Publication: Cardiovascular Risk Prediction in Ankylosing Spondylitis: From Traditional Scores to Machine Learning Assessment.
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Identifiers
Date
2020-08-28
Authors
Navarini, Luca
Caso, Francesco
Costa, Luisa
Currado, Damiano
Stola, Liliana
Perrotta, Fabio
Delfino, Lorenzo
Sperti, Michela
Deriu, Marco A
Ruscitti, Piero
Advisors
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Abstract
The performance of seven cardiovascular (CV) risk algorithms is evaluated in a multicentric cohort of ankylosing spondylitis (AS) patients. Performance and calibration of traditional CV predictors have been compared with the novel paradigm of machine learning (ML). A retrospective analysis of prospectively collected data from an AS cohort has been performed. The primary outcome was the first CV event. The discriminatory ability of the algorithms was evaluated using the area under the receiver operating characteristic (ROC) curve (AUC), which is like the concordance-statistic (c-statistic). Three ML techniques were considered to calculate the CV risk: support vector machine (SVM), random forest (RF), and k-nearest neighbor (KNN). Of 133 AS patients enrolled, 18 had a CV event. c-statistic scores of 0.71, 0.61, 0.66, 0.68, 0.66, 0.72, and 0.67 were found, respectively, for SCORE, CUORE, FRS, QRISK2, QRISK3, RRS, and ASSIGN. AUC values for the ML algorithms were: 0.70 for SVM, 0.73 for RF, and 0.64 for KNN. Feature analysis showed that C-reactive protein (CRP) has the highest importance, while SBP and hypertension treatment have lower importance. All of the evaluated CV risk algorithms exhibit a poor discriminative ability, except for RRS and SCORE, which showed a fair performance. For the first time, we demonstrated that AS patients do not show the traditional ones used by CV scores and that the most important variable is CRP. The present study contributes to a deeper understanding of CV risk in AS, allowing the development of innovative CV risk patient-specific models.
Description
MeSH Terms
ROC curve
Random forest
Support vector machine
Spondylitis, ankylosing
C-reactive protein
Calibration
Algorithms
Machine learning
Hypertension
Random forest
Support vector machine
Spondylitis, ankylosing
C-reactive protein
Calibration
Algorithms
Machine learning
Hypertension
DeCS Terms
Algoritmos
Aprendizaje automático
Bosques aleatorios
Calibración
Curva ROC
Espondilitis anquilosante
Hipertensión
Máquina de vectores de soporte
Proteína C-reactiva
Aprendizaje automático
Bosques aleatorios
Calibración
Curva ROC
Espondilitis anquilosante
Hipertensión
Máquina de vectores de soporte
Proteína C-reactiva
CIE Terms
Keywords
Ankylosing spondylitis, C-reactive protein, Cardiovascular risk, Machine learning
Citation
Navarini L, Caso F, Costa L, Currado D, Stola L, Perrotta F, et al. Cardiovascular Risk Prediction in Ankylosing Spondylitis: From Traditional Scores to Machine Learning Assessment. Rheumatol Ther. 2020 Dec;7(4):867-882