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预测急诊科患者就诊情况的预后模型:最新系统评价与研究议程

Prognostic models for predicting patient arrivals in emergency departments: an updated systematic review and research agenda.

作者信息

Petravić Luka, Gril Rogina Kaja, Albreht Tit, Kukec Andreja, Žibert Janez

机构信息

Department of Endocrinology and Diabetology, University Clinical Center Maribor, Ljubljanska ulica 5, Maribor, 2000, Slovenia.

Department of Public Health, University of Ljubljana, Faculty of Medicine, Zaloška 4, Ljubljana, 1000, Slovenia.

出版信息

BMC Emerg Med. 2025 Jul 1;25(1):106. doi: 10.1186/s12873-025-01250-8.

Abstract

BACKGROUND

Emergency departments (ED) are struggling with an increased influx of patients. One of the methods to help departments prepare for surges of admittance is time series forecasting (TSF). The aim of this study was to create an overview of current literature to help guide future research. Firstly, we aimed to identify external variables used. Secondly, we tried to identify TSF methods used and their performance.

METHODS

We included model development or validation studies that were forecasting patient arrivals to the ED and used external variables. We included studies on any forecast horizon and any forecasting methodology. Literature search was done through PubMed, Scopus, Web of Science, CINAHL and Embase databases. We extracted data on methods and variables used. The study is reported according to TRIPOD-SRMA guidelines. The risk of bias was assessed using PROBAST and authors' own dimensions.

RESULTS

We included 30 studies. Our analysis has identified 10 different groups of variables used in models. Weather and calendar variables were commonly used. We found 3 different families of TSF methods. However, none of the studies followed reporting guidelines and model code was seldom published.

CONCLUSIONS

Our results identify the need for better reported results of model development and validation to better understand the role of external variables used in created models, as well as for more uniform reporting of results between different research groups and external validation of created models. Based on our findings, we also suggest a future research agenda for this field.

CLINICAL TRIAL NUMBER

Not applicable.

摘要

背景

急诊科正面临患者涌入量增加的难题。帮助科室为入院高峰做准备的方法之一是时间序列预测(TSF)。本研究的目的是对当前文献进行综述,以指导未来的研究。首先,我们旨在确定所使用的外部变量。其次,我们试图确定所使用的TSF方法及其性能。

方法

我们纳入了预测急诊科患者就诊人数并使用外部变量的模型开发或验证研究。我们纳入了关于任何预测期和任何预测方法的研究。通过PubMed、Scopus、Web of Science、CINAHL和Embase数据库进行文献检索。我们提取了所使用的方法和变量的数据。本研究按照TRIPOD-SRMA指南进行报告。使用PROBAST和作者自己设定的维度评估偏倚风险。

结果

我们纳入了30项研究。我们的分析确定了模型中使用的10组不同的变量。天气和日历变量被普遍使用。我们发现了3个不同的TSF方法家族。然而,没有一项研究遵循报告指南,模型代码也很少发表。

结论

我们的结果表明,需要更好地报告模型开发和验证的结果,以便更好地理解所创建模型中使用的外部变量的作用,以及不同研究组之间更统一的结果报告和所创建模型的外部验证。基于我们的研究结果,我们还提出了该领域未来的研究议程。

临床试验编号

不适用。

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