User privacy prevention model using supervised federated learning‐based block chain approach for internet of Medical Things

Author:

Dhasarathan Chandramohan1ORCID,Hasan Mohammad Kamrul23ORCID,Islam Shayla4ORCID,Abdullah Salwani2ORCID,Khapre Shailesh5,Singh Dalbir2ORCID,Alsulami Abdulaziz A.6ORCID,Alqahtani Ali7ORCID

Affiliation:

1. Computer Science and Engineering Department Thapar Institute of Engineering and Technology Patiala India

2. Faculty of Information Science and Technology Universiti Kebangsaan Malaysia (UKM) Bangi Malaysia

3. North Garth Institute of Bangladesh Dhaka Bangladesh

4. Institute of Computer Science and Digital Innovation UCSI University Kuala Lumpur Malaysia

5. Department of Data Science and Artificial Intelligence Dr. S. P. Mukherjee International Institute of Information Technology Naya Raipur India

6. Department of Information Systems Faculty of Computing and Information Technology King Abdulaziz University Jeddah Saudi Arabia

7. Department of Networks and Communications Engineering College of Computer Science and Information Systems Najran University Najran Saudi Arabia

Abstract

AbstractThis research focuses on addressing the privacy issues in healthcare advancement monitoring with the rapid establishment of the decentralised communication system in the Internet of Medical Things (IoMT). An integrated blockchain homomorphic encryption standard with an in‐build supervised learning‐based smart contract is designed to improvise personal data prevention. The Internet of Medical Things (IoMT) has advanced in healthcare with the rapid establishment of decentralised communication systems. Distributed ledgers have resource constraints to leverage public, private, and hybrid blockchain transactions to facilitate heterogeneous operations. The authors propose a supervised learning strategy in healthcare to mitigate learning health‐related issues, improvise clinical monitoring, and ensure secure communication. The proposed approach handles the vast IoMT data by adopting blockchain for IoMT as (BIoMT) to preserve sensitive clinical information. It incorporates hybrid encryption techniques to improve patient and health records' privacy protection. BIoMT also maintains secured and sustainable supply chain management with a highly confidential decentralised framework using blockchain‐based smart contracts, which minimises data loss. Moreover, a framework is designed with a hybrid hashing that integrates a homomorphically encrypted algorithm to support a smart contract for decentralised applicability. The BIoMT approach is tested and compared with the relevant prevention mechanisms. The evaluation shows that the effects observed from the result analysis noted that the proposed method outperforms reliable prevention mechanisms compared to the existing approaches.

Publisher

Institution of Engineering and Technology (IET)

Subject

Artificial Intelligence,Computer Networks and Communications,Computer Vision and Pattern Recognition,Human-Computer Interaction,Information Systems

Reference41 articles.

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