Objectives: We aimed to provide an integrated picture of the relationship between different facets of adverse social behaviour (ASB) at the workplace and sick leave.
Methods: Data from a randomly drawn prospective cohort of the general working population. Eligible respondents were interviewed in 2009, 2013 or 2016, and were registered with an employee relationship of at least 50 working days in the national register the year following the survey interviews (n=21 674 observations/13 470 respondents). We investigated the prospective associations of self-reported exposure to ASB, including threats/acts of violence, bullying and sexual harassment, with physician-certified sick leave of 1-16 days (ie, low level of sick leave (LLSL)) and >16 days (ie, high level of sick leave (HLSL)) by means of mixed effects logistic regression.
Results: The prevalence of sick leave was 18.4% (n=3986 observations) for LLSL and 16.1% (n=3492 observations) for HLSL. The different facets of ASB were independently associated with higher odds of sick leave, with stronger associations for HLSL than for LLSL. Adjusted for sex, age, education level, occupation, previous sickness absence level, OR (95% CI) for HLSL was 1.97 (1.61 to 2.35) for threats/acts of violence, 1.97 (1.53 to 2.54) for bullying and 1.41 (1.10 to 1.79) for sexual harassment. The population risks of LLSL and HLSL attributable to ASB were 5.27 (95% CI 1.85 to 8.81) and 8.27% (95% CI 4.01 to 12.48), respectively.
Conclusions: Threats/acts of violence, bullying and sexual harassment were all independent predictors of sick leave, with threats/acts of violence appearing as the single most important factor.
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http://dx.doi.org/10.1136/oemed-2020-106973 | DOI Listing |
Int Nurs Rev
March 2025
College of Nursing, Keimyung University, Daegu, South Korea.
Aim: This study aimed to estimate the annual cost burden of productivity loss due to sickness presenteeism among hospital nurses in South Korea.
Background: Despite nurses being potentially more vulnerable to presenteeism, few studies have analyzed nurses' productivity losses due to sickness presenteeism.
Methods: This cross-sectional study employed an online survey in January 2023 with 607 nurses working in general/tertiary hospitals in South Korea.
Disabil Rehabil
January 2025
School of Health Sciences, University of Southampton, Southampton, UK.
Purpose: Cancer-related fatigue (CRF) has been associated with various adverse work outcomes in quantitative research. However, there is limited understanding regarding how and why these outcomes arise for survivors experiencing fatigue. In response, this qualitative study explores survivors' narrative accounts to understand relations between CRF and work outcomes.
View Article and Find Full Text PDFSci Rep
January 2025
Nursing Department, Huzhou Maternity & Child Health Care Hospital, Huzhou, 313000, China.
Breast cancer survivors face employment challenges. How to promote BC's return to work is important for improving their quality of life and promoting recovery. Numerous studies have reported that BC survivors encounter employment challenges due to cognitive limitations, alongside factors.
View Article and Find Full Text PDFBMJ Open
December 2024
Department of Public Health, University of Helsinki, Helsinki, Finland.
Objectives: This study aimed to identify distinct trajectories of long-term sickness absence (LTSA, >10 consecutive working days) among young and early midlife Finnish employees who experienced pain at baseline. It also aimed to determine the pain characteristics and occupational and lifestyle factors associated with these LTSA patterns.
Design: Longitudinal occupational cohort study with register linkage.
J Occup Environ Med
November 2024
Objectives: Chronic skin diseases (CSD) may lead to productivity losses. This mixed-methods study investigated symptom severity, social challenges, need for workplace accommodation, sick leave and their association with perceived impaired work performance (IWP) among workers with CSD.
Methods: Data were collected from April to June 2023.
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