论文标题

健康互联网事物网络的隐私数据推理框架

A Privacy-Preserving Data Inference Framework for Internet of Health Things Networks

论文作者

Kang, James Jin, Dibaei, Mahdi, Luo, Gang, Yang, Wencheng, Zheng, Xi

论文摘要

由于个人健康数据的敏感性,电子医疗保健应用中的隐私保护是一个重要的考虑因素。卫生互联网(IOHT)网络在医疗保健环境中具有隐私要求。但是,这些网络具有独特的挑战和安全要求(完整性,身份验证,隐私和可用性),还必须与保持效率保持效率以节省电池电量的需求,这可能是IOHT设备和网络的重要限制。数据通常是在不进行过滤或优化的情况下传输的,并且在与IOHT网络交互时,此流量会超载传感器并导致电池的快速消耗。因此,这对这些设备的实际实施构成了限制。作为解决问题的解决方案,本文提出了一个保护隐私的两层数据推理框架,这可以通过减少通过推断感应数据传输所需的数据大小来保护电池的消耗,还可以保护敏感数据从泄漏到对手。实验评估对隐私性的结果表明,所提出的方案的有效性以及大量的数据节省,而不会损害数据传输的准确性,这有助于IOHT传感器设备的能源效率。

Privacy protection in electronic healthcare applications is an important consideration due to the sensitive nature of personal health data. Internet of Health Things (IoHT) networks have privacy requirements within a healthcare setting. However, these networks have unique challenges and security requirements (integrity, authentication, privacy and availability) must also be balanced with the need to maintain efficiency in order to conserve battery power, which can be a significant limitation in IoHT devices and networks. Data are usually transferred without undergoing filtering or optimization, and this traffic can overload sensors and cause rapid battery consumption when interacting with IoHT networks. This consequently poses restrictions on the practical implementation of these devices. As a solution to address the issues, this paper proposes a privacy-preserving two-tier data inference framework, this can conserve battery consumption by reducing the data size required to transmit through inferring the sensed data and can also protect the sensitive data from leakage to adversaries. Results from experimental evaluations on privacy show the validity of the proposed scheme as well as significant data savings without compromising the accuracy of the data transmission, which contributes to energy efficiency of IoHT sensor devices.

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