4.5 Article

Privacy-preserving Federated Deep Learning for Wearable IoT-based Biomedical Monitoring

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ASSOC COMPUTING MACHINERY
DOI: 10.1145/3428152

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Privacy-preserving; deep learning; stress detection; affective computing; smartwatch; PPG; federated learning; data protection

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IoT devices generate massive biomedical data which can be used to improve health systems with advanced machine learning algorithms. Affective computing is an emerging field for monitoring mental states using physiological signals. Privacy concerns need to be addressed before analyzing physiological signals.
IoT devices generate massive amounts of biomedical data with increased digitalization and development of the state-of-the-art automated clinical data collection systems. When combined with advanced machine learning algorithms, the big data could be useful to improve the health systems for decision-making, diagnosis, and treatment. Mental healthcare is also attracting attention, since most medical problems can be associated with mental states. Affective computing is among the emerging biomedical informatics fields for automatically monitoring a person's mental state in ambulatory environments by using physiological and physical signals. However, although affective computing applications are promising to improve our daily lives, before analyzing physiological signals, privacy issues and concerns need to be dealt with. Federated learning is a promising candidate for developing high-performance models while preserving the privacy of individuals. It is a privacy protection solution that stores model parameters instead of the data itself and abides by the data protection laws such as EU General Data Protection Regulation (GDPR) and California Consumer Privacy Act (CCPA). We applied federated learning to heart activity data collected with smart bands for stress-level monitoring in different events. We achieved encouraging results for using federated learning in IoT-based wearable biomedical monitoring systems by preserving the privacy of the data.

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