Biometric contrastive learning for data-efficient deep learning from electrocardiographic images.
Veer SanghaAkshay KhunteGregory HolsteBobak J MortazaviZhangyang WangEvangelos K OikonomouRohan KheraPublished in: Journal of the American Medical Informatics Association : JAMIA (2024)
A pretraining strategy that leverages biometric signatures of different ECGs from the same patient enhances the efficiency of developing AI models for ECG images. This represents a major advance in detecting disorders from ECG images with limited labeled data.