Korean J Intern Med.  2025 Mar;40(2):251-261. 10.3904/kjim.2024.130.

Explainable paroxysmal atrial fibrillation diagnosis using an artificial intelligence-enabled electrocardiogram

Affiliations
  • 1Department of Industrial Engineering, Seoul National University, Seoul, Korea
  • 2Department of Mathematics and Statistics, Chonnam National University, Gwangju, Korea
  • 3XRAI, Gwangju, Korea
  • 4Department of Neurology, Chonnam National University Hospital, Gwangju, Korea
  • 5Department of Neurology, Chonnam National University Medical School, Gwangju, Korea
  • 6Department of Internal Medicine, Chonnam National University Hospital, Gwangju, Korea
  • 7Department of Internal Medicine, Chonnam National University Medical School, Gwangju, Korea

Abstract

Background/Aims
Atrial fibrillation (AF) significantly contributes to global morbidity and mortality. Paroxysmal atrial fibrillation (PAF) is particularly common among patients with cryptogenic strokes or transient ischemic attacks and has a silent nature. This study aims to develop reliable artificial intelligence (AI) algorithms to detect early signs of AF in patients with normal sinus rhythm (NSR) using a 12-lead electrocardiogram (ECG).
Methods
Between 2013 and 2020, 552,372 ECG traces from 318,321 patients were collected and split into training (n = 331,422), validation (n = 110,475), and test sets (n = 110,475). Deep neural networks were then trained to predict AF onset within one month of NSR. Model performance was evaluated using the area under the receiver operating characteristic curve (AUROC). An explainable AI technique was employed to identify the inference evidence underlying the predictions of deep learning models.
Results
The AUROC for early diagnosis of PAF was 0.905 ± 0.007. The findings reveal that the vicinity of the T wave, including the ST segment and S-peak, significantly influences the ability of the trained neural network to diagnose PAF. Additionally, comparing the summarized ECG in NSR with those in PAF revealed that nonspecific ST-T abnormalities and inverted T waves were associated with PAF.
Conclusions
Deep learning can predict AF onset from NSR while detecting key features that influence decisions. This suggests that identifying undetected AF may serve as a predictive tool for PAF screening, offering valuable insights into cardiac dysfunction and stroke risk.

Keyword

Atrial fibrillation; Deep learning; Electrocardiography; Artificial intelligence; Paroxysmal atrial fibrillation
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