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使用机器学习算法对单一中心研究中的急诊科弃诊率进行调查。

Investigation of emergency department abandonment rates using machine learning algorithms in a single centre study.

机构信息

Department of Public Health, University of Naples "Federico II", Naples, Italy.

Department of Advanced Biomedical Sciences, University of Naples "Federico II", Naples, Italy.

出版信息

Sci Rep. 2024 Aug 22;14(1):19513. doi: 10.1038/s41598-024-70545-w.

Abstract

A critical problem that Emergency Departments (EDs) must address is overcrowding, as it causes extended waiting times and increased patient dissatisfaction, both of which are immediately linked to a greater number of patients who leave the ED early, without any evaluation by a healthcare provider (Leave Without Being Seen, LWBS). This has an impact on the hospital in terms of missing income from lost opportunities to offer treatment and, in general, of negative outcomes from the ED process. Consequently, healthcare managers must be able to forecast and control patients who leave the ED without being evaluated in advance. This study is a retrospective analysis of patients registered at the ED of the "San Giovanni di Dio e Ruggi d'Aragona" University Hospital of Salerno (Italy) during the years 2014-2021. The goal was firstly to analyze factors that lead to patients abandoning the ED without being examined, taking into account the features related to patient characteristics such as age, gender, arrival mode, triage color, day of week of arrival, time of arrival, waiting time for take-over and year. These factors were used as process measures to perform a correlation analysis with the LWBS status. Then, Machine Learning (ML) techniques are exploited to develop and compare several LWBS prediction algorithms, with the purpose of providing a useful support model for the administration and management of EDs in the healthcare institutions. During the examined period, 688,870 patients were registered and 39188 (5.68%) left without being seen. Of the total LWBS patients, 59.6% were male and 40.4% were female. Moreover, from the statistical analysis emerged that the parameter that most influence the abandonment rate is the waiting time for take-over. The final ML classification model achieved an Area Under the Curve (AUC) of 0.97, indicating high performance in estimating LWBS for the years considered in this study. Various patient and ED process characteristics are related to patients who LWBS. The possibility of predicting LWBS rates in advance could be a valid tool quickly identifying and addressing "bottlenecks" in the hospital organization, thereby improving efficiency.

摘要

急诊科(ED)必须解决的一个关键问题是过度拥挤,因为这会导致等待时间延长和患者不满增加,这两者都与更多的患者在没有接受医疗服务提供者评估的情况下提前离开 ED 直接相关(未被看到就离开,LWBS)。这对医院来说会导致错失治疗机会的收入损失,而且一般来说,对 ED 流程的负面结果也会产生影响。因此,医疗保健经理必须能够预测和控制提前离开 ED 而未接受评估的患者。这项研究是对 2014 年至 2021 年期间在意大利萨勒诺的“圣乔瓦尼·迪·迪奥和鲁吉·达·阿拉戈纳”大学医院 ED 登记的患者进行的回顾性分析。研究目的首先是分析导致患者在未经检查的情况下离开 ED 的因素,同时考虑与患者特征相关的特征,如年龄、性别、到达方式、分诊颜色、到达周几、到达时间、接收时间和年份。这些因素被用作过程措施,与 LWBS 状态进行相关性分析。然后,利用机器学习(ML)技术开发和比较几种 LWBS 预测算法,旨在为医疗机构的 ED 管理和运营提供有用的支持模型。在检查期间,登记了 688870 名患者,其中 39188 人(5.68%)未经检查就离开了。在总 LWBS 患者中,59.6%为男性,40.4%为女性。此外,从统计分析中得出,最影响放弃率的参数是接收时间。最终的 ML 分类模型获得了 0.97 的曲线下面积(AUC),表明在预测本研究中考虑的年份的 LWBS 方面具有很高的性能。各种患者和 ED 过程特征与 LWBS 患者相关。提前预测 LWBS 率的可能性可能是一种有效的工具,可以快速识别和解决医院组织中的“瓶颈”,从而提高效率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f02f/11341825/85295ae81af4/41598_2024_70545_Fig1_HTML.jpg

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