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在儿科急诊分诊中识别可避免的患者:使用预测分析的决策支持系统。

Identification of avoidable patients at triage in a Paediatric Emergency Department: a decision support system using predictive analytics.

机构信息

CINTESIS - Centre for Health Technology and Services Research, University of Porto, Porto, Portugal.

Department of Community Medicine, Information and Health Decision Sciences, Faculty of Medicine of the University of Porto Al. Prof. Hernâni Monteiro, Porto, 4200 - 319, Portugal.

出版信息

BMC Emerg Med. 2024 Aug 18;24(1):149. doi: 10.1186/s12873-024-01029-3.

Abstract

BACKGROUND

Crowding has been a longstanding issue in emergency departments. To address this, a fast-track system for avoidable patients is being implemented in the Paediatric Emergency Department where our study is conducted. Our goal is to develop an optimized Decision Support System that helps in directing patients to this fast track. We evaluated various Machine Learning models, focusing on a balance between complexity, predictive performance, and interpretability.

METHODS

This is a retrospective study considering all visits to a university-affiliated metropolitan hospital's PED between 2014 and 2019. Using information available at the time of triage, we trained several models to predict whether a visit is avoidable and should be directed to a fast-track area.

RESULTS

A total of 507,708 visits to the PED were used in the training and testing of the models. Regarding the outcome, 41.6% of the visits were considered avoidable. Except for the classification made by triage rules, i.e. considering levels 1,2, and 3 as non-avoidable and 4 and 5 as avoidable, all models had similar results in model's evaluation metrics, e.g. Area Under the Curve ranging from 74% to 80%.

CONCLUSIONS

Regarding predictive performance, the pruned decision tree had evaluation metrics results that were comparable to the other ML models. Furthermore, it offers a low complexity and easy to implement solution. When considering interpretability, a paramount requisite in healthcare since it relates to the trustworthiness and transparency of the system, the pruned decision tree excels. Overall, this paper contributes to the growing body of research on the use of machine learning in healthcare. It highlights practical benefits for patients and healthcare systems of the use ML-based DSS in emergency medicine. Moreover, the obtained results can potentially help to design patients' flow management strategies in PED settings, which has been sought as a solution for addressing the long-standing problem of overcrowding.

摘要

背景

拥挤一直是急诊科长期存在的问题。在我们进行研究的儿科急诊部,正在实施一个针对可避免患者的快速通道系统。我们的目标是开发一个优化的决策支持系统,帮助将患者引导至快速通道。我们评估了各种机器学习模型,重点关注复杂性、预测性能和可解释性之间的平衡。

方法

这是一项回顾性研究,考虑了 2014 年至 2019 年期间到一所大学附属大都市医院儿科急诊部就诊的所有患者。使用分诊时可获得的信息,我们训练了几个模型来预测就诊是否可避免,并应引导至快速通道区域。

结果

共使用了 507708 次儿科急诊就诊数据来训练和测试模型。关于结局,41.6%的就诊被认为是可避免的。除了分诊规则所做的分类,即认为 1、2 和 3 级为不可避免,4 和 5 级为可避免外,所有模型在模型评估指标上的结果都相似,例如曲线下面积(AUC)在 74%到 80%之间。

结论

就预测性能而言,修剪后的决策树在评估指标方面的结果与其他机器学习模型相当。此外,它提供了一种低复杂度且易于实施的解决方案。考虑到可解释性,这是医疗保健中至关重要的要求,因为它与系统的可信度和透明度有关,修剪后的决策树表现出色。总体而言,本文为机器学习在医疗保健中的应用研究做出了贡献。它突出了在急诊医学中使用基于机器学习的 DSS 为患者和医疗系统带来的实际益处。此外,获得的结果有可能有助于设计儿科急诊部患者流量管理策略,这是解决长期存在的拥挤问题的一种解决方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/965a/11331632/fae2fa281d35/12873_2024_1029_Fig1_HTML.jpg

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