4.6 Article

Wrist-Based Electrodermal Activity Monitoring for Stress Detection Using Federated Learning

Journal

SENSORS
Volume 23, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/s23083984

Keywords

wearable sensor; privacy; federated learning; stress detection; healthcare; deep neural network

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With recent advancements in wearable technology, continuous stress monitoring through physiological factors has gained attention. Identifying stress early can improve healthcare outcomes by reducing the negative effects. However, privacy concerns limit the availability of data, making it challenging to utilize AI models in the medical industry. This research proposes a Federated Learning approach that utilizes a Deep Neural Network model to classify wearable-based electrodermal activities while ensuring patient data privacy.
With the most recent developments in wearable technology, the possibility of continually monitoring stress using various physiological factors has attracted much attention. By reducing the detrimental effects of chronic stress, early diagnosis of stress can enhance healthcare. Machine Learning (ML) models are trained for healthcare systems to track health status using adequate user data. Insufficient data is accessible, however, due to privacy concerns, making it challenging to use Artificial Intelligence (AI) models in the medical industry. This research aims to preserve the privacy of patient data while classifying wearable-based electrodermal activities. We propose a Federated Learning (FL) based approach using a Deep Neural Network (DNN) model. For experimentation, we use the Wearable Stress and Affect Detection (WESAD) dataset, which includes five data states: transient, baseline, stress, amusement, and meditation. We transform this raw dataset into a suitable form for the proposed methodology using the Synthetic Minority Oversampling Technique (SMOTE) and min-max normalization pre-processing methods. In the FL-based technique, the DNN algorithm is trained on the dataset individually after receiving model updates from two clients. To decrease the over-fitting effect, every client analyses the results three times. Accuracies, Precision, Recall, F1-scores, and Area Under the Receiver Operating Curve (AUROC) values are evaluated for each client. The experimental result shows the effectiveness of the federated learning-based technique on a DNN, reaching 86.82% accuracy while also providing privacy to the patient's data. Using the FL-based DNN model over a WESAD dataset improves the detection accuracy compared to the previous studies while also providing the privacy of patient data.

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