Literature DB >> 33819574

Predictors of Sickness Absence in a Clinical Population With Chronic Pain.

Riccardo LoMartire1, Örjan Dahlström2, Mathilda Björk3, Linda Vixner4, Paolo Frumento5, Lea Constan6, Björn Gerdle3, Björn Olov Äng7.   

Abstract

Chronic pain-related sickness absence is an enormous socioeconomic burden globally. Optimized interventions are reliant on a lucid understanding of the distribution of social insurance benefits and their predictors. This register-based observational study analyzed data for a 7-year period from a population-representative sample of 44,241 chronic pain patients eligible for interdisciplinary treatment (IDT) at specialist clinics. Sequence analysis was used to describe the sickness absence over the complete period and to separate the patients into subgroups based on their social insurance benefits over the final 2 years. The predictive performance of features from various domains was then explored with machine learning-based modeling in a nested cross-validation procedure. Our results showed that patients on sickness absence increased from 17% 5 years before to 48% at the time of the IDT assessment, and then decreased to 38% at the end of follow-up. Patients were divided into 3 classes characterized by low sickness absence, sick leave, and disability pension, with eight predictors of class membership being identified. Sickness absence history was the strongest predictor of future sickness absence, while other predictors included a 2008 policy, age, confidence in recovery, and geographical location. Information on these features could guide personalized intervention in the specialized healthcare. PERSPECTIVE: This study describes sickness absence in patients who visited a Swedish pain specialist interdisciplinary treatment clinic during the period 2005 to 2016. Predictors of future sickness absence are also identified that should be considered when adapting IDT programs to the patient's needs.
Copyright © 2021 The Authors. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Chronic pain; epidemiology; machine learning; productivity loss; sickness absence

Mesh:

Year:  2021        PMID: 33819574     DOI: 10.1016/j.jpain.2021.03.145

Source DB:  PubMed          Journal:  J Pain        ISSN: 1526-5900            Impact factor:   5.820


  4 in total

1.  Evidence-based digital support during 1 year after an Interdisciplinary Pain Rehabilitation Programme for persons with chronic musculoskeletal pain to facilitate a sustainable return to work: a study protocol for a registry-based multicentre randomised controlled trial.

Authors:  Christina Turesson; Gunilla Liedberg; Linda Vixner; Monika Lofgren; Mathilda Björk
Journal:  BMJ Open       Date:  2022-04-25       Impact factor: 3.006

2.  Psychosocial Working Conditions and Subsequent Sickness Absence-Effects of Pain and Common Mental Disorders in a Population-Based Swedish Twin Sample.

Authors:  Annina Ropponen; Mo Wang; Kristin Farrants; Jurgita Narusyte; Pia Svedberg
Journal:  J Occup Environ Med       Date:  2022-02-01       Impact factor: 2.306

3.  Sick leave and disability pension in a cohort of TMD-patients - The Swedish National Registry Studies for Surgically Treated TMD (SWEREG-TMD).

Authors:  Adrian Salinas Fredricson; Carina Krüger Weiner; Johanna Adami; Annika Rosén; Bodil Lund; Britt Hedenberg-Magnusson; Lars Fredriksson; Pia Svedberg; Aron Naimi-Akbar
Journal:  BMC Public Health       Date:  2022-05-09       Impact factor: 4.135

4.  Sustainable Working Life Patterns in a Swedish Twin Cohort: Age-Related Sequences of Sickness Absence, Disability Pension, Unemployment, and Premature Death during Working Life.

Authors:  Annina Ropponen; Pontus Josefsson; Petri Böckerman; Karri Silventoinen; Jurgita Narusyte; Mo Wang; Pia Svedberg
Journal:  Int J Environ Res Public Health       Date:  2022-08-24       Impact factor: 4.614

  4 in total

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