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Privacy-Aware Energy-Efficient Framework Using the Internet of Medical Things for COVID-19

机译:隐私感知节能框架使用Covid-19的医疗互联网

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摘要

SARS-CoV2 has caused a coronavirus disease known as COVID-19. It has become a pandemic all over the world that highly demands proper data interpretation to expand research findings. In the medical and healthcare systems, the Internet of Medical Things devices play a crucial role to gain the autonomous operation that provides an eco-friendly condition to medical practitioners and patients. In an emergency, healthcare-related data including heart rate, blood pressure, oxygen level, and temperature are transmitted to assess the condition of patients. It deploys low-power sensor nodes on the patient's body that periodically generates an analysis report to the medical center through the mobile sink. However, it is still challenging to analyze security risk and energy consumption. In the issue of unbalanced energy consumption, the low-power sensor nodes may degrade the delivery time of data transmission to the remote data centers. Therefore, this article presents a privacy-aware energy-efficient framework (P-AEEF) protocol to secure the medical information of the patient. The prime objective is to minimize the communication cost to improve the security features and energy efficiency against unauthentic access. The simulation result reveals that the proposed P-AEEF provides ~88.25 percent better performance efficiency than the other state-of-the-art approaches.
机译:SARS-COV2导致称为Covid-19的冠状病毒病。它已成为世界各地的大流行,非常需要适当的数据解释来扩展研究结果。在医疗和医疗保健系统中,医疗器械设备的互联网发挥着至关重要的作用,以获得对医疗从业者和患者提供环保条件的自主运行。在紧急情况下,传输包括心率,血压,氧气水平和温度的医疗保健相关数据以评估患者的病症。它在患者身体上部署低功耗传感器节点,以通过移动接收器定期为医疗中心生成分析报告。但是,分析安全风险和能源消耗仍在挑战。在不平衡能耗的问题中,低功率传感器节点可能会降低数据传输到远程数据中心的递送时间。因此,本文介绍了隐私感知节能框架(P-AEEF)协议,以确保患者的医疗信息。主要目标是最大限度地减少通信成本,以提高对未实用访问的安全特征和能源效率。仿真结果表明,拟议的P-AEEF提供比其他最先进的方法更好的性能效率〜88.25%。

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