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基于半隐式图变分自动编码器的药物副作用预测。

Polypharmacy side effect prediction based on semi-implicit graph variational auto-encoder.

机构信息

College of Information Science and Engineering, Hunan Normal University, Changsha 410081, P. R. China.

Key Laboratory of Computing and Stochastic, Mathematics (LCSM), (Ministry of Education), School of Mathematics and Statistics, Changsha 410081, P. R. China.

出版信息

J Bioinform Comput Biol. 2024 Aug;22(4):2450020. doi: 10.1142/S0219720024500203. Epub 2024 Sep 12.

Abstract

Polypharmacy, the use of drug combinations, is an effective approach for treating complex diseases, but it increases the risk of adverse effects. To predict novel polypharmacy side effects based on known ones, many computational methods have been proposed. However, most of them generate deterministic low-dimensional embeddings when modeling the latent space of drugs, which cannot effectively capture potential side effect associations between drugs. In this study, we present SIPSE, a novel approach for predicting polypharmacy side effects. SIPSE integrates single-drug side effect information and drug-target protein data to construct novel drug feature vectors. Leveraging a semi-implicit graph variational auto-encoder, SIPSE models known polypharmacy side effects and generates flexible latent distributions for drug nodes. SIPSE infers the current node distribution by combining the distributions of neighboring nodes with embedding noise. By sampling node embeddings from these distributions, SIPSE effectively predicts polypharmacy side effects between drugs. One key innovation of SIPSE is its incorporation of uncertainty propagation through noise embedding and neighborhood sharing, enhancing its graph analysis capabilities. Extensive experiments on a benchmark dataset of polypharmacy side effects demonstrated that SIPSE significantly outperformed five state-of-the-art methods in predicting polypharmacy side effects.

摘要

药物联合使用(即复方用药)是治疗复杂疾病的有效方法,但会增加不良反应的风险。为了基于已知的药物副作用来预测新的复方用药副作用,已经提出了许多计算方法。然而,大多数方法在对药物的潜在空间进行建模时生成确定性的低维嵌入,无法有效捕捉药物之间潜在的副作用关联。在这项研究中,我们提出了 SIPSE,这是一种预测复方用药副作用的新方法。SIPSE 整合了单药副作用信息和药物 - 靶蛋白数据,构建了新的药物特征向量。利用半隐式图变分自动编码器,SIPSE 对已知的复方用药副作用进行建模,并为药物节点生成灵活的潜在分布。SIPSE 通过将邻接节点的分布与嵌入噪声相结合来推断当前节点的分布。通过从这些分布中采样节点嵌入,SIPSE 可以有效地预测药物之间的复方用药副作用。SIPSE 的一个关键创新是通过噪声嵌入和邻域共享来传播不确定性,从而增强了其图分析能力。在复方用药副作用的基准数据集上进行的广泛实验表明,SIPSE 在预测复方用药副作用方面明显优于五种最先进的方法。

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