)与所有药物和副作用之间的复杂相关性,由超边组成的整个超图揭示了所有药物和副作用的全局相关性。根据两类药物的相似性建立了两个超图,每个超图都暗示了多种药物和副作用之间特定的复杂关系。其次,我们提出了一种交互式超图神经网络,以便从两个超图中学习药物和副作用的全局相关性特征。它在多个超图中传播节点特征,并对这些超图中的上下文关系进行编码。此外,还提出了通道层和属性层的关注点,以整合多个通道之间的语义相关性,并编码药物和副作用属性对中的远距离依赖关系。基于交叉验证的实验结果表明,我们的新模型在AUC、AUPR和排名靠前的候选者的召回率方面均优于七种先进的预测方法。消融研究显示了全局相关性学习、跨多个超图的节点特征传播以及通道和属性增强型成对属性学习的有效性。与五种药物相关的候选副作用案例研究进一步证明了 ICAL 在发现可靠候选药物方面的有效应用。
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来源期刊
Computers in biology and medicine
Computers in biology and medicine 工程技术-工程:生物医学
CiteScore
11.70
自引率
10.40%
发文量
1086
审稿时长
74 days
期刊介绍: Computers in Biology and Medicine is an international forum for sharing groundbreaking advancements in the use of computers in bioscience and medicine. This journal serves as a medium for communicating essential research, instruction, ideas, and information regarding the rapidly evolving field of computer applications in these domains. By encouraging the exchange of knowledge, we aim to facilitate progress and innovation in the utilization of computers in biology and medicine.
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