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Accuracy of cath lab activation decisions for STEMI-equivalent and mimic ECGs: Physicians vs. AI (Queen of Hearts by PMcardio).

作者信息

Shroyer Steven, Mehta Sumeru, Thukral Nandish, Smiley Kyle, Mercaldo Nathaniel, Meyers H Pendell, Smith Stephen W

机构信息

Department of Emergency Medicine, Greater San Antonio Emergency Physicians, Methodist Hospital System, San Antonio, TX, USA.

Department of Emergency Medicine, Greater San Antonio Emergency Physicians, Methodist Hospital System, San Antonio, TX, USA.

出版信息

Am J Emerg Med. 2025 Jul 30;97:193-199. doi: 10.1016/j.ajem.2025.07.061.

DOI:10.1016/j.ajem.2025.07.061
PMID:40763602
Abstract

INTRODUCTION

Accurate ECG interpretation is crucial to identify occlusive myocardial infarction (OMI) to determine the need for immediate catheterization laboratory activation (CLA). STEMI-equivalent and STEMI-mimic ECG patterns deviate from conventional STEMI criteria, risking misclassification of OMI cases. The diagnostic accuracy for these complex ECGs is unknown.

OBJECTIVES

This study aimed to measure physician accuracy for interpreting STEMI-equivalent and STEMI-mimic ECGs for catheterization laboratory activation (CLA) and compare their performance to a machine learning-based artificial intelligence algorithm, Queen of Hearts AI (QoH AI).

METHODS

Fifty-three EPs and 42 cardiologists interpreted 18 ECGs (eight STEMI-equivalents, eight STEMI-mimics, with one STEMI, and a normal ECG as controls) to determine the presence of OMI requiring immediate CLA. The same ECGs were analyzed by QoH AI. Interpretations were compared against a reference standard based on angiography, troponin, echocardiography, and clinical follow-up.

RESULTS

Interpretation accuracies were similar between EPs and cardiologists (65.6 %, 95 % CI [51, 78]; 65.5 %, 95 % CI [51, 77], respectively; p = 0.969), and significantly lower than QoH AI (88.9 %, 95 % CI [82, 93]) vs. physicians overall, 65.6 %, 95 % CI [52, 77]; p < 0.001). Physicians most frequently misclassified de Winter, Transient STEMI, Hyperacute T-wave OMI, and bundle branch block ECGs. QoH AI only misclassified left bundle branch block with OMI and left ventricular aneurysm without OMI.

CONCLUSION

Physicians frequently misinterpret STEMI-equivalent and STEMI-mimic ECGs, potentially impacting CLA decisions. QoH AI demonstrated superior accuracy, suggesting a potential to reduce missed OMIs and unnecessary catheterization laboratory activations. Prospective studies are needed to validate these findings in clinical practice.

摘要

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