FedBlockHealth: A Synergistic Approach to Privacy and Security in
IoT-Enabled Healthcare through Federated Learning and Blockchain
- URL: http://arxiv.org/abs/2304.07668v1
- Date: Sun, 16 Apr 2023 01:55:31 GMT
- Title: FedBlockHealth: A Synergistic Approach to Privacy and Security in
IoT-Enabled Healthcare through Federated Learning and Blockchain
- Authors: Nazar Waheed, Ateeq Ur Rehman, Anushka Nehra, Mahnoor Farooq, Nargis
Tariq, Mian Ahmad Jan, Fazlullah Khan, Abeer Z. Alalmaie, Priyadarsi Nanda
- Abstract summary: The rapid adoption of Internet of Things (IoT) devices in healthcare has introduced new challenges in preserving data privacy, security and patient safety.
Traditional approaches need to ensure security and privacy while maintaining computational efficiency.
This paper proposes a novel hybrid approach combining federated learning and blockchain technology to provide a secure and privacy-preserved solution.
- Score: 2.993954417409032
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The rapid adoption of Internet of Things (IoT) devices in healthcare has
introduced new challenges in preserving data privacy, security and patient
safety. Traditional approaches need to ensure security and privacy while
maintaining computational efficiency, particularly for resource-constrained IoT
devices. This paper proposes a novel hybrid approach combining federated
learning and blockchain technology to provide a secure and privacy-preserved
solution for IoT-enabled healthcare applications. Our approach leverages a
public-key cryptosystem that provides semantic security for local model
updates, while blockchain technology ensures the integrity of these updates and
enforces access control and accountability. The federated learning process
enables a secure model aggregation without sharing sensitive patient data. We
implement and evaluate our proposed framework using EMNIST datasets,
demonstrating its effectiveness in preserving data privacy and security while
maintaining computational efficiency. The results suggest that our hybrid
approach can significantly enhance the development of secure and
privacy-preserved IoT-enabled healthcare applications, offering a promising
direction for future research in this field.
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