Privacy-Enhancing Technologies in Federated Learning for the Internet of Healthcare Things: A Survey
Fatemeh Mosaiyebzadeh, Seyedamin Pouriyeh, Reza M. Parizi, Quan Z., Sheng, Meng Han, Liang Zhao, Giovanna Sannino, Daniel Mac\^edo Batista

TL;DR
This survey reviews privacy-enhancing technologies in federated learning within the Internet of Healthcare Things, highlighting their role in safeguarding sensitive medical data while enabling collaborative AI model training.
Contribution
It provides a comprehensive analysis of PETs in FL for IoHT, identifying key challenges and future research directions in privacy preservation.
Findings
PETs improve data privacy in IoHT federated learning
Several challenges remain in formal privacy guarantees
Future research should focus on enhancing PET effectiveness
Abstract
Advancements in wearable medical devices in IoT technology are shaping the modern healthcare system. With the emergence of the Internet of Healthcare Things (IoHT), we are witnessing how efficient healthcare services are provided to patients and how healthcare professionals are effectively used AI-based models to analyze the data collected from IoHT devices for the treatment of various diseases. To avoid privacy breaches, these data must be processed and analyzed in compliance with the legal rules and regulations such as HIPAA and GDPR. Federated learning is a machine leaning based approach that allows multiple entities to collaboratively train a ML model without sharing their data. This is particularly useful in the healthcare domain where data privacy and security are big concerns. Even though FL addresses some privacy concerns, there is still no formal proof of privacy guarantees for…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Privacy, Security, and Data Protection · IoT and Edge/Fog Computing
