MyDigiTwin: A privacy-preserving framework for personalized cardiovascular risk prediction and scenario exploration

Publication date

2025-11

Authors

Cadavid, Héctor
Mo, Hyunho
Arends, Bauke
Dziopa, Katarzyna
Bron, Esther E.
Bos, Daniel
Georgievska, Sonja
van der Harst, PimORCID 0000-0002-2713-686X

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Document Type

Article

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License

cc_by

Abstract

Cardiovascular disease (CVD) remains a leading cause of death, and primary prevention through personalized interventions is crucial. This paper introduces MyDigiTwin, a framework that integrates health digital twins with personal health environments to empower patients in exploring personalized health scenarios while ensuring data privacy. MyDigiTwin uses federated learning to train predictive models across distributed datasets without transferring raw data, and a novel data harmonization framework addresses semantic and format inconsistencies in health data. A proof-of-concept demonstrates the feasibility of harmonizing and using cohort data to train privacy-preserving CVD prediction models. This framework offers a scalable solution for proactive, personalized cardiovascular care and sets the stage for future applications in real-world healthcare settings.

Keywords

Cardiovascular disease, Digital twin, Personal health environment, Health Informatics, Computer Science Applications

Citation

Cadavid, H, Mo, H, Arends, B, Dziopa, K, Bron, E E, Bos, D, Georgievska, S & van der Harst, P 2025, 'MyDigiTwin : A privacy-preserving framework for personalized cardiovascular risk prediction and scenario exploration', Computers in Biology and Medicine, vol. 198, no. Part A, 111180, pp. 1-14. https://doi.org/10.1016/j.compbiomed.2025.111180