用于药物警戒的电子健康记录中临床事件的时间加权

Jing Zhao
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引用次数: 16

摘要

电子健康记录(EHRs)最近被确定为监测药物不良事件(ADEs)的潜在有价值的来源。然而,在电子病历中,ADEs的报告严重不足。使用机器学习算法自动检测应该在健康记录中报告ade的患者是一种高效且有效的解决方案。为此面临的挑战之一是如何在使用临床事件时考虑到时间性,这些临床事件在电子病历中有时间戳,作为机器学习算法可以利用的特征。先前关于该主题的研究表明,将电子病历数据表示为一袋时间加权的临床事件是有希望的;然而,如何以最优方式分配权重仍未得到探索。在这项研究中,提出了九种不同的时间加权策略,并使用从瑞典EHR数据库中提取的数据进行了评估,其中比较了随机森林学习算法构建的模型的预测性能。此外,我们还分析了变量重要性,以更深入地了解为什么某种权重策略比另一种更受青睐,以及在各种权重策略下,哪些临床事件的重要性变化最大。结果表明,加权策略的选择对ADE检测的预测性能有显著影响,并且加权策略的最佳选择取决于目标ADE,特别是其剂量依赖性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal weighting of clinical events in electronic health records for pharmacovigilance
Electronic health records (EHRs) have recently been identified as a potentially valuable source for monitoring adverse drug events (ADEs). However, ADEs are heavily under-reported in EHRs. Using machine learning algorithms to automatically detect patients that should have had ADEs reported in their health records is an efficient and effective solution. One of the challenges to that end is how to take into account temporality when using clinical events, which are time stamped in EHRs, as features for machine learning algorithms to exploit. Previous research on this topic suggests that representing EHR data as a bag of temporally weighted clinical events is promising; however, how to assign weights in an optimal manner remains unexplored. In this study, nine different temporal weighting strategies are proposed and evaluated using data extracted from a Swedish EHR database, where the predictive performance of models constructed with the random forest learning algorithm is compared. Moreover, variable importance is analyzed to obtain a deeper understanding as to why a certain weighting strategy is favored over another, as well as which clinical events undergo the biggest changes in importance with the various weighting strategies. The results show that the choice of weighting strategy has a significant impact on the predictive performance for ADE detection, and that the best choice of weighting strategy depends on the target ADE and, specifically, on its dose-dependency.
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