4.7 Article

BinDaaS: Blockchain-Based Deep-Learning as-a-Service in Healthcare 4.0 Applications

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出版社

IEEE COMPUTER SOC
DOI: 10.1109/TNSE.2019.2961932

关键词

Medical services; Blockchain; Servers; Security; Privacy; Lattices; Scalability; Authentication; Blockchain; Deep-Learning; EHRs

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Electronic Health Records (EHRs) are managed and shared using blockchain technology, addressing privacy and security concerns, while also utilizing deep learning techniques for disease prediction.
Electronic Health Records (EHRs) allows patients to control, share, and manage their health records among family members, friends, and healthcare service providers using an open channel, i.e., Internet. Thus, privacy, confidentiality, and data consistency are major challenges in such an environment. Although, cloud-based EHRs addresses the aforementioned discussions, but these are prone to various malicious attacks, trust management, and non-repudiation among servers. Hence, blockchain-based EHR systems are most popular to create the trust, security, and privacy among healthcare users. Motivated from the aforementioned discussions, we proposes a framework called as Blockchain-Based Deep Learning as-a-Service (BinDaaS). It integrates blockchain and deep-learning techniques for sharing the EHR records among multiple healthcare users and operates in two phases. In the first phase, an authentication and signature scheme is proposed based on lattices-based cryptography to resist collusion attacks among N-1 healthcare authorities from N. In the second phase, Deep Learning as-a-Service (DaaS) is used on stored EHR datasets to predict future diseases based on current indicators and features of patient. The obtained results are compared using various parameters such as accuracy, end-to-end latency, mining time, and computation and communication costs in comparison to the existing state-of-the-art proposals. From the results obtained, it is inferred that BinDaaS outperforms the other existing proposals with respect to the aforementioned parameters.

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