使用机器学习预测患者在未被发现的情况下离开的风险:一项针对单个过度拥挤的急诊科的回顾性研究。

IF 2.3 3区 医学 Q1 EMERGENCY MEDICINE
Arianna Scala, Teresa Angela Trunfio, Massimo Majolo, Michelangelo Chiacchio, Giuseppe Russo, Paolo Montuori, Giovanni Improta
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引用次数: 0

摘要

急诊科(ED)过度拥挤已成为医院管理的一个关键问题,导致患者等待时间增加,个人离开的比率更高(LWBS)。本研究旨在确定影响LWBS率的关键因素,并利用机器学习(ML)技术开发预测模型。回顾性分析了2019年至2023年意大利托雷德尔格列科马雷斯卡医院记录的80,614例急诊科就诊情况。进行统计分析以检验患者特征、操作变量和LWBS发生率之间的相关性。四种机器学习分类算法——随机森林、Naïve贝叶斯、决策树和逻辑回归——对其预测能力进行了评估。随机森林在少数族裔中表现出最高的表现,达到了72%的总体准确率。功能重要性分析强调了等待时间、分诊分数和访问模式作为重要的预测因素。这些发现表明,预测模型可以支持医院资源规划和患者流量管理策略,以降低LWBS率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting patient risk of leaving without being seen using machine learning: a retrospective study in a single overcrowded emergency department.

Emergency department (ED) overcrowding has become a critical issue in hospital management, leading to increased patient wait times and higher rates of individuals leaving without being seen (LWBS). This study aims to identify key factors influencing LWBS rates and to develop a predictive model using machine learning (ML) techniques. A retrospective analysis was conducted on 80,614 ED visits recorded at Maresca Hospital in Torre del Greco, Italy, between 2019 and 2023. Statistical analyses were performed to examine correlations between patient characteristics, operational variables, and LWBS occurrences. Four ML classification algorithms-Random Forest, Naïve Bayes, Decision Tree, and Logistic Regression-were evaluated for their predictive capabilities. Random Forest demonstrated the highest performance on the minority class, achieving an overall accuracy of 72%. Feature importance analysis highlighted waiting time, triage score, and access mode as significant predictors. These findings suggest that predictive modeling may support hospital resource planning and patient flow management strategies to reduce LWBS rates.

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来源期刊
BMC Emergency Medicine
BMC Emergency Medicine Medicine-Emergency Medicine
CiteScore
3.50
自引率
8.00%
发文量
178
审稿时长
29 weeks
期刊介绍: BMC Emergency Medicine is an open access, peer-reviewed journal that considers articles on all urgent and emergency aspects of medicine, in both practice and basic research. In addition, the journal covers aspects of disaster medicine and medicine in special locations, such as conflict areas and military medicine, together with articles concerning healthcare services in the emergency departments.
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