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Lead-Specific Performance for Atrial Fibrillation Detection in Convolutional Neural Network Models Using Sinus Rhythm Electrocardiography.
Suzuki, Shinya; Motogi, Jun; Umemoto, Takuya; Hirota, Naomi; Nakai, Hiroshi; Matsuzawa, Wataru; Takayanagi, Tsuneo; Hyodo, Akira; Satoh, Keiichi; Arita, Takuto; Yagi, Naoharu; Kishi, Mikio; Semba, Hiroaki; Kano, Hiroto; Matsuno, Shunsuke; Kato, Yuko; Otsuka, Takayuki; Hori, Takayuki; Matsuhama, Minoru; Iida, Mitsuru; Uejima, Tokuhisa; Oikawa, Yuji; Yajima, Junji; Yamashita, Takeshi.
Affiliation
  • Suzuki S; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Motogi J; Nihon Kohden Corporation Tokyo Japan.
  • Umemoto T; Nihon Kohden Corporation Tokyo Japan.
  • Hirota N; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Nakai H; Information System Division, The Cardiovascular Institute Tokyo Japan.
  • Matsuzawa W; Nihon Kohden Corporation Tokyo Japan.
  • Takayanagi T; Nihon Kohden Corporation Tokyo Japan.
  • Hyodo A; Nihon Kohden Corporation Tokyo Japan.
  • Satoh K; Nihon Kohden Corporation Tokyo Japan.
  • Arita T; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Yagi N; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Kishi M; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Semba H; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Kano H; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Matsuno S; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Kato Y; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Otsuka T; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Hori T; Department of Cardiovascular Surgery, The Cardiovascular Institute Tokyo Japan.
  • Matsuhama M; Department of Cardiovascular Surgery, The Cardiovascular Institute Tokyo Japan.
  • Iida M; Department of Cardiovascular Surgery, The Cardiovascular Institute Tokyo Japan.
  • Uejima T; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Oikawa Y; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Yajima J; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
  • Yamashita T; Department of Cardiovascular Medicine, The Cardiovascular Institute Tokyo Japan.
Circ Rep ; 6(3): 46-54, 2024 Mar 08.
Article in En | MEDLINE | ID: mdl-38464990
ABSTRACT

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.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Circ Rep Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Circ Rep Year: 2024 Document type: Article