Grant Lars, Diagne Magueye, Aroutiunian Rafael, Hopkins Devin, Bai Tian, Kondrup Flemming, Clark Gregory
Department of Emergency Medicine, McGill University, Montreal, QC, Canada.
Emergency Department, Jewish General Hospital, Montreal, QC, Canada.
CJEM. 2025 Jan;27(1):43-52. doi: 10.1007/s43678-024-00807-z. Epub 2024 Nov 19.
This study investigates the potential to improve emergency department (ED) triage using machine learning models by comparing their predictive performance with the Canadian Triage Acuity Scale (CTAS) in identifying the need for critical care within 12 h of ED arrival.
Three machine learning models (LASSO regression, gradient-boosted trees, and a deep learning model with embeddings) were developed using retrospective data from 670,841 ED visits to the Jewish General Hospital from June 2012 to Jan 2021. The model outcome was the need for critical care within the first 12 h of ED arrival. Metrics, including the areas under the receiver-operator characteristic curve (ROC) and precision-recall curve (PRC) were used for performance evaluation. Shapley additive explanation scores were used to compare predictor importance.
The three machine learning models (deep learning, gradient-boosted trees and LASSO regression) had areas under the ROC of 0.926 ± 0.003, 0.912 ± 0.003 and 0.892 ± 0.004 respectively, and areas under the PRC of 0.27 ± 0.01, 0.24 ± 0.01 and 0.23 ± 0.01 respectively. In comparison, the CTAS score had an area under the ROC of 0.804 ± 0.006 and under the PRC of 0.11 ± 0.01. The predictors of most importance were similar between the models.
Machine learning models outperformed CTAS in identifying, at the point of ED triage, patients likely to need early critical care. If validated in future studies, machine learning models such as the ones developed here may be considered for incorporation in future revisions of the CTAS triage algorithm, potentially improving discrimination and reliability.
本研究通过比较机器学习模型与加拿大分诊 acuity 量表(CTAS)在识别急诊科(ED)就诊后 12 小时内对重症监护需求方面的预测性能,探讨使用机器学习模型改善急诊科分诊的潜力。
使用 2012 年 6 月至 2021 年 1 月间犹太总医院 670841 次急诊科就诊的回顾性数据,开发了三种机器学习模型(LASSO 回归、梯度提升树和带嵌入层的深度学习模型)。模型的结果是急诊科就诊后前 12 小时内对重症监护的需求。使用包括受试者工作特征曲线(ROC)下面积和精确召回率曲线(PRC)下面积等指标进行性能评估。使用 Shapley 加法解释分数比较预测因素的重要性。
三种机器学习模型(深度学习、梯度提升树和 LASSO 回归)的 ROC 下面积分别为 0.926±0.003、0.912±0.003 和 0.892±0.004,PRC 下面积分别为 0.27±0.01、0.24±0.01 和 0.23±0.01。相比之下,CTAS 评分的 ROC 下面积为 0.804±0.006,PRC 下面积为 0.11±0.01。各模型中最重要的预测因素相似。
在急诊科分诊时,机器学习模型在识别可能需要早期重症监护的患者方面优于 CTAS。如果在未来研究中得到验证,此处开发的机器学习模型等可能会被考虑纳入 CTAS 分诊算法的未来修订版中,从而有可能提高区分度和可靠性。