Long-term sickness absence in a working population: development and validation of a risk prediction model in a large Dutch prospective cohort

BMC Public Health. 2020 May 15;20(1):699. doi: 10.1186/s12889-020-08843-x.

Abstract

Background: Societal expenditures on work-disability benefits is high in most Western countries. As a precursor of long-term work restrictions, long-term sickness absence (LTSA) is under continuous attention of policy makers. Different healthcare professionals can play a role in identification of persons at risk of LTSA but are not well trained. A risk prediction model can support risk stratification to initiate preventative interventions. Unfortunately, current models lack generalizability or do not include a comprehensive set of potential predictors for LTSA. This study is set out to develop and validate a multivariable risk prediction model for LTSA in the coming year in a working population aged 45-64 years.

Methods: Data from 11,221 working persons included in the prospective Study on Transitions in Employment, Ability and Motivation (STREAM) conducted in the Netherlands were used to develop a multivariable risk prediction model for LTSA lasting ≥28 accumulated working days in the coming year. Missing data were imputed using multiple imputation. A full statistical model including 27 pre-selected predictors was reduced to a practical model using backward stepwise elimination in a logistic regression analysis across all imputed datasets. Predictive performance of the final model was evaluated using the Area Under the Curve (AUC), calibration plots and the Hosmer-Lemeshow (H&L) test. External validation was performed in a second cohort of 5604 newly recruited working persons.

Results: Eleven variables in the final model predicted LTSA: older age, female gender, lower level of education, poor self-rated physical health, low weekly physical activity, high self-rated physical job load, knowledge and skills not matching the job, high number of major life events in the previous year, poor self-rated work ability, high number of sickness absence days in the previous year and being self-employed. The model showed good discrimination (AUC 0.76 (interquartile range 0.75-0.76)) and good calibration in the external validation cohort (H&L test: p = 0.41).

Conclusions: This multivariable risk prediction model distinguishes well between older workers with high- and low-risk for LTSA in the coming year. Being easy to administer, it can support healthcare professionals in determining which persons should be targeted for tailored preventative interventions.

Keywords: Calibration; Development; Discrimination; External validation; Long-term sickness absence; Prediction; Prediction model; Prevention; Prospective cohort study; Working persons.

MeSH terms

  • Employment / statistics & numerical data*
  • Female
  • Health Status
  • Humans
  • Life Change Events
  • Longitudinal Studies
  • Male
  • Middle Aged
  • Models, Statistical*
  • Netherlands / epidemiology
  • Prospective Studies
  • Risk Assessment
  • Risk Factors
  • Sick Leave / statistics & numerical data*
  • Socioeconomic Factors