Björkelund Anders, Ohlsson Mattias, Lundager Forberg Jakob, Mokhtari Arash, Olsson de Capretz Pontus, Ekelund Ulf, Björk Jonas
Department of Astronomy and Theoretical Physics Lund University Lund Sweden.
Department of Emergency Medicine Helsingborg Hospital Helsingborg Sweden.
J Am Coll Emerg Physicians Open. 2021 Mar 22;2(2):e12363. doi: 10.1002/emp2.12363. eCollection 2021 Apr.
Computerized decision-support tools may improve diagnosis of acute myocardial infarction (AMI) among patients presenting with chest pain at the emergency department (ED). The primary aim was to assess the predictive accuracy of machine learning algorithms based on paired high-sensitivity cardiac troponin T (hs-cTnT) concentrations with varying sampling times, age, and sex in order to rule in or out AMI.
In this register-based, cross-sectional diagnostic study conducted retrospectively based on 5695 chest pain patients at 2 hospitals in Sweden 2013-2014 we used 5-fold cross-validation 200 times in order to compare the performance of an artificial neural network (ANN) with European guideline-recommended 0/1- and 0/3-hour algorithms for hs-cTnT and with logistic regression without interaction terms. Primary outcome was the size of the intermediate risk group where AMI could not be ruled in or out, while holding the sensitivity (rule-out) and specificity (rule-in) constant across models.
ANN and logistic regression had similar (95%) areas under the receiver operating characteristics curve. In patients (n = 4171) where the timing requirements (0/1 or 0/3 hour) for the sampling were met, using ANN led to a relative decrease of 9.2% (95% confidence interval 4.4% to 13.8%; from 24.5% to 22.2% of all tested patients) in the size of the intermediate group compared to the recommended algorithms. By contrast, using logistic regression did not substantially decrease the size of the intermediate group.
Machine learning algorithms allow for flexibility in sampling and have the potential to improve risk assessment among chest pain patients at the ED.
计算机化决策支持工具可能会改善急诊科(ED)中胸痛患者急性心肌梗死(AMI)的诊断。主要目的是评估基于配对的高敏心肌肌钙蛋白T(hs-cTnT)浓度、不同采样时间、年龄和性别的机器学习算法的预测准确性,以确定是否为AMI。
在这项基于登记的横断面诊断研究中,我们对2013 - 2014年瑞典两家医院的5695例胸痛患者进行了回顾性研究,使用5折交叉验证200次,以比较人工神经网络(ANN)与欧洲指南推荐的hs-cTnT的0/1和0/3小时算法以及无交互项的逻辑回归的性能。主要结果是无法确定是否为AMI的中间风险组的大小,同时保持各模型的敏感性(排除)和特异性(纳入)不变。
ANN和逻辑回归在受试者操作特征曲线下的面积相似(95%)。在满足采样时间要求(0/1或0/3小时)的患者(n = 4171)中,与推荐算法相比,使用ANN导致中间组的大小相对减少了9.2%(95%置信区间4.4%至13.8%;从所有测试患者的24.5%降至22.2%)。相比之下,使用逻辑回归并没有显著减少中间组的大小。
机器学习算法在采样方面具有灵活性,并且有可能改善急诊科胸痛患者的风险评估。