Moderate-High Disease Activity in Patients with Recent-Onset Psoriatic Arthritis—Multivariable Prediction Model Based on Machine Learning

Author:

Queiro Rubén1ORCID,Seoane-Mato Daniel2ORCID,Laiz Ana3ORCID,Galindez Agirregoikoa Eva4,Montilla Carlos5,Park Hye S.3ORCID,Tasende Jose A. Pinto6ORCID,Baute Juan J. Bethencourt7ORCID,Joven Ibáñez Beatriz8,Toniolo Elide9,Ramírez Julio10,Montero Nuria2,Pruenza García-Hinojosa Cristina11,Serrano García Ana11,

Affiliation:

1. Rheumatology Service & the Principality of Asturias Institute for Health Research (ISPA), Faculty of Medicine, Universidad de Oviedo, 33006 Oviedo, Spain

2. Research Unit, Spanish Society of Rheumatology, 28001 Madrid, Spain

3. Rheumatology and Autoimmune Disease Department, Hospital Universitari de la Santa Creu i Sant Pau, 08025 Barcelona, Spain

4. Rheumatology Service, Hospital Universitario Basurto, 48013 Bilbao, Spain

5. Rheumatology Service, Hospital Universitario de Salamanca, 37007 Salamanca, Spain

6. Rheumatology Service-INIBIC, Complexo Hospitalario Universitario de A Coruña, 15006 A Coruña, Spain

7. Rheumatology Service, Hospital Universitario de Canarias, 38320 Sta. Cruz de Tenerife, Spain

8. Rheumatology Service, Hospital Universitario 12 de Octubre, 28041 Madrid, Spain

9. Rheumatology Service, Hospital Universitari Son Llàtzer, 07198 Palma de Mallorca, Spain

10. Arthritis Unit, Rheumatology Department, Hospital Clínic Barcelona, 08036 Barcelona, Spain

11. Knowledge Engineering Institute, Universidad Autónoma de Madrid, 28049 Madrid, Spain

Abstract

The aim was to identify patient- and disease-related characteristics predicting moderate-to-high disease activity in recent-onset psoriatic arthritis (PsA). We performed a multicenter observational prospective study (2-year follow-up, regular annual visits) in patients aged ≥18 years who fulfilled the CASPAR criteria and had less than 2 years since the onset of symptoms. The moderate-to-high activity of PsA was defined as DAPSA > 14. We trained a logistic regression model and random forest–type and XGBoost machine learning algorithms to analyze the association between the outcome measure and the variables selected in the bivariate analysis. The sample comprised 158 patients. At the first follow-up visit, 20.8% of the patients who attended the clinic had a moderate-to-severe disease. This percentage rose to 21.2% on the second visit. The variables predicting moderate-high activity were the PsAID score, tender joint count, level of physical activity, and sex. The mean values of the measures of validity of the machine learning algorithms were all high, especially sensitivity (98%; 95% CI: 86.89–100.00). PsAID was the most important variable in the prediction algorithms, reinforcing the convenience of its inclusion in daily clinical practice. Strategies that focus on the needs of women with PsA should be considered.

Funder

AbbVie

Publisher

MDPI AG

Subject

General Medicine

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