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利用深度神经网络预测遗传易感性导致的药物不良反应。

Prediction of adverse drug reactions due to genetic predisposition using deep neural networks.

机构信息

INSERM U1133, CNRS UMR 8251, Université Paris Cité, 35 rue Hélène Brion, Paris, 75013, France.

出版信息

Mol Inform. 2024 Jun;43(6):e202400021. doi: 10.1002/minf.202400021. Epub 2024 Jun 8.

Abstract

Drug development is a long and costly process, often limited by the toxicity and adverse drug reactions (ADRs) caused by drug candidates. Even on the market, some drugs can cause strong ADRs that can vary depending on an individual polymorphism. The development of Genome-wide association studies (GWAS) allowed the discovery of genetic variants of interest that may cause these effects. In this study, the objective was to investigate a deep learning approach to predict genetic variations potentially related to ADRs. We used single nucleotide polymorphisms (SNPs) information from dbSNP to create a network based on ADR-drug-target-mutations and extracted matrixes of interaction to build deep Neural Networks (DNN) models. Considering only information about mutations known to impact drug efficacy and drug safety from PharmGKB and drug adverse reactions based on the MedDRA System Organ Classes (SOCs), these DNN models reached a balanced accuracy of 0.61 in average. Including molecular fingerprints representing structural features of the drugs did not improve the performance of the models. To our knowledge, this is the first model that exploits DNN to predict ADR-drug-target-mutations. Although some improvements are suggested, these models can be of interest to analyze multiple compounds over all of the genes and polymorphisms information accessible and thus pave the way in precision medicine.

摘要

药物研发是一个漫长而昂贵的过程,通常受到候选药物的毒性和不良反应 (ADR) 的限制。即使在市场上,一些药物也会引起强烈的 ADR,这些 ADR 可能因个体多态性而异。全基因组关联研究 (GWAS) 的发展使得能够发现可能导致这些效应的遗传变异。在这项研究中,我们的目的是研究一种预测与 ADR 相关的遗传变异的深度学习方法。我们使用来自 dbSNP 的单核苷酸多态性 (SNP) 信息,基于 ADR-药物-靶标-突变创建一个网络,并提取相互作用矩阵来构建深度神经网络 (DNN) 模型。仅考虑来自 PharmGKB 的已知影响药物疗效和药物安全性的突变信息和基于 MedDRA 系统器官类别 (SOC) 的药物不良反应信息,这些 DNN 模型的平均平衡准确率达到 0.61。包括代表药物结构特征的分子指纹并没有提高模型的性能。据我们所知,这是第一个利用 DNN 预测 ADR-药物-靶标-突变的模型。尽管提出了一些改进建议,但这些模型可以用于分析所有基因和多态性信息中多个化合物,从而为精准医学铺平道路。

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