Minimal disease activity (MDA) in patients with recent-onset psoriatic arthritis : predictive model based on machine learning

R. Queiro, D. Seoane-Mato, Ana Laiz, Eva Galíndez Agirregoikoa, C. Montilla, Hye-Sang Park, J.A. Pinto-Tasende, Juan José Bethencourt Baute, B.J. Ibáñez, E. Toniolo, Julio Ramírez, Ana Serrano García, J. D. Cañete, X. Juanola, J. Fiter, J. Gratacós, J. Rodriguez-Moreno, J.N. Rosa, A.L. Martín, A.B. GarcíaP.C. Segura, Anna López-Ferrer, S.P. Barrio, A.J. Plata Izquierdo, S. Bustabad, F.J. Guimerá Martín-Neda, E.F. Capdevilla, R.R. Díaz, A. Cuervo, Mercè Alsina-Gibert, P.T. Larraz, I. de la Morena Barrio, L.P. Lanza, D.B. Sanchís, C.M. Mesquida, C. Murillo, M.J. Moreno Ramos, M.D. Beteta, P.S.P. Guillén, L.L. Oliveira, T.N. Marco, L. Cebrián, Pablo De la Cueva, M. Steiner, S. Muñoz-Fernández, R.V. Garrido, M. León, E. Rubio, A.M. Jiménez, L. R. Fernández-Freire, J.M. Luezas, M.D. Sánchez-González, C.S. Muñoz, J.M. Senabre, J.C. Rosas, G.S. Soler, F.J. Mataix Díaz, J.C. Nieto-González, C. González, J.G. Ovalles Bonilla, O.B. Rodríguez, F.J.N. Medina, D. Luján, M.D. Ruiz Montesino, A.M. Carrizosa Esquivel, C. Fernández-Carballido, M.P. Martínez-Vidal, L.G. Fernández, V. Jovani, R.C. Alameda, S.G. Sabater, I.B. Romero, A. Urruticoechea-Arana, M.S. Torres, Raquel Almodóvar, J.L. López Estebaranz, M.D. López Montilla, A.V. García-Nieto

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14 Citations (Scopus)

Abstract

Very few data are available on predictors of minimal disease activity (MDA) in patients with recent-onset psoriatic arthritis (PsA). Such data are crucial, since the therapeutic measures used to change the adverse course of PsA are more likely to succeed if we intervene early. In the present study, we used predictive models based on machine learning to detect variables associated with achieving MDA in patients with recent-onset PsA. We performed a multicenter observational prospective study (2-year follow-up, regular annual visits). The study population comprised patients aged ≥18 years who fulfilled the CASPAR criteria and less than 2 years since the onset of symptoms. The dataset contained data for the independent variables from the baseline visit and from follow-up visit number 1. These were matched with the outcome measures from follow-up visits 1 and 2, respectively. We trained a random forest-type machine learning algorithm to analyze the association between the outcome measure and the variables selected in the bivariate analysis. In order to understand how the model uses the variables to make its predictions, we applied the SHAP technique. We used a confusion matrix to visualize the performance of the model. The sample comprised 158 patients. 55.5% and 58.3% of the patients had MDA at the first and second follow-up visit, respectively. In our model, the variables with the greatest predictive ability were global pain, impact of the disease (PsAID), patient global assessment of disease, and physical function (HAQ-Disability Index). The percentage of hits in the confusion matrix was 85.94%. A key objective in the management of PsA should be control of pain, which is not always associated with inflammatory burden, and the establishment of measures to better control the various domains of PsA.
Original languageEnglish
JournalArthritis research & therapy
Volume24
Issue number1
DOIs
Publication statusPublished - 2022

Keywords

  • Machine learning
  • Minimal disease activity
  • Predictive model
  • Recent-onset psoriatic arthritis

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