International Journal of Cardiology: Heart & Vasculature (Feb 2023)

Cardiovascular events and artificial intelligence-predicted age using 12-lead electrocardiograms

  • Naomi Hirota,
  • Shinya Suzuki,
  • Jun Motogi,
  • Hiroshi Nakai,
  • Wataru Matsuzawa,
  • Tsuneo Takayanagi,
  • Takuya Umemoto,
  • Akira Hyodo,
  • Keiichi Satoh,
  • Takuto Arita,
  • Naoharu Yagi,
  • Takayuki Otsuka,
  • Takeshi Yamashita

Journal volume & issue
Vol. 44
p. 101172

Abstract

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Background: There is increasing evidence that 12-lead electrocardiograms (ECG) can be used to predict biological age, which is associated with cardiovascular events. However, the utility of artificial intelligence (AI)-predicted age using ECGs remains unclear. Methods: Using a single-center database, we developed an AI-enabled ECG using 17 042 sinus rhythm ECGs (SR-ECG) to predict chronological age (CA) with a convolutional neural network that yields AI-predicted age. Using the 5-fold cross validation method, AI-predicted age deriving from the test dataset was yielded for all ECGs. The incidence by AgeDiff and the areas under the curve by receiver operating characteristic curve with AI-predicted age for cardiovascular events were analyzed. Results: During the mean follow-up period of 460.1 days, there were 543 cardiovascular events. The annualized incidence of cardiovascular events was 2.24 %, 2.44 %, and 3.01 %/year for patients with AgeDiff 6 years, respectively. The areas under the curve for cardiovascular events with CA and AI-predicted age, respectively, were 0.673 and 0.679 (Delong’s test, P = 0.388) for all patients; 0.642 and 0.700 (P = 0.003) for younger patients (CA < 60 years); and 0.584 and 0.570 (P = 0.268) for older patients (CA ≥ 60 years). Conclusions: AI-predicted age using 12-lead ECGs showed superiority in predicting cardiovascular events compared with CA in younger patients, but not in older patients.

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