Predictive Models for Emergency Department Triage using Machine Learning: A Review

Fei Gao, B. Boukebous, Pozzar Mario, Alaoui Enora, Sano Batourou, Sahar Bayat-Makoei
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Abstract

Predictive Models for Emergency Department Triage using Machine Learning: A Review. Obstetrics Abstract Background: Recently, many research groups have tried to develop emergency department triage decision support systems based on big volumes of historical clinical data to differentiate and prioritize patients. Machine learning models might improve the predictive capacity of emergency department triage systems. The aim of this review was to assess the performance of recently described machine learning models for patient triage in emergency departments, and to identify future challenges. Methods: Four databases (ScienceDirect, PubMed, Google Scholar and Springer) were searched using key words identified in the research questions. To focus on the latest studies on the subject, the most cited papers between 2018 and October 2021 were selected. Only works with hospital admission and critical illness as outcomes were included in the analysis. Results: (hospital admission and critical illness) and developed 55 predictive models. Random Forest and Logistic Regression were the most commonly used prediction algorithms, and the receiver operating characteristic-area under the curve (ROC-AUC) the most frequently used metric to assess the algorithm prediction performance. Random Forest and Logistic Regression were the most discriminant models according to the selected studies. Conclusions: Machine learning-based triage systems could improve decision-making in emergency departments, thus leading to better patients’ outcomes. However, there is still scope for improvement concerning the prediction performance and explicability of ML models.
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使用机器学习的急诊科分类预测模型:综述
使用机器学习的急诊科分类预测模型:综述。摘要背景:近年来,许多研究小组试图开发基于大量历史临床数据的急诊科分诊决策支持系统,以区分和优先考虑患者。机器学习模型可以提高急诊科分诊系统的预测能力。本综述的目的是评估最近描述的用于急诊科患者分诊的机器学习模型的性能,并确定未来的挑战。方法:使用在研究问题中确定的关键词检索四个数据库(ScienceDirect、PubMed、谷歌Scholar和施普林格)。为了关注该主题的最新研究,我们选择了2018年至2021年10月期间被引用最多的论文。仅以住院和危重疾病为结果的作品被纳入分析。结果:(住院和危重症)并建立了55个预测模型。随机森林和逻辑回归是最常用的预测算法,接受者工作特征曲线下面积(ROC-AUC)是评估算法预测性能的最常用指标。根据所选研究,随机森林和逻辑回归是最具判别性的模型。结论:基于机器学习的分诊系统可以改善急诊科的决策,从而改善患者的预后。然而,机器学习模型的预测性能和可解释性仍有改进的余地。
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