Abstract
Background
Artificial intelligence electrocardiography (AI-ECG) algorithms are emerging tools for identifying individuals at risk of atrial fibrillation (AF). We evaluated the predictive performance of a validated AI-ECG algorithm for incident AF in UK Biobank participants with AF risk factors, irrespective of prevalent cardiovascular disease, and its incremental value when added to clinical predictors.
Methods
The AI-ECG tool was applied to sinus rhythm ECGs from UK-Biobank participants with risk factors for AF but no AF. Model performance was evaluated using time-dependent ROC-AUC and Harrell’s C-index. Multivariable Cox regression was used to identify clinical risk factors associated with incident AF and to quantify the contribution of AI-ECG.
Results
A total of 21,842 participants (56% male) were included. The median follow-up time was 3.7 years (IQR 0.5–5.4) The ECG-AI tool achieved a ROC-AUC of 0.73 (95%CI 0.68–0.78) at 1- and 0.69 (95%CI 0.66–0.72) at 3-years. A multivariable Cox regression model using clinical parameters achieved a ROC-AUC of 0.71 (95%CI 0.66–0.75) at 1- and 0.71 (95%CI 0.68–0.74) at 3-years. By adding ECG-AI to the clinical Cox regression model, the ROC-AUC increased to 0.75 (95%CI 0.71–0.80) at 1- and 0.74 (95%CI 0.71–0.77) at 3-years. AI-ECG showed a hazard ratio of 1.23 per decile increase (95%CI 1.18–1.27).
Conclusions
An AI-ECG algorithm improved the prediction of incident AF when added to a clinical parameter-based model over a median follow-up time of 3.7 years among individuals with comorbidities predisposing to AF who may benefit from targeted screening and preventive strategies.


