The use of artificial intelligence to optimize medication alerts generated by clinical decision support systems: a scoping review.

Jetske Graafsma, Rachel M Murphy, E. M. van de Garde, Fatma Karapinar-Carkıt, H. J. Derijks, Rien H L Hoge, Joanna E Klopotowska, Patricia M. L. A. van den Bemt
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Abstract

OBJECTIVE Current Clinical Decision Support Systems (CDSSs) generate medication alerts that are of limited clinical value, causing alert fatigue. Artificial Intelligence (AI)-based methods may help in optimizing medication alerts. Therefore, we conducted a scoping review on the current state of the use of AI to optimize medication alerts in a hospital setting. Specifically, we aimed to identify the applied AI methods used together with their performance measures and main outcome measures. MATERIALS AND METHODS We searched Medline, Embase, and Cochrane Library database on May 25, 2023 for studies of any quantitative design, in which the use of AI-based methods was investigated to optimize medication alerts generated by CDSSs in a hospital setting. The screening process was supported by ASReview software. RESULTS Out of 5625 citations screened for eligibility, 10 studies were included. Three studies (30%) reported on both statistical performance and clinical outcomes. The most often reported performance measure was positive predictive value ranging from 9% to 100%. Regarding main outcome measures, alerts optimized using AI-based methods resulted in a decreased alert burden, increased identification of inappropriate or atypical prescriptions, and enabled prediction of user responses. In only 2 studies the AI-based alerts were implemented in hospital practice, and none of the studies conducted external validation. DISCUSSION AND CONCLUSION AI-based methods can be used to optimize medication alerts in a hospital setting. However, reporting on models' development and validation should be improved, and external validation and implementation in hospital practice should be encouraged.
使用人工智能优化临床决策支持系统生成的用药提醒:范围综述。
目的目前的临床决策支持系统(CDSS)生成的药物警报临床价值有限,会造成警报疲劳。基于人工智能(AI)的方法可能有助于优化用药提示。因此,我们对在医院环境中使用人工智能优化用药提醒的现状进行了一次范围审查。材料与方法 我们于 2023 年 5 月 25 日在 Medline、Embase 和 Cochrane 图书馆数据库中搜索了任何定量设计的研究,这些研究调查了基于人工智能的方法在医院环境中如何优化 CDSS 生成的用药提示。筛选过程由 ASReview 软件支持。结果在筛选出的 5625 条符合条件的引文中,共纳入了 10 项研究。三项研究(30%)同时报告了统计性能和临床结果。最常报告的性能指标是阳性预测值,从 9% 到 100% 不等。在主要结果指标方面,使用基于人工智能的方法对警报进行优化可减少警报负担,提高对不适当或非典型处方的识别率,并能预测用户反应。只有 2 项研究在医院实践中实施了基于人工智能的警报,而且没有一项研究进行了外部验证。讨论与结论 基于人工智能的方法可用于优化医院环境中的用药警报。然而,应改进模型开发和验证的报告,并鼓励在医院实践中进行外部验证和实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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