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  4. Using Machine Learning to Risk Stratify Emergency Department Patients With Chest Pain but No Acute Myocardial Infarction: A Multicenter Retrospective Analysis.
 
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Using Machine Learning to Risk Stratify Emergency Department Patients With Chest Pain but No Acute Myocardial Infarction: A Multicenter Retrospective Analysis.

Journal
Journal of the American Heart Association
Journal Volume
14
Journal Issue
17
Start Page
Article number : e041915
ISSN
2047-9980
Date Issued
2025-09-02
Author(s)
Chou, Eric H
TSUNG-CHIEN LU  
Chiu, Yong-Tai
Chou, Fan-Ya
Hamada, Jeffrey
Shah, Jaydeep
Shori, Sandeep
Danley, Matthew
Shedd, Andrew
Bhakta, Toral
CHU-LIN TSAI  
CHIH-HUNG WANG  
Wei, Hung-Yu
DOI
10.1161/JAHA.125.041915
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/736454
Abstract
BACKGROUND: This study aimed to develop a machine learning-based model to predict the risk of major adverse cardiac events (MACE) in patients presenting to the emergency department (ED) with chest pain, for whom acute myocardial infarction was excluded after serial high-sensitivity cardiac troponin testing. METHODS: This retrospective analysis included adult patients presenting with chest pain at 5 study hospitals between 2021 and 2024 in Texas. Patients diagnosed with acute myocardial infarction during the index visit were excluded. The primary outcome was the occurrence of 30-day MACE, defined as myocardial infarction or all-cause mortality within 30 days of the index ED visit. A long short-term memory algorithm was used to develop the prediction model. RESULTS: The analysis included 14 177 patients with a median age of 49.7 years, 41.2% of whom were men. A total of 535 patients (3.8%) had at least 1 high-sensitivity cardiac troponin level above the 99th percentile. Thirty-nine patients (0.3%) experienced 30-day MACE, including 15 (0.1%) with myocardial infarction and 24 (0.2%) with all-cause mortality. The long short-term memory model demonstrated excellent performance in predicting 30-day MACE (area under the receiver operating characteristic curve [AUC], 0.884 [95% CI, 0.815–0.941]), myocardial infarction (AUC, 0.963 [95% CI, 0.926–0.993]), and all-cause mortality (AUC, 0.849 [95% CI, 0.698–0.948]). CONCLUSIONS: The long short-term memory model accurately predicted 30-day MACE in ED patients presenting with chest pain and no acute myocardial infarction, using patient demographics, vital signs at ED presentation, electrocardiographic findings, and serial high-sensitivity cardiac troponin levels measured at flexible time points within 24 hours of ED arrival.
Subjects
acute coronary syndrome
chest pain
deep learning
emergency department
machine learning
major adverse cardiac events
myocardial infarction
Publisher
American Heart Association Inc.
Type
journal article

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