Predictive Models for Canadian Healthcare Workers Mental Health During COVID-19.

Journal: Journal of primary care & community health

Volume: 15

Issue: 

Year of Publication: 2024

Affiliated Institutions:  Indian Institute of Technology, Kharagpur, WB, India. York University, Toronto, ON, Canada.

Abstract summary 

COVID-19 impact on the population's mental health has been reported worldwide. Predicting healthcare workers' mental health and life stress is needed to proactively plan for future emergencies.Statistics Canada has surveyed Canadian healthcare workers and those working in healthcare settings to gauge their perceived mental health and perceived life stress.A cross-sectional survey of healthcare workers in Canada.A sample of 18,139 healthcare workers respondents.Eight algorithms, including Logistic Regression, Random Forest (RF), Naive Bayes (NB), K Nearest Neighbours (KNN), Adaptive boost (AdaBoost), Multi-layer perceptron (MLP), XGBoost, and LightBoost. AUC scores, accuracy and precision were measured for all models.XGBoost provided the highest performing model AUC score (AUC = 82.07%) for predicting perceived mental health, and Random Forest performed the best for predicting perceived life stress (AUC = 77.74%). Perceived health, age group of participants, and perceived mental health compared to before the pandemic were found to be the most important 3 features to predict perceived mental health and perceived stress. Perceived mental health compared to before the pandemic was the most important predictor for perceived life stress.Our models are highly predictive of healthcare workers' perceived mental health and life stress. Implementing scalable, non-expensive virtual mental health solutions to address mental health challenges in the workplace could mitigate the impact of workplace conditions on healthcare workers' mental health.

Authors & Co-authors:  Kumari Goyal El Morr

Study Outcome 

Source Link: Visit source

Statistics
Citations :  Cui J, Lu J, Weng Y, Yi GY, He W. COVID-19 impact on mental health. BMC Med Res Methodol. 2022;22(1):15. doi:10.1186/s12874-021-01411-w
Authors :  3
Identifiers
Doi : 21501319241241468
SSN : 2150-1327
Study Population
Male,Female
Mesh Terms
Humans
Other Terms
healthcare;machine learning;mental health;stress;virtual care
Study Design
Study Approach
Country of Study
Publication Country
United States