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dc.contributor.authorKonstantonis G
dc.contributor.authorSingh KV
dc.contributor.authorSfikakis PP
dc.contributor.authorJamthikar AD
dc.contributor.authorKitas GD
dc.contributor.authorGupta SK
dc.contributor.authorSaba L
dc.contributor.authorVerrou K
dc.contributor.authorKhanna NN
dc.contributor.authorRuzsa Z
dc.contributor.authorSharma AM
dc.contributor.authorLaird JR
dc.contributor.authorJohri AM
dc.contributor.authorKalra M
dc.contributor.authorProtogerou A
dc.contributor.authorSuri JS.
dc.date.accessioned2023-12-19T15:29:04Z
dc.date.available2023-12-19T15:29:04Z
dc.date.issued2022-01-11
dc.identifier.citationRheumatol Int. 2022 Feb;42(2):215-239. doi: 10.1007/s00296-021-05062-4. Epub 2022 Jan 11.
dc.identifier.doi10.1007/s00296-021-05062-4
dc.identifier.pmid35013839
dc.identifier.urihttp://hdl.handle.net/20.500.14200/3232
dc.description.abstractThe study proposes a novel machine learning (ML) paradigm for cardiovascular disease (CVD) detection in individuals at medium to high cardiovascular risk using data from a Greek cohort of 542 individuals with rheumatoid arthritis, or diabetes mellitus, and/or arterial hypertension, using conventional or office-based, laboratory-based blood biomarkers and carotid/femoral ultrasound image-based phenotypes. Two kinds of data (CVD risk factors and presence of CVD-defined as stroke, or myocardial infarction, or coronary artery syndrome, or peripheral artery disease, or coronary heart disease) as ground truth, were collected at two-time points: (i) at visit 1 and (ii) at visit 2 after 3 years. The CVD risk factors were divided into three clusters (conventional or office-based, laboratory-based blood biomarkers, carotid ultrasound image-based phenotypes) to study their effect on the ML classifiers. Three kinds of ML classifiers (Random Forest, Support Vector Machine, and Linear Discriminant Analysis) were applied in a two-fold cross-validation framework using the data augmented by synthetic minority over-sampling technique (SMOTE) strategy. The performance of the ML classifiers was recorded. In this cohort with overall 46 CVD risk factors (covariates) implemented in an online cardiovascular framework, that requires calculation time less than 1 s per patient, a mean accuracy and area-under-the-curve (AUC) of 98.40% and 0.98 (p < 0.0001) for CVD presence detection at visit 1, and 98.39% and 0.98 (p < 0.0001) at visit 2, respectively. The performance of the cardiovascular framework was significantly better than the classical CVD risk score. The ML paradigm proved to be powerful for CVD prediction in individuals at medium to high cardiovascular risk.
dc.language.isoen
dc.publisherSpringer
dc.subjectCardiology
dc.titleCardiovascular disease detection using machine learning and carotid/femoral arterial imaging frameworks in rheumatoid arthritis patients
dc.typeArticle
dc.source.journaltitleRheumatology International
oa.grant.openaccessNA


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