Assessing Revisit Risk in Emergency Department Patients: Machine Learning Approach.

IF 2
JMIR AI Pub Date : 2025-08-07 DOI:10.2196/74053
Wang-Chuan Juang, Zheng-Xun Cai, Chia-Mei Chen, Zhi-Hong You
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引用次数: 0

Abstract

Background: Overcrowded emergency rooms might degrade the quality of care and overload the clinic staff. Assessing unscheduled return visits (URVs) to the emergency department (ED) is a quality assurance procedure to identify ED-discharged patients with a high likelihood of bounce-back, to ensure patient safety, and ultimately to reduce medical costs by decreasing the frequency of URVs. The field of machine learning (ML) has evolved considerably in the past decades, and many ML applications have been deployed in various contexts.

Objective: This study aims to develop an ML-assisted framework that identifies high-risk patients who may revisit the ED within 72 hours after the initial visit. Furthermore, this study evaluates different ML models, feature sets, and feature encoding methods in order to build an effective prediction model.

Methods: This study proposes an ML-assisted system that extracts the features from both structured and unstructured medical data to predict patients who are likely to revisit the ED, where the structured data includes patients' electronic health records, and the unstructured data is their medical notes (subjective, objective, assessment, and plan). A 5-year dataset consisting of 184,687 ED visits, along with 324,111 historical electronic health records and the associated medical notes, was obtained from Kaohsiung Veterans General Hospital, a tertiary medical center in Taiwan, to evaluate the proposed system.

Results: The evaluation results indicate that incorporating convolutional neural network-based feature extraction from unstructured ED physician narrative notes, combined with structured vital signs and demographic data, significantly enhances predictive performance. The proposed approach achieves an area under the receiver operating characteristic curve of 0.705 and a recall of 0.718, demonstrating its effectiveness in predicting URVs. These findings highlight the potential of integrating structured and unstructured clinical data to improve predictive accuracy in this context.

Conclusions: The study demonstrates that an ML-assisted framework may be applied as a decision support tool to assist ED clinicians in identifying revisiting patients, although the model's performance may not be sufficient for clinic implementation. Given the improvement in the area under the receiver operating characteristic curve, the proposed framework should be further explored as a workable decision support tool to pinpoint ED patients with a high risk of revisit and provide them with appropriate and timely care.

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评估急诊科患者重访风险:机器学习方法。
背景:过度拥挤的急诊室可能会降低护理质量并使诊所工作人员超负荷。评估急诊部(ED)的非计划回访(URVs)是一种质量保证程序,用于识别急诊出院后极有可能反弹的患者,确保患者安全,并最终通过减少URVs的频率来降低医疗成本。在过去的几十年里,机器学习(ML)领域已经有了很大的发展,许多ML应用程序已经部署在各种环境中。目的:本研究旨在开发一种机器学习辅助框架,以识别可能在初次就诊后72小时内再次就诊的高危患者。此外,本研究评估了不同的机器学习模型、特征集和特征编码方法,以建立有效的预测模型。方法:本研究提出了一个机器学习辅助系统,该系统从结构化和非结构化医疗数据中提取特征,以预测可能再次访问急诊科的患者,其中结构化数据包括患者的电子健康记录,非结构化数据是他们的医疗记录(主观、客观、评估和计划)。从台湾三级医疗中心高雄退伍军人总医院获得了一个5年的数据集,包括184,687次急诊科就诊,以及324,111份历史电子健康记录和相关医疗记录,以评估所提出的系统。结果:评估结果表明,将基于卷积神经网络的特征提取从非结构化的急诊科医生叙述笔记中提取,并结合结构化的生命体征和人口统计数据,显著提高了预测性能。该方法在接收者工作特征曲线下的面积为0.705,召回率为0.718,证明了该方法预测urv的有效性。这些发现强调了整合结构化和非结构化临床数据以提高这种情况下预测准确性的潜力。结论:该研究表明,ml辅助框架可以作为一种决策支持工具,帮助急诊科医生识别重访患者,尽管该模型的性能可能不足以用于临床实施。鉴于接受者工作特征曲线下面积的改善,建议的框架应进一步探索作为一种可行的决策支持工具,以确定有重访风险的ED患者,并为他们提供适当和及时的护理。
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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