An AI-ECG algorithm detected concomitant atrial fibrillation from sinus rhythm ECG images (AUROC 0.802; 95% CI 0.794-0.809) and predicted thromboembolic events (HR 3.59; 95% CI 2.99-4.32).
Observational
Yes
Does a deep learning AI-ECG algorithm applied to sinus rhythm ECG images detect concomitant atrial fibrillation and predict thromboembolic events compared to the CHA2DS2-VASc score?
933,645 patients, including a development cohort from a large US academic hospital (N=691,463) and external validation cohorts from four US community hospitals (N=171,189), one US outpatient network (N=28,254), and the UK Biobank (N=42,739).
Computer vision deep learning AI-ECG model applied to images of 12-lead ECGs in sinus rhythm
CHA2DS2-VASc score (for benchmarking thromboembolic event prediction)
Detection of concomitant atrial fibrillation and flutter (AF-srECG) and prediction of thromboembolic eventshard clinical
A novel AI-ECG algorithm using a single 12-lead ECG image in sinus rhythm can detect concomitant atrial fibrillation and predict future thromboembolic events, performing comparably or better than the traditional CHA2DS2-VASc score.
Abstract Background Artificial intelligence-enhanced interpretation of electrocardiography (AI-ECG) can detect atrial fibrillation and flutter (AF) from sinus rhythm ECGs (srECG). However, these algorithms rely on ECG signals, often unavailable at the point of care. We sought to develop a broadly accessible AI model that could detect risk of concomitant AF directly from widely available ECG images. Additionally, we sought to assess whether such an AI-ECG model could serve as a digital biomarker for thromboembolic events. Objective We developed and externally validated an AI-ECG algorithm to detect concomitant AF from images of 12-lead ECGs in sinus rhythm. We further used the model’s output for predicting thromboembolic events. Methods We developed a computer vision deep learning model using 4 million ECGs from 691,463 patients at a large, academic US hospital. For model development, concomitant AF with an srECG (AF-srECG) was characterized if the patient had an ECG with AF within 30 days prior or at any point thereafter. The model was trained on various lead layouts to ensure it remains layout-agnostic during deployment. The model was externally validated in four US community hospitals (N=171,189), one US outpatient network (N=28,254), and the population-based UK Biobank (UKB) cohort (N=42,739). We assessed the model’s performance in predicting thromboembolic events. For benchmarking, the AI-ECG’s performance for predicting thromboembolic events was compared with CHA2DS2-VASc. Results The AI-ECG demonstrated an area under the receiver operating characteristic curve (AUROC) of 0.802 (95% CI, 0.794–0.809) for detecting AF-srECG in the held-out test set, with the AUROC ranging from 0.798–0.874 in clinical external validation cohorts, and 0.802 (0.787–0.818) in UKB. A positive AI-ECG screen was associated with a higher hazard of thromboembolic events (HR, 3.59 2.99–4.32 in clinical sites and HR, 8.06 3.56–18.28 in UKB). For predicting thromboembolic events, the Harrell’s C-statistic was comparable for AI-ECG and CHA2DS2-VASc in clinical sites (0.764 0.741–0.787 vs. 0.800 0.779–0.821). However, AI-ECG outperformed CHA2DS2-VASc in UKB (0.744 0.714–0.775 vs. 0.570 0.539–0.600). Conclusion We report a novel AI-ECG algorithm that can detect concomitant AF among those in sinus rhythm, and predict future thromboembolic outcomes from images of 12-lead ECGs. The algorithm that relied on a single ECG either matched or exceeded the performance of traditional risk scores that require evaluation of multiple risk factors. The AI-ECG algorithm has the potential to enhance the detection, prediction, and risk stratification of AF at the point of care using a single ECG image.Study Design AI-ECG Performance
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A Aminorroaya
L S Dhingra
E K Oikonomou
European Heart Journal
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Aminorroaya et al. (Sat,) conducted a observational in Atrial fibrillation and flutter (n=933,645). AI-ECG algorithm vs. CHA2DS2-VASc was evaluated on Detection of concomitant AF from sinus rhythm ECGs (AUROC 0.802, 95% CI 0.794-0.809). An AI-ECG algorithm detected concomitant atrial fibrillation from sinus rhythm ECG images (AUROC 0.802; 95% CI 0.794-0.809) and predicted thromboembolic events (HR 3.59; 95% CI 2.99-4.32).
www.synapsesocial.com/papers/698585aa8f7c464f230093d5 — DOI: https://doi.org/10.1093/eurheartj/ehaf784.544