Generating Synthetic Health Sensor Data for Privacy-Preserving Wearable Stress Detection

Author:

Lange Lucas1ORCID,Wenzlitschke Nils1,Rahm Erhard1ORCID

Affiliation:

1. ScaDS.AI Dresden/Leipzig, Leipzig University, Augustusplatz 10, 04109 Leipzig, Germany

Abstract

Smartwatch health sensor data are increasingly utilized in smart health applications and patient monitoring, including stress detection. However, such medical data often comprise sensitive personal information and are resource-intensive to acquire for research purposes. In response to this challenge, we introduce the privacy-aware synthetization of multi-sensor smartwatch health readings related to moments of stress, employing Generative Adversarial Networks (GANs) and Differential Privacy (DP) safeguards. Our method not only protects patient information but also enhances data availability for research. To ensure its usefulness, we test synthetic data from multiple GANs and employ different data enhancement strategies on an actual stress detection task. Our GAN-based augmentation methods demonstrate significant improvements in model performance, with private DP training scenarios observing an 11.90–15.48% increase in F1-score, while non-private training scenarios still see a 0.45% boost. These results underline the potential of differentially private synthetic data in optimizing utility–privacy trade-offs, especially with the limited availability of real training samples. Through rigorous quality assessments, we confirm the integrity and plausibility of our synthetic data, which, however, are significantly impacted when increasing privacy requirements.

Funder

Open Access Publishing Fund of Leipzig University

Federal Ministry of Education and Research of Germany

Sächsische Staatsministerium für Wissenschaft Kultur und Tourismus in the Center of Excellence for AI-research program

Publisher

MDPI AG

Reference43 articles.

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4. Perez, E., and Abdel-Ghaffar, S. (2024, May 08). (Google/Fitbit). How We Trained Fitbit’s Body Response Feature to Detect Stress. Available online: https://blog.google/products/fitbit/how-we-trained-fitbits-body-response-feature-to-detect-stress/.

5. Garmin Technology (2024, May 08). Stress Tracking. Available online: https://www.garmin.com/en-US/garmin-technology/health-science/stress-tracking/.

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