npj Digital Medicine (Sep 2024)

Artificial intelligence estimated electrocardiographic age as a recurrence predictor after atrial fibrillation catheter ablation

  • Hanjin Park,
  • Oh-Seok Kwon,
  • Jaemin Shim,
  • Daehoon Kim,
  • Je-Wook Park,
  • Yun-Gi Kim,
  • Hee Tae Yu,
  • Tae-Hoon Kim,
  • Jae-Sun Uhm,
  • Jong-Il Choi,
  • Boyoung Joung,
  • Moon-Hyoung Lee,
  • Hui-Nam Pak

DOI
https://doi.org/10.1038/s41746-024-01234-1
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 10

Abstract

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Abstract The application of artificial intelligence (AI) algorithms to 12-lead electrocardiogram (ECG) provides promising age prediction models. We explored whether the gap between the pre-procedural AI-ECG age and chronological age can predict atrial fibrillation (AF) recurrence after catheter ablation. We validated a pre-trained residual network-based model for age prediction on four multinational datasets. Then we estimated AI-ECG age using a pre-procedural sinus rhythm ECG among individuals on anti-arrhythmic drugs who underwent de-novo AF catheter ablation from two independent AF ablation cohorts. We categorized the AI-ECG age gap based on the mean absolute error of the AI-ECG age gap obtained from four model validation datasets; aged-ECG (≥10 years) and normal ECG age (<10 years) groups. In the two AF ablation cohorts, aged-ECG was associated with a significantly increased risk of AF recurrence compared to the normal ECG age group. These associations were independent of chronological age or left atrial diameter. In summary, a pre-procedural AI-ECG age has a prognostic value for AF recurrence after catheter ablation.