149543 - Leveraging the potential of machine learning for assessing vascular ageing.pdf (809.36 kB)
Download fileLeveraging the potential of machine learning for assessing vascular ageing: state-of-the-art and future research
journal contribution
posted on 2023-05-21, 06:52 authored by Bikia, V, Fong, T, Rachel ClimieRachel Climie, Bruno, RM, Hametner, B, Mayer, C, Terentes-Printzios, D, Charlton, PHVascular ageing biomarkers have been found to be predictive of cardiovascular risk independently of classical risk factors, yet are not widely used in clinical practice. In this review, we present two basic approaches for using machine learning (ML) to assess vascular age: parameter estimation and risk classification. We then summarize their role in developing new techniques to assess vascular ageing quickly and accurately. We discuss the methods used to validate ML-based markers, the evidence for their clinical utility, and key directions for future research. The review is complemented by case studies of the use of ML in vascular age assessment which can be replicated using freely available data and code.
Funding
Heart Foundation
History
Publication title
European Heart Journal - Digital HealthIssue
4Pagination
676-690ISSN
2634-3916Department/School
Menzies Institute for Medical ResearchPublisher
Oxford University PressPlace of publication
United KingdomRights statement
Copyright 2021 The AuthorsRepository Status
- Open