Development of prediction models to select older RA patients with comorbidities for treatment with chronic low-dose glucocorticoids

Author:

Hartman Linda12ORCID,da Silva José A P34ORCID,Buttgereit Frank5ORCID,Cutolo Maurizio6,Opris-Belinski Daniela7,Szekanecz Zoltan8ORCID,Masaryk Pavol9,Voshaar Marieke J H10,Heymans Martijn W2,Lems Willem F1,van der Heijde Désirée M F M11ORCID,Boers Maarten2

Affiliation:

1. Amsterdam Rheumatology and Immunology Center, Amsterdam University Medical Centers, Vrije Universiteit , Amsterdam, The Netherlands

2. Department of Epidemiology and Data Science, Amsterdam University Medical Centers, Vrije Universiteit , Amsterdam, The Netherlands

3. Reumatologia, Centro Hospitalar e Universitário de Coimbra , Coimbra, Portugal

4. Institute for Clinical and Biomedical Research, Faculty of Medicine, University of Coimbra , Coimbra, Portugal

5. Department of Rheumatology and Clinical Immunology, Charité – University Medicine Berlin , Berlin, Germany

6. Laboratory of Experimental Rheumatology and Academic Division of Clinical Rheumatology, Department of Internal Medicine, University of Genova , Genoa, Italy

7. Department of Rheumatology, Carol Davila University , Bucharest, Romania

8. Department of Rheumatology, Institute of Medicine, University of Debrecen Faculty of Medicine , Debrecen, Hungary

9. National Institute for the Rheumatic Diseases , Piešťany, Slovakia

10. Tools Patient Empowerment , Amsterdam, The Netherlands

11. Department of Rheumatology, Leiden University Medical Center , Leiden, The Netherlands

Abstract

Abstract Objective To develop prediction models for individual patient harm and benefit outcomes in elderly patients with RA and comorbidities treated with chronic low-dose glucocorticoid therapy or placebo. Methods In the Glucocorticoid Low-dose Outcome in Rheumatoid Arthritis (GLORIA) study, 451 RA patients ≥65 years of age were randomized to 2 years 5 mg/day prednisolone or placebo. Eight prediction models were developed from the dataset in a stepwise procedure based on prior knowledge. The first set of four models disregarded study treatment and examined general predictive factors. The second set of four models was similar but examined the additional role of low-dose prednisolone. In each set, two models focused on harm [the occurrence of one or more adverse events of special interest (AESIs) and the number of AESIs per year) and two on benefit (early clinical response/disease activity and a lack of joint damage progression). Linear and logistic multivariable regression methods with backward selection were used to develop the models. The final models were assessed and internally validated with bootstrapping techniques. Results A few variables were slightly predictive for one of the outcomes in the models, but none were of immediate clinical value. The quality of the prediction models was sufficient and the performance was low to moderate (explained variance 12–15%, area under the curve 0.67–0.69). Conclusion Baseline factors are not helpful in selecting elderly RA patients for treatment with low-dose prednisolone given their low power to predict the chance of benefit or harm. Trial registration https://clinicaltrials.gov; NCT02585258.

Funder

European Union’s Horizon 2020 Research and Innovation Programme

Personalizing Health and Care

AstraZeneca

Publisher

Oxford University Press (OUP)

Subject

Pharmacology (medical),Rheumatology

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