Achieve Efficient and Privacy-Preserving Medical Primary Diagnosis Based on kNN

Dan Zhu, Hui Zhu, Ximeng Liu, Hui Li, Fengwei Wang, Hao Li
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引用次数: 11

Abstract

Online medical primary diagnosis system, which can provide the pre-diagnosis service anywhere anytime, has attracted considerable interest. However, the flourish of online medical primary diagnosis system still faces many serious challenges since the sensitivity of personal health information and service provider''s diagnosis model. In this paper, we propose an efficient and privacy-preserving medical primary diagnosis scheme based on k-nearest-neighbors classification (kNN), called EPDK. With EPDK, medical users can ensure that their sensitive health information are not compromised during the online medical diagnosis process, and service provider can provide high-accuracy service without revealing its diagnosis model. Specifically, based on lightweight multiparty random masking and polynomial aggregation techniques, a medical user preprocesses her/his query vector before sending out and the preprocessed vector is directly operated in the service provider without obtaining original data, meanwhile, the primary diagnosis result cannot be achieved by anyone except the medical user. Through extensive analysis, we show that EPDK can resist multifarious known security threats, and has significantly lower computation complexity than existing schemes. Moreover, performance evaluations via implementing EPDK in the real environment demonstrate that EPDK is highly efficient in terms of computation overhead.
基于kNN实现高效且隐私保护的医疗初级诊断
在线医疗初级诊断系统能够随时随地提供预诊断服务,引起了人们的广泛关注。然而,由于个人健康信息的敏感性和医疗服务提供者的诊断模式,在线医疗初级诊断系统的蓬勃发展仍然面临着许多严峻的挑战。在本文中,我们提出了一种基于k-最近邻分类(kNN)的高效且隐私保护的医疗初级诊断方案,称为EPDK。使用EPDK,医疗用户可以在在线医疗诊断过程中确保自己的敏感健康信息不被泄露,服务提供商可以在不泄露其诊断模型的情况下提供高精度的服务。具体而言,基于轻量级多方随机掩蔽和多项式聚合技术,医疗用户在发送查询向量前对其进行预处理,预处理后的向量直接在服务提供商中进行操作,无需获取原始数据,同时除了医疗用户之外,任何人都无法获得初步诊断结果。通过广泛的分析,我们表明EPDK可以抵御多种已知的安全威胁,并且与现有方案相比,其计算复杂度显着降低。此外,通过在实际环境中实现EPDK的性能评估表明,EPDK在计算开销方面是非常高效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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