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基于关系图卷积网络和多头注意力的药物组合风险水平的准确预测。

Accurate prediction of drug combination risk levels based on relational graph convolutional network and multi-head attention.

机构信息

School of Information Science and Technology, Yunnan Normal University, Kunming, 650500, China.

Engineering Research Center of Computer Vision and Intelligent Control Technology, Department of Education, Kunming, 650500, China.

出版信息

J Transl Med. 2024 Jun 16;22(1):572. doi: 10.1186/s12967-024-05372-8.

Abstract

BACKGROUND

Accurately identifying the risk level of drug combinations is of great significance in investigating the mechanisms of combination medication and adverse reactions. Most existing methods can only predict whether there is an interaction between two drugs, but cannot directly determine their accurate risk level.

METHODS

In this study, we propose a multi-class drug combination risk prediction model named AERGCN-DDI, utilizing a relational graph convolutional network with a multi-head attention mechanism. Drug-drug interaction events with varying risk levels are modeled as a heterogeneous information graph. Attribute features of drug nodes and links are learned based on compound chemical structure information. Finally, the AERGCN-DDI model is proposed to predict drug combination risk level based on heterogenous graph neural network and multi-head attention modules.

RESULTS

To evaluate the effectiveness of the proposed method, five-fold cross-validation and ablation study were conducted. Furthermore, we compared its predictive performance with baseline models and other state-of-the-art methods on two benchmark datasets. Empirical studies demonstrated the superior performances of AERGCN-DDI.

CONCLUSIONS

AERGCN-DDI emerges as a valuable tool for predicting the risk levels of drug combinations, thereby aiding in clinical medication decision-making, mitigating severe drug side effects, and enhancing patient clinical prognosis.

摘要

背景

准确识别药物组合的风险水平对于研究联合用药的机制和不良反应具有重要意义。大多数现有方法只能预测两种药物之间是否存在相互作用,但不能直接确定它们的准确风险水平。

方法

在这项研究中,我们提出了一种名为 AERGCN-DDI 的多类药物组合风险预测模型,利用具有多头注意力机制的关系图卷积网络。将具有不同风险水平的药物-药物相互作用事件建模为异构信息图。基于化合物化学结构信息,学习药物节点和链接的属性特征。最后,提出 AERGCN-DDI 模型,基于异构图神经网络和多头注意力模块来预测药物组合风险水平。

结果

为了评估所提出方法的有效性,进行了五重交叉验证和消融研究。此外,我们还在两个基准数据集上与基线模型和其他最先进的方法进行了预测性能比较。实证研究证明了 AERGCN-DDI 的优越性能。

结论

AERGCN-DDI 是一种有价值的药物组合风险水平预测工具,有助于临床用药决策、减轻严重药物副作用和提高患者临床预后。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e5a/11180398/5991b7eb959d/12967_2024_5372_Fig1_HTML.jpg

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