Stress Monitoring in Healthcare: An Ensemble Machine Learning Framework Using Wearable Sensor Data
Arpana Sinhal, Anay Sinhal, Amit Sinhal

TL;DR
This paper presents a comprehensive ensemble machine learning framework utilizing multimodal wearable sensor data for real-time stress monitoring in healthcare workers, addressing previous limitations in dataset size and model robustness.
Contribution
Introduces a new multimodal dataset and a robust ensemble machine learning approach with data balancing techniques for improved stress detection accuracy.
Findings
Balanced dataset improves model performance.
Stacking classifier outperforms individual models.
Reproducible pipeline facilitates deployment.
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…
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Taxonomy
TopicsEmotion and Mood Recognition · Advanced Sensor and Energy Harvesting Materials · Non-Invasive Vital Sign Monitoring
