Objective:
To develop a model that integrates synthetic echocardiographic motion into ECG analysis for classifying diastolic dysfunction risk phenotypes and stratifying heart failure-related death risk.
Approach:
- Model Development: An ensemble model was created combining features from synthetic cardiac motion generated from 12-lead ECGs and embeddings from a foundation ECG model pretrained on over 10 million recordings.
- Training and Validation: The model was trained on a multicenter cohort of 1,012 patients and validated in an independent cohort of 956 patients, with additional validation in the EchoNext cohort of 100,000 patients and the CODE-15% cohort of 233,770 patients.
Key Findings:
- The ensemble model classified diastolic dysfunction risk phenotypes with an AUC of 0.86 in the development cohort and 0.85 in the external test cohort.
- High-risk ECG phenotypes were linked to structural remodeling and clinical risk factors such as age, hypertension, and chronic kidney disease.
- In the EchoNext cohort, the model identified structural heart diseases with AUCs ranging from 0.74 to 0.83.
- In the CODE-15% cohort, high-risk patients had a 4-year heart failure-related death rate of 8.5%, compared to 3.0% for low-risk patients.
Interpretation:
Combining echo-derived risk states with synthetic cardiac motion in ECG models may enhance detection of cardiac abnormalities and optimize echocardiography use in resource-limited settings.
Limitations:
- The abstract does not establish whether the model improves clinical outcomes.
- It does not assess the model's performance as a prospective screening tool.
- The potential to replace standard echocardiographic assessment is not evaluated.
Conclusion:
The integration of synthetic echo motion into ECG analysis may improve risk stratification for heart failure-related death.
Sources:
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