Secure Integer Comparison Protocol For ML-based Disease Diagnosis In MHN With Energy Efficient Edge Computing

Sona Alex, Kirubai Dhanaraj, P. Deepthi
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引用次数: 0

Abstract

The benefits that MHN offers to healthcare services are not fully garnered due to concerns on privacy and security of sensitive medical data. Severe constraints on battery capacity and computing resources at the edge devices of MHN impose restrictions in deploying strong secure systems. Medical data need to be stored, communicated, and processed securely in real-time. Homomorphic encryption help to perform linear operations securely on the encrypted data. More complicated operations like ML-based disease diagnosis require nonlinear operations such as integer comparison. Hence a secure multiparty computation over homomorphically encrypted data is required for secure integer comparison. However, comparison protocols available in the literature use energy-hungry public-key cryptosystems. This article presents the design of an energy-efficient additively homomorphic modified Rivest scheme (AHMRS) to support secure integer comparison protocol (SICP-AHMRS), which facilitates fast and energy-efficient ML-based disease diagnosis. The proposed SICP-AHMRS guarantees the privacy of the data being compared. The experiments using the Raspberry Pi 3B+ board show that the energy consumption, processing delay, and bandwidth efficiency of the proposed SICP-AHMRS are much better than those of the existing schemes.
基于高效能边缘计算的MHN基于ml的疾病诊断安全整数比较协议
由于对敏感医疗数据的隐私和安全性的担忧,MHN为医疗保健服务提供的好处并没有充分体现出来。MHN边缘设备对电池容量和计算资源的严格限制限制了部署强大的安全系统。医疗数据需要实时安全地存储、通信和处理。同态加密有助于在加密数据上安全地执行线性操作。更复杂的操作,如基于ml的疾病诊断,需要整数比较等非线性操作。因此,安全整数比较需要对同态加密数据进行安全的多方计算。然而,文献中可用的比较协议使用耗能大的公钥密码系统。本文设计了一种支持安全整数比较协议(SICP-AHMRS)的节能的加性同态改进Rivest方案(AHMRS),以实现基于ml的快速、节能的疾病诊断。所提出的SICP-AHMRS保证了被比较数据的隐私性。在树莓派3B+板上的实验表明,本文提出的SICP-AHMRS方案在能耗、处理延迟和带宽效率方面都明显优于现有方案。
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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