Stress Monitoring in Healthcare: An Ensemble Machine Learning Framework Using Wearable Sensor Data
Journal:
arXiv
Published Date:
Jul 10, 2025
Abstract
Healthcare professionals, particularly nurses, face elevated occupational
stress, a concern amplified during the COVID-19 pandemic. While wearable
sensors offer promising avenues for real-time stress monitoring, existing
studies often lack comprehensive datasets and robust analytical frameworks.
This study addresses these gaps by introducing a multimodal dataset comprising
physiological signals, electrodermal activity, heart rate and skin temperature.
A systematic literature review identified limitations in prior stress-detection
methodologies, particularly in handling class imbalance and optimizing model
generalizability. To overcome these challenges, the dataset underwent
preprocessing with the Synthetic Minority Over sampling Technique (SMOTE),
ensuring balanced representation of stress states. Advanced machine learning
models including Random Forest, XGBoost and a Multi-Layer Perceptron (MLP) were
evaluated and combined into a Stacking Classifier to leverage their collective
predictive strengths. By using a publicly accessible dataset and a reproducible
analytical pipeline, this work advances the development of deployable
stress-monitoring systems, offering practical implications for safeguarding
healthcare workers' mental health. Future research directions include expanding
demographic diversity and exploring edge-computing implementations for low
latency stress alerts.