Privacy and Utility-Assisted Data Protection Strategy for Secure Data Sharing and Retrieval in Cloud System

Yogesh M. Gajmal, R. Udayakumar
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引用次数: 5

Abstract

ABSTRACT The outsourcing of Electronic Health Records (EHR) on cloud infrastructures has enabled medical data sharing among several healthcare applications. The blockchain offers security by authenticating users with encryption methods. The collaboration with the cloud provides better management but poses threats to the privacy of the patient. This paper devises a novel blockchain-assisted framework for effective data sharing and retrieval using cloud platforms. Here, the data protection model is devised in EHR application for secure transmission. The entities in the cloud platform include data user, data owner, smart agreement, transactional blockchain, and Inter-Planetary File System (IPFS). Here, the data owner includes a data protection model to secure EHR in which secured EHR is transferred to IPFS before sharing with the data user. The data protection is done by preserving data privacy using Tracy-Singh product and proposed Conditional Autoregressive Value at risk (CAViaR)-based Bird swarm algorithm (CAViaR-based BSA) combination of BSA and CAViaR for generating optimal privacy-preserving coefficients. The objective function is newly devised considering privacy and utility. The proposed CAViaR-based BSA outperformed other methods with minimal responsiveness of 251.339 s, maximal genuine user detection of 32.451%, maximal privacy of 96.5%, and minimal information loss of 3.5%.
云系统中安全数据共享和检索的隐私和实用辅助数据保护策略
电子健康记录(EHR)在云基础设施上的外包使得几个医疗保健应用程序之间的医疗数据共享成为可能。区块链通过使用加密方法对用户进行身份验证来提供安全性。与云的合作提供了更好的管理,但对患者的隐私构成了威胁。本文设计了一种新的区块链辅助框架,用于使用云平台进行有效的数据共享和检索。在此基础上,设计了电子病历应用中的数据保护模型,实现了数据的安全传输。云平台中的实体包括数据用户、数据所有者、智能协议、事务区块链和星际文件系统(IPFS)。在这里,数据所有者包括一个数据保护模型来保护EHR,其中受保护的EHR在与数据用户共享之前被传输到IPFS。数据保护是通过使用Tracy-Singh产品和基于条件自回归风险值(CAViaR)的鸟群算法(CAViaR-based BSA)来实现的,该算法结合了BSA和CAViaR来生成最优的隐私保护系数。考虑到私密性和实用性,重新设计了目标函数。基于caviar的BSA算法的响应速度最小为251.339 s,真实用户检测率最大为32.451%,隐私率最大为96.5%,信息丢失率最小为3.5%,优于其他方法。
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