A Novel Algorithm for Improving the Prehospital Diagnostic Accuracy of ST-Segment Elevation Myocardial Infarction.

IF 2.1 4区 医学 Q2 EMERGENCY MEDICINE
Prehospital and Disaster Medicine Pub Date : 2024-02-01 Epub Date: 2023-12-04 DOI:10.1017/S1049023X23006635
Mat Goebel, Lauren M Westafer, Stephanie A Ayala, El Ragone, Scott J Chapman, Masood R Mohammed, Marc R Cohen, James T Niemann, Marc Eckstein, Stephen Sanko, Nichole Bosson
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引用次数: 0

Abstract

Introduction: Early detection of ST-segment elevation myocardial infarction (STEMI) on the prehospital electrocardiogram (ECG) improves patient outcomes. Current software algorithms optimize sensitivity but have a high false-positive rate. The authors propose an algorithm to improve the specificity of STEMI diagnosis in the prehospital setting.

Methods: A dataset of prehospital ECGs with verified outcomes was used to validate an algorithm to identify true and false-positive software interpretations of STEMI. Four criteria implicated in prior research to differentiate STEMI true positives were applied: heart rate <130, QRS <100, verification of ST-segment elevation, and absence of artifact. The test characteristics were calculated and regression analysis was used to examine the association between the number of criteria included and test characteristics.

Results: There were 44,611 cases available. Of these, 1,193 were identified as STEMI by the software interpretation. Applying all four criteria had the highest positive likelihood ratio of 353 (95% CI, 201-595) and specificity of 99.96% (95% CI, 99.93-99.98), but the lowest sensitivity (14%; 95% CI, 11-17) and worst negative likelihood ratio (0.86; 95% CI, 0.84-0.89). There was a strong correlation between increased positive likelihood ratio (r2 = 0.90) and specificity (r2 = 0.85) with increasing number of criteria.

Conclusions: Prehospital ECGs with a high probability of true STEMI can be accurately identified using these four criteria: heart rate <130, QRS <100, verification of ST-segment elevation, and absence of artifact. Applying these criteria to prehospital ECGs with software interpretations of STEMI could decrease false-positive field activations, while also reducing the need to rely on transmission for physician over-read. This can have significant clinical and quality implications for Emergency Medical Services (EMS) systems.

一种提高st段抬高型心肌梗死院前诊断准确性的新算法
院前心电图(ECG)早期检测st段抬高型心肌梗死(STEMI)可改善患者预后。目前的软件算法优化灵敏度,但有很高的假阳性率。作者提出了一种算法来提高院前STEMI诊断的特异性。方法:使用具有验证结果的院前心电图数据集来验证一种算法,以识别STEMI的真阳性和假阳性软件解释。应用先前研究中涉及的区分STEMI真阳性的四个标准:心率结果:有44,611例可用。其中,1193例通过软件解释被确定为STEMI。应用所有四种标准的最高阳性似然比为353 (95% CI, 201-595),特异性为99.96% (95% CI, 99.93-99.98),但最低敏感性为14%;95% CI, 11-17)和最差负似然比(0.86;95% ci, 0.84-0.89)。随着标准数目的增加,阳性似然比(r2 = 0.90)和特异性(r2 = 0.85)的增加有很强的相关性。结论:院前心电图高概率的真STEMI可以通过以下四个标准准确识别:心率
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来源期刊
Prehospital and Disaster Medicine
Prehospital and Disaster Medicine Medicine-Emergency Medicine
CiteScore
3.10
自引率
13.60%
发文量
279
期刊介绍: Prehospital and Disaster Medicine (PDM) is an official publication of the World Association for Disaster and Emergency Medicine. Currently in its 25th volume, Prehospital and Disaster Medicine is one of the leading scientific journals focusing on prehospital and disaster health. It is the only peer-reviewed international journal in its field, published bi-monthly, providing a readable, usable worldwide source of research and analysis. PDM is currently distributed in more than 55 countries. Its readership includes physicians, professors, EMTs and paramedics, nurses, emergency managers, disaster planners, hospital administrators, sociologists, and psychologists.
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