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  3. Lipid monitoring using non-invasive measurement technologies and machine learning: a systematic review.
 

Lipid monitoring using non-invasive measurement technologies and machine learning: a systematic review.

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BORIS DOI
10.48620/94383
Publisher DOI
10.1007/s00404-025-08254-6
PubMed ID
41615481
Description
Background
Cardiovascular diseases (CVD) are the leading cause of death among women, with risk increasing after menopause. Lipid levels are key biomarkers, yet conventional blood tests remain invasive and underutilized. Non-invasive technologies and machine learning (ML) may offer new approaches to lipid monitoring and risk assessment using wearable devices and biosensors.Objective
This systematic review investigates the availability, accuracy, and clinical applicability of minimally and non-invasive lipid monitoring methods and ML-based cardiovascular risk estimation in adults.Methods
A systematic search was conducted in MEDLINE, Embase, Cochrane Library, Web of Science, Scopus, and ClinicalTrials.gov (2010-2024). Studies in English were included; case reports and animal studies were excluded. Data extraction focused on devices, measurement approach, and predictive utility for cardiovascular outcomes. Methodological heterogeneity was addressed through narrative synthesis and thematic grouping (Thomas in Cochrane Handb Syst Rev Interv, 2024).Results
From 14,863 records, 37 studies were included. Near-infrared, saliva-based, and smartphone-enabled fingertip devices showed promising accuracy. ML models using wearable-derived physiological data demonstrated moderate success in predicting cardiovascular risk and lipid levels.Conclusion
Minimally and non-invasive lipid monitoring and ML-based risk prediction may support accessible, personalized cardiovascular risk management. Despite encouraging findings, validation in large-scale, long-term studies is essential before clinical adoption.Trial Registration
Title registration number (on PROSPERO): CRD420251105896.
Date of Publication
2026-01-30
Publication Type
Article
Subject(s)
600 Technology > 610 Medicine & health
Keyword(s)
Cardiovascular risk
•
Lipids
•
Machine learning in healthcare
•
Non-invasive monitoring
•
Preventive cardiology
•
Wearable devices
Language(s)
en
Contributor(s)
Endrass, Julia
Krbanjevic, Valerija
Khattab, Kerstin
Pavicic, Elena
Clinic of Gynaecology
Graduate School for Health Sciences (GHS)
Zwahlen, Michelle
Stute, Petra
Clinic of Gynaecology
Additional Credits
Graduate School for Health Sciences (GHS)
Clinic of Gynaecology
Series
Archives of Gynecology and Obstetrics
Publisher
Springer
ISSN
1432-0711
0932-0067
Access(Rights)
open.access
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