Artificial intelligence-enabled electrocardiogram model for predicting heart failure with preserved ejection fraction: a single-center study
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초록

Aims Heart failure with preserved ejection fraction (HFpEF) is difficult to diagnose due to the lack of a definitive diagnostic marker; multiple tests are required, including advanced evaluations. This study aimed to develop an artificial intelligence (AI)-enabled electrocardiogram (ECG) model for predicting HFpEF. Methods and results This retrospective cohort study included patients from a single tertiary centre who underwent echocardiography, N-terminal prohormone of B-type natriuretic peptide measurement, and ECG within a defined timeframe. Patients were classified as HFpEF (HFA-PEFF score >= 5) or control (HFA-PEFF score <5). Patients were divided into training, validation, and test subsets at a 7:1:2 ratio for model development and validation. Using the collected ECGs, a convolutional neural network was trained to predict HFpEF; its performance was assessed using the area under the receiver operating characteristic curve (AUROC). Among the 13 081 patients included, 5795 (44.3%) were classified as HFpEF and 7286 (55.7%) were classified as control. The AI-enabled ECG model demonstrated good discriminative performance [AUROC 0.81; 95% confidence interval (CI) 0.79-0.82]. Subgroup analyses stratified by HFpEF risk factors confirmed consistent model performance. Prognostic evaluation revealed that patients with a positive AI-ECG classification experienced significantly worse outcomes relative to those with a negative classification, including higher risks of cardiac death (1.1% vs. 0.1%; hazard ratio 9.56; 95% CI 1.24-73.53; P = 0.030) and heart failure hospitalization (2.8% vs. 0.6%; hazard ratio 5.91; 95% CI 2.08-16.81; P = 0.001) at 5 year. Conclusion The AI-ECG model is a reliable tool for predicting HFpEF, as defined by the HFA-PEFF score, and effectively stratifies patients according to prognosis. Integration of this model into clinical practice may simplify and enhance the diagnostic process for HFpEF.

키워드

Artificial intelligenceElectrocardiogramHeart failureVENTRICULAR DIASTOLIC FUNCTIONEUROPEAN ASSOCIATIONAMERICAN SOCIETYECHOCARDIOGRAPHYRECOMMENDATIONSDIAGNOSISUPDATE
제목
Artificial intelligence-enabled electrocardiogram model for predicting heart failure with preserved ejection fraction: a single-center study
저자
Hong, DavidSong, Sung-HeeShin, HeayoungBak, MinjungKim, JuwonKim, DaraeKim, Ju YounYang, Jeong HoonPark, Seung-JungChoi, Jin-OhOn, Young KeunPark, Kyoung-Min
DOI
10.1093/ehjdh/ztaf080
발행일
2025-07
유형
Article; Early Access
저널명
EUROPEAN HEART JOURNAL - DIGITAL HEALTH
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5
페이지
959 ~ 968