医疗保健管理系统的区块链管理和联邦学习适应

Q3 Computer Science
S. Turgay
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引用次数: 2

摘要

近年来,健康管理系统面临着医疗数据共享不足、共享信息安全问题、数据建模探针和开发技术对私有数据的篡改和泄露等问题。局部学习与联邦学习和微分熵方法相结合,防止医疗机密信息泄露,因此在全局学习中,基于区块链的学习可以完全消除泄漏的可能性。利用信息熵技术对信息进行定性和定量分析,在局部学习过程中有效、最大限度地利用医疗数据。区块链利用了分布式网络结构和固有的安全特性,同时将信息视为一个整体,而不是数据孤岛。通过这项工作,可以鼓励医疗系统之间的数据共享,访问记录可以被篡改,并更好地支持医学研究和最终医疗。内存池的M/M/1队列和M/M/C队列,将集成的区块链与统一的学习结构相结合。利用提出的模型,考察了每个区块的交易数、每个区块的挖掘量、学习时间、每秒索引操作数、内存池数量、内存池等待时间、整个系统中未确认的交易数、总交易数。通过本研究,在服务过程中对用户医疗隐私信息的保护,以及对患者自身医疗数据的自主管理,将有利于医疗数据共享范围内的隐私保护。在此基础上,提出了一个基于区块链和联邦学习的数据管理系统,可以在下一步的研究中开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blockchain Management and Federated Learning Adaptation on Healthcare Management System
Recently, health management systems have some troubles such as insufficient sharing of medical data, security problems of shared information, tampering and leaking of private data with data modeling probes and developing technology. Local learning is performed together with federated learning and differential entropy method to prevent the leakage of medical confidential information, so blockchain-based learning is preferred to completely eliminate the possibility of leakage while in global learning. Qualitative and quantitative analysis of information can be made with information entropy technology for the effective and maximum use of medical data in the local learning process. The blockchain is used the distributed network structure and inherent security features, at the same time information is treated as a whole, not as islands of data. All the way through this work, data sharing between medical systems can be encouraged, access records tampered with, and better support medical research and definitive medical treatment. The M/M/1 queue for the memory pool and M/M/C queue to combine integrated blockchains with a unified learning structure. With the proposed model, the number of transactions per block, mining of each block, learning time, index operations per second, number of memory pools, waiting time in the memory pool, number of unconfirmed transactions in the whole system, total number of transactions were examined. Thanks to this study, the protection of the medical privacy information of the user during the service process and the autonomous management of the patient’s own medical data will benefit the protection of privacy within the scope of medical data sharing. Motivated by this, proposed a blockchain and federated learning-based data management system able to develop in next studies.
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来源期刊
International Journal of Intelligent Systems and Applications in Engineering
International Journal of Intelligent Systems and Applications in Engineering Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.30
自引率
0.00%
发文量
18
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