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Privacy-preserving pathological data sharing among multiple remote parties
oleh: Wei Wu, Fulong Chen, Pinghai Yuan, Taochun Wang, Dong Xie, Chuanxin Zhao, Chao Wang, Detao Tang, Jingtao Li, Ji Zhang
Format: | Article |
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Diterbitkan: | Elsevier 2024-09-01 |
Deskripsi
The sharing of pathological data is highly important in various applications, such as remote diagnosis, graded diagnosis, illness treatment, and specialist system development. However, ensuring reliable, secure, privacy-preserving, and efficient sharing of pathological data poses significant challenges. This paper presents a novel solution that leverages blockchain technology to ensure reliability in pathological data sharing. Additionally, it employs conditional proxy re-encryption (C-PRE) and public key encryption with equality test technology to control the scope and preserve the privacy of shared data. To assess the practicality of our solution, we implemented a prototype system using Hyperledger Fabric and conducted evaluations with various metrics. We also compared the solution with relevant schemes. The results demonstrate that the proposed solution effectively meets the requirements for pathological data sharing and is practical in production scenarios.