Machine learning for ECG diagnosis and risk stratification of occlusion myocardial infarction

被引:0
|
作者
Salah S. Al-Zaiti
Christian Martin-Gill
Jessica K. Zègre-Hemsey
Zeineb Bouzid
Ziad Faramand
Mohammad O. Alrawashdeh
Richard E. Gregg
Stephanie Helman
Nathan T. Riek
Karina Kraevsky-Phillips
Gilles Clermont
Murat Akcakaya
Susan M. Sereika
Peter Van Dam
Stephen W. Smith
Yochai Birnbaum
Samir Saba
Ervin Sejdic
Clifton W. Callaway
机构
[1] University of Pittsburgh,Department of Acute & Tertiary Care Nursing
[2] University of Pittsburgh,Department of Emergency Medicine
[3] University of Pittsburgh,Department of Electrical & Computer Engineering
[4] University of Pittsburgh,Division of Cardiology
[5] University of Pittsburgh Medical Center,Department of Emergency Medicine
[6] School of Nursing,School of Nursing
[7] University of North Carolina at Chapel Hill,Department of Population Medicine
[8] Northeast Georgia Health System,Advanced Algorithm Development Center
[9] Jordan University of Science and Technology,Department of Critical Care Medicine
[10] Harvard Medical School and Harvard Pilgrim Health Care Institute,Division of Cardiology
[11] Philips Healthcare,Department of Emergency Medicine
[12] University of Pittsburgh,Department of Emergency Medicine
[13] University Medical Center Utrecht,Division of Cardiology
[14] Hennepin Healthcare,Department of Electrical & Computer Engineering
[15] University of Minnesota,undefined
[16] Baylor College of Medicine,undefined
[17] University of Toronto,undefined
[18] Artificial Intelligence for Health Outcomes at Research & Innovation,undefined
[19] North York General Hospital,undefined
来源
Nature Medicine | 2023年 / 29卷
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摘要
Patients with occlusion myocardial infarction (OMI) and no ST-elevation on presenting electrocardiogram (ECG) are increasing in numbers. These patients have a poor prognosis and would benefit from immediate reperfusion therapy, but, currently, there are no accurate tools to identify them during initial triage. Here we report, to our knowledge, the first observational cohort study to develop machine learning models for the ECG diagnosis of OMI. Using 7,313 consecutive patients from multiple clinical sites, we derived and externally validated an intelligent model that outperformed practicing clinicians and other widely used commercial interpretation systems, substantially boosting both precision and sensitivity. Our derived OMI risk score provided enhanced rule-in and rule-out accuracy relevant to routine care, and, when combined with the clinical judgment of trained emergency personnel, it helped correctly reclassify one in three patients with chest pain. ECG features driving our models were validated by clinical experts, providing plausible mechanistic links to myocardial injury.
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页码:1804 / 1813
页数:9
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