During the COVID-19 pandemic, healthcare workers (HCWs) have faced unprecedented workloads and personal health risks leading to mental disorders and surges in sickness absence. Previous work has shown that interindividual differences in psychological resilience might explain why only some individuals are vulnerable to these consequences. However, no prognostic tools to predict individual HCW resilience during the pandemic have been developed. We deployed machine learning (ML) to predict psychological resilience during the pandemic. The models were trained in HCWs of the largest Finnish hospital, Helsinki University Hospital (HUS, N = 487), with a six-month follow-up, and prognostic generalizability was evaluated in two independent HCW validation samples (Social and Health Services in Kymenlaakso: Kymsote, N = 77 and the City of Helsinki, N = 322) with similar follow-ups never used for training the models. Using the most predictive items to predict future psychological resilience resulted in a balanced accuracy (BAC) of 72.7-74.3% in the HUS sample. Similar performances (BAC = 67-77%) were observed in the two independent validation samples. The models' predictions translated to a high probability of sickness absence during the pandemic. Our results provide the first evidence that ML techniques could be harnessed for the early detection of COVID-19-related distress among HCWs, thereby providing an avenue for potential targeted interventions.
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http://dx.doi.org/10.1038/s41598-022-12107-6 | DOI Listing |
Nurs Crit Care
January 2025
Paediatric Critical Care, Birmingham Children's Hospital, Birmingham, UK.
Background: Research has demonstrated that staff working in Paediatric Critical Care (PCC) experience high levels of burnout, post-traumatic stress and moral distress. There is very little evidence of how this problem could be addressed.
Aim: To develop evidence-based, psychologically informed interventions designed to improve PCC staff well-being that can be feasibility tested on a large scale.
J Occup Rehabil
January 2025
IRSST-Institut de Recherche Robert-Sauvé en Santé et en Sécurité du Travail, Montréal, Canada.
Purpose: Employee sickness absence (SA) is a significant issue facing organizations and individuals worldwide, leading to multiple negative consequences, such as increased costs, early retirement, decreased productivity, and reduced quality of work. Therefore, within the occupational health and safety (OHS) framework, it is crucial to explore the factors that help workforces stay at work sustainably. This study investigates the role of work-related psychosocial factors (WRPFs) as predictors of SA and suggests proactive measures to prevent its occurrence.
View Article and Find Full Text PDFBMC Public Health
December 2024
Finnish Institute of Occupational Health, TYÖTERVEYSLAITOS, PL 18, Helsinki, 00032, Finland.
Background: The COVID-19 pandemic was a significant health risk and resulted in increased sickness absence during the pandemic. This study examines whether a history of COVID-19 infection is associated with a higher risk of subsequent sickness absence.
Methods: In this prospective cohort study, 32,124 public sector employees responded to a survey on COVID-19 infection and lifestyle factors in 2020 and were linked to sickness absence records before (2019) and after (2021-2022) the survey.
Scand J Prim Health Care
December 2024
Unit of Physiotherapy, Department of Health and Rehabilitation, Institute of Neuroscience and Physiology, Sahlgrenska Academy, University of Gothenburg, Gothenburg, Sweden.
Purpose: To explore and describe patients' experiences and perceptions of rehabilitation according to the rehabilitation model 'Prevention of sickness absence through early identification and rehabilitation of at-risk patients with musculoskeletal pain' (PREVSAM).
Method: A qualitative study was conducted, with individual semi-structured interviews analysed using qualitative content analysis. Fifteen patients from three primary care rehabilitation clinics in Sweden who had undergone rehabilitation based on the PREVSAM model participated.
Health Econ
December 2024
University of Helsinki, Helsinki, Finland.
This paper examines, using exogenous variation generated by a Finnish pension reform implemented in 2005, the interplay between health and financial incentives to postpone retirement. Based on detailed administrative data on individual health and retirement behavior, we focus on whether individual reactions to incentives vary according to health status and analyze whether individuals with ill health are also able to take advantage of the potential monetary benefits of delayed retirement created by the reform. We find that on average, individuals react to the financial incentives created by the reform as expected.
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