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Toward a Secure Healthcare Ecosystem: A Convergence of Edge Analytics, Blockchain, and Federated Learning
4
Zitationen
3
Autoren
2024
Jahr
Abstract
Modern healthcare organizations face various cy-bersecurity threats due to the digitization of their systems. These threats include data breaches, ransomware attacks, and unauthorized access to patients' sensitive information, which constitute real challenges for the healthcare ecosystem. To tackle these challenges, advanced security measures must be employed. They enable real-time analysis of crucial data and precise threat identification and provide robust protection for valuable data assets. This paper proposes an integrative approach and a system architecture for cybersecurity in healthcare, allowing real-time threat detection and data protection. The approach integrates the three innovative technologies of edge analytics, blockchain technology, and federated learning. Ensuring the cybersecurity of Electronic Health Records (EHRs) is an illustrative use case of the proposed architecture. Furthermore, the paper proposes a set of tools that can be used for the implementation of the architecture.
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