Kauppi Wivica, Imberg Henrik, Herlitz Johan, Molin Oskar, Axelsson Christer, Magnusson Carl
PreHospen- Centre for Prehospital Research, Faculty of Caring Science, Work Life and Social Welfare, University of Borås, Borås, SE- 501 90, Sweden.
Faculty of Caring Science, Work Life and Social Welfare, University of Borås, Borås, SE- 501 90, Sweden.
BMC Emerg Med. 2025 Jan 5;25(1):2. doi: 10.1186/s12873-024-01166-9.
In Sweden with about 10 million inhabitants, there are about one million primary ambulance missions every year. Among them, around 10% are assessed by Emergency Medical Service (EMS) clinicians with the primary symptom of dyspnoea. The risk of death among these patients has been reported to be remarkably high, at 11,1% and 13,2%. The aim was to develop a Machine Learning (ML) model to provide support in assessing patients in pre-hospital settings and to compare them with established triage tools.
This was a retrospective observational study including 6,354 patients who called the Swedish emergency telephone number (112) between January and December 2017. Patients presenting with the main symptom of dyspnoea were included which were recruited from two EMS organisations in Göteborg and Södra Älvsborg. Serious Adverse Event (SAE) was used as outcome, defined as any of the following:1) death within 30 days after call for an ambulance, 2) a final diagnosis defined as time-sensitive, 3) admitted to intensive care unit, or 4) readmission within 72 h and admitted to hospital receiving a final time-sensitive diagnosis. Logistic regression, LASSO logistic regression and gradient boosting were compared to the Rapid Emergency Triage and Treatment System for Adults (RETTS-A) and National Early Warning Score2 (NEWS2) with respect to discrimination and calibration of predictions. Eighty percent (80%) of the data was used for model development and 20% for model validation.
All ML models showed better performance than RETTS-A and NEWS2 with respect to all evaluated performance metrics. The gradient boosting algorithm had the overall best performance, with excellent calibration of the predictions, and consistently showed higher sensitivity to detect SAE than the other methods. The ROC AUC on test data increased from 0.73 (95% CI 0.70-0.76) with RETTS-A to 0.81 (95% CI 0.78-0.84) using gradient boosting.
Among 6,354 ambulance missions caused by patients suffering from dyspnoea, an ML method using gradient boosting demonstrated excellent performance for predicting SAE, with substantial improvement over the more established methods RETTS-A and NEWS2.
在拥有约1000万人口的瑞典,每年约有100万次初级救护任务。其中,约10%由紧急医疗服务(EMS)临床医生评估,主要症状为呼吸困难。据报道,这些患者的死亡风险非常高,分别为11.1%和13.2%。目的是开发一种机器学习(ML)模型,以支持在院前环境中对患者进行评估,并将其与既定的分诊工具进行比较。
这是一项回顾性观察研究,纳入了2017年1月至12月期间拨打瑞典紧急电话号码(112)的6354例患者。纳入以呼吸困难为主要症状的患者,这些患者来自哥德堡和南艾尔夫斯堡的两个EMS组织。严重不良事件(SAE)用作结局指标,定义如下:1)呼叫救护车后30天内死亡;2)最终诊断为时间敏感型;3)入住重症监护病房;或4)72小时内再次入院并入住医院,接受最终的时间敏感型诊断。在预测的区分度和校准方面,将逻辑回归、LASSO逻辑回归和梯度提升与成人快速紧急分诊和治疗系统(RETTS-A)和国家早期预警评分2(NEWS2)进行比较。80%的数据用于模型开发,20%用于模型验证。
就所有评估的性能指标而言,所有ML模型均表现出比RETTS-A和NEWS2更好的性能。梯度提升算法具有总体最佳性能,预测校准良好,并且始终显示出比其他方法更高的检测SAE的敏感性。测试数据的ROC AUC从RETTS-A的0.73(95%CI 0.70-0.76)增加到使用梯度提升时的0.81(95%CI 0.78-0.84)。
在由呼吸困难患者引起的6354次救护任务中,使用梯度提升的ML方法在预测SAE方面表现出优异性能,与更成熟的方法RETTS-A和NEWS2相比有显著改进。