Cross-sectional evaluation of cardiovascular biological age using point-of-care ultrasound
European Heart Journal - Digital Health

Abstract
Biological age is increasingly recognized as a superior predictor of morbidity, mortality, compared with chronological age. Artificial intelligence (AI)-driven ageing clocks enable rapid, non-invasive assessment. Cardiovascular (CV) ageing is of particular relevance given its central role in systemic metabolic health. This study evaluated the clinical utility of an ultrasound (US)-based CV biological age clock derived from handheld point-of-care ultrasound (POCUS), in comparison with haematological and electrocardiographic (ECG)-based clocks.
We analysed 243 adults (median age 62 years; 54% women) from the Sheba Healthspan Research Population (SHARP) study. Ultrasound-based CV age was estimated using focused cardiac POCUS with AI software. Blood age was calculated using the SenoClock platform from 45 routine biomarkers, and ECG age was derived using a convolutional neural network trained on >770 000 tracings. Correlations with chronological age and inter-clock agreement were examined. Participants were stratified into quintiles of US delta (US–chronological age). All three clocks correlated with chronological age (blood:
AI-derived ultrasound-based cardiovascular biological age from handheld POCUS is associated with prevalent metabolic syndrome in this cross-sectional cohort, even when routine focused POCUS shows no abnormalities warranting referral.
Contributors

Roi Amster
Author

Abigail Goshen
Author

Harel Raanani
Author

Adiel Am-Shalom
Author

Michael Fiman
Author

Robert Klempfner
Author

Ehud Raanani
Author

Ehud Schwammenthal
Author

Evelyne Bischof
Author

Elad Maor
Author

Tzipora Strauss
Author


