BMKS:一种基于区块链的医疗数据共享多关键词搜索方案

Guangjun Wu, Bing-lian Zhu, Jun Li
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引用次数: 2

摘要

近年来,电子病历共享在制定优化治疗方案、为科研人员提供数据集、促进生物医学科学发展等方面发挥了重要作用。然而,这个前所未有的技术融合时代带来了重大的数据安全和隐私挑战。针对这些问题,我们提出了一种基于区块链的医疗数据共享多关键字搜索方案BMKS,重点保证医疗数据的保密性,实现数据的安全检索。在BMKS中,我们引入了一个两级搜索方案来实现高效和可验证的关键字搜索。改进的Bloom过滤器的引入显著提高了查询效率。此外,我们利用区块链技术实现密文搜索和预解密,减少了用户的解密开销。此外,区块链的透明性和防篡改特性有助于以可跟踪和可审计的方式记录访问控制过程。性能评价和安全性分析表明,BMKS具有综合安全、高效、实用的特点。
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BMKS: A Blockchain Based Multi-Keyword Search Scheme for Medical Data Sharing
In recent years, electronic medical records(EMRs) sharing has played a vital role in formulating optimized treatment plans, providing data sets for researchers, and accelerating the development of biomedical science. However, This unprecedented era of technological confluence poses significant data security and privacy challenges. To solve these problems, we propose a blockchain-based multi-keyword search scheme for medical data sharing called BMKS, focusing on ensuring medical data confidentiality and realizing secure data retrieval. In BMKS, we introduce a two-level search scheme to achieve efficient and verifiable keyword searches. The introduction of the improved Bloom filter significantly improves query efficiency. In addition, we take advantage of blockchain technology to realize ciphertext search and pre-decryption, which reduces user's decryption overhead. Moreover, blockchain's transparency and tamper-preventing characteristics help record the access control process in a traceable and auditable way. The performance evaluation and security analysis show that BMKS is comprehensively safe, efficient, and practical.
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