An image-based AI-ECG model successfully predicted incident atrial fibrillation, demonstrating superior performance compared to the CHARGE-AF risk score (C-statistic 0.696 vs 0.667; P<0.05).
Observational (n=255,149)
Yes
Does an image-based AI-ECG model accurately predict incident atrial fibrillation?
An image-based AI-ECG model successfully predicts incident atrial fibrillation, offering a scalable tool for settings lacking digital ECG infrastructure and providing additive value to clinical risk scores.
Effect estimate: C-statistic
Absolute Event Rate: 0.696% vs 0.667%
p-value: p=<.05
BACKGROUND: Early prediction of atrial fibrillation (AF) is crucial for reducing adverse outcomes. While artificial intelligence-enhanced electrocardiogram (AI-ECG) analysis shows promise in predicting AF, most approaches require digital ECG signals, limiting their application in settings where ECGs are stored as images. OBJECTIVE: We aimed to develop and validate an image-based AI-ECG approach for predicting incident AF across multiple datasets. METHODS: We used 1,163,401 ECGs from 189,539 patients in the Beth Israel Deaconess Medical Center (BIDMC) dataset and 70,655 ECGs from 65,610 participants in the United Kingdom (UK) Biobank. The AI-ECG model was trained on ECG images processed to 310x868 pixels. RESULTS: The model achieved C-statistics of 0.754 (95% confidence interval CI: 0.747-0.761) in the BIDMC dataset and 0.723 (95% CI: 0.704-0.741) in the UK Biobank for predicting incident AF. Performance was maintained across key subgroups including outpatients, women, and non-white individuals. Compared with the CHARGE-AF risk score, the AI-ECG model showed superior performance (c-statistic 0.696 vs 0.667, P < .05) and provided significant additive value when combined (c-statistic 0.711, P < .0001). The model also performed well on smartphone-photographed ECGs (c-statistic 0.736). Saliency mapping indicated the model primarily focused on P-wave morphology and PR interval regions. CONCLUSION: This image-based approach enables AI-ECG prediction of AF in settings without digital ECG infrastructure and provides additive value to known clinical risk scores.
Zeidaabadi et al. (Wed,) conducted a observational in Incident atrial fibrillation (n=255,149). Image-based AI-ECG model vs. CHARGE-AF risk score was evaluated on Prediction of incident atrial fibrillation (C-statistic, p=<.05). An image-based AI-ECG model successfully predicted incident atrial fibrillation, demonstrating superior performance compared to the CHARGE-AF risk score (C-statistic 0.696 vs 0.667; P<0.05).