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Introduction: Healthcare professionals frequently experience work-related fatigue, which may jeopardize their health and put patient safety at risk. In this study, we applied a machine learning (ML) approach based on data collected from a smartwatch to construct prediction models of work-related fatigue for emergency clinicians.
Methods: We conducted this prospective study at the emergency department (ED) of a tertiary teaching hospital from March 10-June 20, 2021, where we recruited physicians, nurses, and nurse practitioners. All participants wore a commercially available smartwatch capable of measuring various physiological data during the experiment. Participants completed the Multidimensional Fatigue Inventory (MFI) web form before and after each of their work shifts. We calculated and labeled the before-and-after-shift score differences between each pair of scores. Using several tree-based algorithms, we constructed the prediction models based on features collected from the smartwatch. Records were split into training/validation and testing sets at a 70:30 ratio, and we evaluated the performances using the area under the curve (AUC) measure of receiver operating characteristic on the test set.
Results: In total, 110 participants were included in this study, contributing to a set of 1,542 effective records. Of these records, 85 (5.5%) were labeled as having work-related fatigue when setting the MFI difference between two standard deviations as the threshold. The mean age of the participants was 29.6. Most of the records were collected from nurses (87.7%) and females (77.5%). We selected a union of 31 features to construct the models. For total participants, CatBoost classifier achieved the best performances of AUC (0.838, 95% confidence interval [CI] 0.742-0.918) to identify work-related fatigue. By focusing on a subgroup of nurses <35 years in age, XGBoost classifier obtained excellent performance of AUC (0.928, 95% CI 0.839-0.991) on the test set.
Conclusion: By using features derived from a smartwatch, we successfully built ML models capable of classifying the risk of work-related fatigue in the ED. By collecting more data to optimize the models, it should be possible to use smartwatch-based ML models in the future to predict work-related fatigue and adopt preventive measures for emergency clinicians.
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http://dx.doi.org/10.5811/westjem.58139 | DOI Listing |
BMJ Open Qual
September 2025
Jordan University, Amman, Jordan.
Objectives: To assess the efficacy of motivational messages on nurses' professional quality of life and well-being.
Design: The present systematic review was conducted according to the guidelines of Preferred Reporting Items for Systematic Reviews and Meta-Analyses, a widely accepted framework for conducting systematic reviews. The researchers used specific keywords to search for eligible studies in several databases.
J Oral Rehabil
September 2025
Health Sciences Department, Ribeirão Preto Medical School, University of São Paulo, Ribeirão Preto, SP, Brazil.
Background: Temporomandibular disorders (TMD) is an important source of orofacial pain, which is associated with other symptoms. Due to the chronicity of the condition, self-management strategies are often required. However, little is known about participants' perspectives on the overlapping symptoms and the strategies used to manage facial pain.
View Article and Find Full Text PDFJ Occup Med Toxicol
September 2025
Department of Public Health, Faculty of Medicine, University of Medicine, Tirana, Albania.
Aim: To assess the association between WRIMC and perceived stress among physicians through the lens of 'occupational context' and psycho-physiological stressors as mediators.
Methods: A cross-sectional study was conducted in Albania in January 2025 including a representative sample of 367 physicians (≈ 66% females; overall response rate: ≈90%). A structured 36-item questionnaire included demographic characteristics, WRIMC exposure and related psycho-physiological stressors and the Perceived Stress Scale (PSS).
Indian J Plast Surg
August 2025
Department of Plastic & Reconstructive Surgery, Byramjee Jeejeebhoy Government Medical College, Pune, Maharashtra, India.
Introduction: Work-related musculoskeletal disorders (WRMDs) are a less discussed entity in the medical profession, with surgical specialties being more prone to them. Little is known about these types of injuries in plastic surgeons specifically. Data on WRMDs among Indian plastic surgeons are lacking.
View Article and Find Full Text PDFMedicina (Kaunas)
August 2025
IRCCS Centro Neurolesi Bonino-Pulejo, Via Palermo, S.S. 113, C.da Casazza, 98124 Messina, Italy.
: Occupational well-being and professional quality of life are essential for healthcare sustainability. While clinical staff are presumed to experience higher stress, few studies have compared their experience to that of non-clinical personnel within the same institution. : This observational study involved 63 employees from an Italian research hospital: 36 healthcare workers in critical care and 27 administrative staff.
View Article and Find Full Text PDF