Journal ArticleOpen Access
Data privacy model using blockchain reinforcement federated learning approach for scalable internet of medical things
Author Affiliations
Thapar Institute of Engineering & Technology, National University of Malaysia, UCSI University, International Institute of Information Technology, ...
Published InCAAI Transactions on Intelligence Technology
Year2024
Citations118
Abstract
Abstract Internet of Medical Things (IoMT) has typical advancements in the healthcare sector with rapid potential proof for decentralised communication systems that have been applied for collecting and monitoring COVID‐19 patient data. Machine Learning algorithms typically use the risk score of each patient based on risk factors, which could help healthcare providers decide about post‐COVID‐19 care and follow‐up where the data privacy is another severe concern. The authors investigate the applicability of a distributed reinforcement learning approach in a Federated Learning (FL) multi‐disciplinary reinforcement system and explores the potential benefits of incorporating Blockchain Technology (BT) in the distributed system. Intermediate dependency features and transactions are avoided by applying Blockchain‐enabled reinforcement FL for the post‐COVID‐19 patient data of IoMT applications. The…
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