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评估不同机器学习算法用于预测急诊科住院时间:一项单中心研究。

Evaluation of different machine learning algorithms for predicting the length of stay in the emergency departments: a single-centre study.

作者信息

Ricciardi Carlo, Marino Marta Rosaria, Trunfio Teresa Angela, Majolo Massimo, Romano Maria, Amato Francesco, Improta Giovanni

机构信息

Department of Electrical Engineering and Information Technology, University of Naples "Federico II", Naples, Italy.

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

出版信息

Front Digit Health. 2024 Jan 8;5:1323849. doi: 10.3389/fdgth.2023.1323849. eCollection 2023.

Abstract

BACKGROUND

Recently, crowding in emergency departments (EDs) has become a recognised critical factor impacting global public healthcare, resulting from both the rising supply/demand mismatch in medical services and the paucity of hospital beds available in inpatients units and EDs. The length of stay in the ED (ED-LOS) has been found to be a significant indicator of ED bottlenecks. The time a patient spends in the ED is quantified by measuring the ED-LOS, which can be influenced by inefficient care processes and results in increased mortality and health expenditure. Therefore, it is critical to understand the major factors influencing the ED-LOS through forecasting tools enabling early improvements.

METHODS

The purpose of this work is to use a limited set of features impacting ED-LOS, both related to patient characteristics and to ED workflow, to predict it. Different factors were chosen (age, gender, triage level, time of admission, arrival mode) and analysed. Then, machine learning (ML) algorithms were employed to foresee ED-LOS. ML procedures were implemented taking into consideration a dataset of patients obtained from the ED database of the "San Giovanni di Dio e Ruggi d'Aragona" University Hospital (Salerno, Italy) from the period 2014-2019.

RESULTS

For the years considered, 496,172 admissions were evaluated and 143,641 of them (28.9%) revealed a prolonged ED-LOS. Considering the complete data (48.1% female vs. 51.9% male), 51.7% patients with prolonged ED-LOS were male and 47.3% were female. Regarding the age groups, the patients that were most affected by prolonged ED-LOS were over 64 years. The evaluation metrics of Random Forest algorithm proved to be the best; indeed, it achieved the highest accuracy (74.8%), precision (72.8%), and recall (74.8%) in predicting ED-LOS.

CONCLUSIONS

Different variables, referring to patients' personal and clinical attributes and to the ED process, have a direct impact on the value of ED-LOS. The suggested prediction model has encouraging results; thus, it may be applied to anticipate and manage ED-LOS, preventing crowding and optimising effectiveness and efficiency of the ED.

摘要

背景

近年来,急诊科拥挤已成为影响全球公共医疗保健的一个公认关键因素,这是由于医疗服务供需失衡加剧以及住院病房和急诊科可用病床短缺所致。急诊科留观时间(ED-LOS)已被发现是急诊科拥堵的一个重要指标。通过测量ED-LOS来量化患者在急诊科的停留时间,这可能会受到低效护理流程的影响,并导致死亡率上升和医疗支出增加。因此,通过预测工具尽早了解影响ED-LOS的主要因素至关重要,以便能提前做出改进。

方法

本研究旨在利用一组有限的影响ED-LOS的特征(包括患者特征和急诊科工作流程)来预测ED-LOS。选取并分析了不同因素(年龄、性别、分诊级别、入院时间、到达方式)。然后,采用机器学习(ML)算法来预测ED-LOS。考虑到从意大利萨勒诺“圣乔瓦尼迪奥与鲁吉德阿罗纳”大学医院急诊科数据库中获取的2014 - 2019年患者数据集,实施了ML程序。

结果

在所考虑的年份中,共评估了496,172例入院患者,其中143,641例(28.9%)显示ED-LOS延长。考虑完整数据(女性占48.1%,男性占51.9%),ED-LOS延长的患者中51.7%为男性,47.3%为女性。在年龄组方面,受ED-LOS延长影响最大的患者为64岁以上。随机森林算法的评估指标被证明是最佳的;实际上,它在预测ED-LOS方面达到了最高准确率(74.8%)、精确率(72.8%)和召回率(74.8%)。

结论

涉及患者个人和临床属性以及急诊科流程的不同变量对ED-LOS值有直接影响。所建议的预测模型取得了令人鼓舞的结果;因此,它可用于预测和管理ED-LOS,防止拥挤并优化急诊科的有效性和效率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a061/10800466/8bb3b2e8c7fb/fdgth-05-1323849-g001.jpg

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