Predicting inhospital admission at the emergency department: a systematic review.

Emergency medicine journal : EMJ Pub Date : 2022-03-01 Epub Date: 2021-10-28 DOI:10.1136/emermed-2020-210902
Anniek Brink, Jelmer Alsma, Lodewijk Aam van Attekum, Wichor M Bramer, Robert Zietse, Hester Lingsma, Stephanie Ce Schuit
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引用次数: 5

Abstract

Background: ED crowding has potential detrimental consequences for both patient care and staff. Advancing disposition can reduce crowding. This may be achieved by using prediction models for admission. This systematic review aims to present an overview of prediction models for admission at the ED. Furthermore, we aimed to identify the best prediction tool based on its performance, validation, calibration and clinical usability.

Methods: We included observational studies published in Embase.com, Medline Ovid, Cochrane CENTRAL, Web of Science Core Collection or Google scholar, in which admission models were developed or validated in a general medical population in European EDs including the UK. We used the Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies (CHARMS) checklist to assess quality of model development. Model performance was presented as discrimination and calibration. The search was performed on 11 October 2020.

Results: In total, 18 539 articles were identified. We included 11 studies, describing 16 different models, comprising the development of 9 models and 12 external validations of 11 models. The risk of bias of the development studies was considered low to medium. Discrimination, as represented by the area under the curve ranged from 0.630 to 0.878. Calibration was assessed in seven models and was strong. The best performing models are the models of Lucke et al and Cameron et al. These models combine clinical applicability, by inclusion of readily available parameters, and appropriate discrimination, calibration and validation.

Conclusion: None of the models are yet implemented in EDs. Further research is needed to assess the applicability and implementation of the best performing models in the ED.

Systematic review registration number: PROSPERO CRD42017057975.

Abstract Image

预测急诊科住院人数:一项系统回顾。
背景:急诊科拥挤对病人护理和工作人员都有潜在的有害后果。提前安置可以减少拥挤。这可以通过使用入院预测模型来实现。本系统综述旨在概述急诊科住院预测模型。此外,我们旨在根据其性能、验证、校准和临床可用性确定最佳预测工具。方法:我们纳入了发表在Embase.com、Medline Ovid、Cochrane CENTRAL、Web of Science Core Collection或Google scholar上的观察性研究,这些研究在包括英国在内的欧洲急诊室的普通医疗人群中开发或验证了入院模型。我们使用预测建模研究系统评价(CHARMS)检查表的关键评估和数据提取来评估模型开发的质量。模型性能表现为判别和标定。搜索于2020年10月11日进行。结果:共检出18 539篇文献。我们纳入了11项研究,描述了16个不同的模型,包括9个模型的开发和11个模型的12个外部验证。发展研究的偏倚风险被认为是低到中等。由曲线下面积表示的辨识度范围为0.630 ~ 0.878。在七个模型中评估了校准,并且校准效果很好。表现最好的模型是Lucke et al和Cameron et al的模型。这些模型结合了临床适用性,包括容易获得的参数,以及适当的区分,校准和验证。结论:这些模型尚未在急诊中应用。需要进一步的研究来评估ed系统评价注册号:PROSPERO CRD42017057975中表现最好的模型的适用性和实施情况。
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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