Subgroups of Long-Term Sick-Listed Based on Prognostic Return to Work Factors Across Diagnoses: A Cross-Sectional Latent Class Analysis

被引:0
作者
Martin Inge Standal
Lene Aasdahl
Chris Jensen
Vegard Stolsmo Foldal
Roger Hagen
Egil Andreas Fors
Marit Solbjør
Odin Hjemdal
Margreth Grotle
Ingebrigt Meisingset
机构
[1] Norwegian University of Science and Technology,Department of Psychology, Faculty of Social and Educational Sciences
[2] Norwegian University of Science and Technology,Department of Public Health and Nursing, Faculty of Medicine and Health Sciences
[3] Unicare Helsefort Rehabilitation Centre,General Practice Research Unit, Department of Public Health and Nursing, Faculty of Medicine and Health Sciences
[4] National Center for Occupational Rehabilitation,Department of Physiotherapy, Faculty of Health Sciences
[5] Norwegian University of Science and Technology,Department for Research of Musculoskeletal Disorders (FORMI)
[6] Oslo Metropolitan University,undefined
[7] Oslo University Hospital,undefined
来源
Journal of Occupational Rehabilitation | 2021年 / 31卷
关键词
Sick leave; Return to work; Vocational rehabilitation; Common mental disorder; Pain;
D O I
暂无
中图分类号
学科分类号
摘要
Comorbidity is common among long-term sick-listed and many prognostic factors for return to work (RTW) are shared across diagnoses. RTW interventions have small effects, possibly due to being averaged across heterogeneous samples. Identifying subgroups based on prognostic RTW factors independent of diagnoses might help stratify interventions. The aim of this study was to identify and describe subgroups of long-term sick-listed workers, independent of diagnoses, based on prognostic factors for RTW. Latent class analysis of 532 workers sick-listed for eight weeks was used to identify subgroups based on seven prognostic RTW factors (self-reported health, anxiety and depressive symptoms, pain, self-efficacy, work ability, RTW expectations) and four covariates (age, gender, education, physical work). Four classes were identified: Class 1 (45% of participants) was characterized by favorable scores on the prognostic factors; Class 2 (22%) by high anxiety and depressive symptoms, younger age and higher education; Class 3 (16%) by overall poor scores including high pain levels; Class 4 (17%) by physical work and lack of workplace adjustments. Class 2 included more individuals with a psychological diagnosis, while diagnoses were distributed more proportionate to the sample in the other classes. The identified classes illustrate common subgroups of RTW prognosis among long-term sick-listed individuals largely independent of diagnosis. These classes could in the future assist RTW services to provide appropriate type and extent of follow-up, however more research is needed to validate the class structure and examine how these classes predict outcomes and respond to interventions.
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页码:383 / 392
页数:9
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