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首页> 外文期刊>Journal of the American Medical Informatics Association : >A chronological pharmacovigilance network analytics approach for predicting adverse drug events
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A chronological pharmacovigilance network analytics approach for predicting adverse drug events

机译:一种按时间顺序药种网络分析方法预测不良药物事件

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Objectives: This study extends prior research by combining a chronological pharmacovigilance network approach with machine-learning (ML) techniques to predict adverse drug events (ADEs) based on the drugs’ similarities in terms of the proteins they target in the human body. The focus of this research, though, is particularly centered on predicting the drug-ADE associations for a set of 8 common and high-risk ADEs. Materials and methods: large collection of annotated MEDLINE biomedical articles was used to construct a drug-ADE network, and the network was further equipped with information about drugs’ target proteins. Several network metrics were extracted and used as predictors in ML algorithms to predict the existence of network edges (ie, associations or relationships). Results: Gradient boosted trees (GBTs) as an ensemble ML algorithm outperformed other prediction methods in identifying the drug-ADE associations with an overall accuracy of 92.8% on the validation sample. The prediction model was able to predict drug-ADE associations, on average, 3.84 years earlier than they were actually mentioned in the biomedical literature. Conclusion: While network analysis and ML techniques were used in separation in prior ADE studies, our results showed that they, in combination with each other, can boost the power of one another and predict better. Moreover, our results highlight the superior capability of ensemble-type ML methods in capturing drug-ADE patterns compared to the regular (ie, singular), ML algorithms.
机译:目的:本研究通过结合机器学习(ML)技术的时间按时间学习(ML)技术来延伸先前的研究,以在人体中靶向的蛋白质中基于药物的相似性来预测不利的药物事件(ades)。然而,本研究的重点特别是预测一组8种常见和高风险的含量的药物 - Ade关联。材料和方法:采用大集合注释的Medline生物医学制品来构建药物 - ADE网络,网络进一步配备有关药物靶蛋白的信息。提取几个网络度量标准并用作ML算法中的预测器,以预测网络边的存在(即,关联或关系)。结果:梯度提高树木(GBT)作为集合ML算法优于识别药物 - ADE关联的其他预测方法,在验证样本上的整体精度为92.8%。预测模型能够平均预测药物ade关联,平均比生物医学文献中的实际提到3.84年。结论:虽然在优先于ADE研究中分离的网络分析和ML技术,但我们的结果表明,它们与彼此相结合,可以互相提高彼此的力量并更好地预测。此外,与常规(即奇异),ML算法相比,我们的结果突出了捕获药物 - ade图案中的集合型ML方法的优异能力。

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