Circulation Reports
Online ISSN : 2434-0790
Arrhythmia/Electrophysiology
Lead-Specific Performance for Atrial Fibrillation Detection in Convolutional Neural Network Models Using Sinus Rhythm Electrocardiography
Shinya Suzuki Jun MotogiTakuya UmemotoNaomi HirotaHiroshi NakaiWataru MatsuzawaTsuneo TakayanagiAkira HyodoKeiichi SatohTakuto AritaNaoharu YagiMikio KishiHiroaki SembaHiroto KanoShunsuke MatsunoYuko KatoTakayuki OtsukaTakayuki HoriMinoru MatsuhamaMitsuru IidaTokuhisa UejimaYuji OikawaJunji YajimaTakeshi Yamashita
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2024 年 6 巻 3 号 p. 46-54

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Background: We developed a convolutional neural network (CNN) model to detect atrial fibrillation (AF) using the sinus rhythm ECG (SR-ECG). However, the diagnostic performance of the CNN model based on different ECG leads remains unclear.

Methods and Results: In this retrospective analysis of a single-center, prospective cohort study, we identified 616 AF cases and 3,412 SR cases for the modeling dataset among new patients (n=19,170). The modeling dataset included SR-ECGs obtained within 31 days from AF-ECGs in AF cases and SR cases with follow-up ≥1,095 days. We evaluated the CNN model’s performance for AF detection using 8-lead (I, II, and V1–6), single-lead, and double-lead ECGs through 5-fold cross-validation. The CNN model achieved an area under the curve (AUC) of 0.872 (95% confidence interval (CI): 0.856–0.888) and an odds ratio of 15.24 (95% CI: 12.42–18.72) for AF detection using the eight-lead ECG. Among the single-lead and double-lead ECGs, the double-lead ECG using leads I and V1 yielded an AUC of 0.871 (95% CI: 0.856–0.886) with an odds ratio of 14.34 (95% CI: 11.64–17.67).

Conclusions: We assessed the performance of a CNN model for detecting AF using eight-lead, single-lead, and double-lead SR-ECGs. The model’s performance with a double-lead (I, V1) ECG was comparable to that of the 8-lead ECG, suggesting its potential as an alternative for AF screening using SR-ECG.

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© 2024, THE JAPANESE CIRCULATION SOCIETY

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