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Machine Learning Algorithm to Predict Atrial Fibrillation Using Serial 12‐Lead ECGs Based on Left Atrial Remodeling

Authors :
Ji‐Hoon Choi
Sung‐Hee Song
Hongryul Kim
Jongwoo Kim
Heesun Park
JaeHu Jeon
JoongSik Hong
Hye Bin Gwag
Sung Ho Lee
Jaichan Lee
Soo Jin Cho
Seung‐Jung Park
Young Keun On
Ju Youn Kim
Kyoung‐Min Park
Source :
Journal of the American Heart Association: Cardiovascular and Cerebrovascular Disease, Vol 13, Iss 19 (2024)
Publication Year :
2024
Publisher :
Wiley, 2024.

Abstract

Background We hypothesized that analysis of serial ECGs could predict new‐onset atrial fibrillation (AF) more accurately than analysis of a single ECG by detecting the subtle cardiac remodeling that occurs immediately before AF occurrence. Our aim in this study was to compare the performance of 2 types of machine learning (ML) algorithms. Methods and Results Standard 12‐lead ECGs of patients selected by cardiologists between January 2010 and May 2021 were used for ML model development. Two ML models (single ECG and serial ECG) were developed using a light gradient boosting machine‐learning algorithm. Model performance was evaluated based on the area under the receiver operating characteristic curve, sensitivity, specificity, accuracy, and F1 score. We trained the ML models on 415 964 ECGs from 176 090 patients. When testing the 2 ML models using external validation data sets, the performance of the serial‐ML model was significantly better than that of the single‐ML model for predicting new‐onset AF (single‐ versus serial‐ML model: sensitivity 0.744 versus 0.810; specificity 0.742 versus 0.822; accuracy 0.743 versus 0.816; F1 score 0.743 versus 0.815; area under the receiver operating characteristic curve 0.812 versus 0.880; P

Details

Language :
English
ISSN :
20479980
Volume :
13
Issue :
19
Database :
Directory of Open Access Journals
Journal :
Journal of the American Heart Association: Cardiovascular and Cerebrovascular Disease
Publication Type :
Academic Journal
Accession number :
edsdoj.0578d10d7e344bff8dc11ca049065f48
Document Type :
article
Full Text :
https://doi.org/10.1161/JAHA.123.034154