Rahman Md Abdur, Hossain M Shamim
Department of Cyber Security and Forensic ComputingCollege of Computing and Cyber SciencesUniversity of Prince Mugrin Madinah 41499 Saudi Arabia.
Chair of Pervasive and Mobile Computing Saudi Arabia.
IEEE Internet Things J. 2021 Jan 12;8(21):15847-15854. doi: 10.1109/JIOT.2021.3051080. eCollection 2021 Nov 1.
Capturing psychological, emotional, and physiological states, especially during a pandemic, and leveraging the captured sensory data within the pandemic management ecosystem is challenging. Recent advancements for the Internet of Medical Things (IoMT) have shown promising results from collecting diversified types of such emotional and physical health-related data from the home environment. State-of-the-art deep learning (DL) applications can run in a resource-constrained edge environment, which allows data from IoMT devices to be processed locally at the edge, and performs inferencing related to in-home health. This allows health data to remain in the vicinity of the user edge while ensuring the privacy, security, and low latency of the inferencing system. In this article, we develop an edge IoMT system that uses DL to detect diversified types of health-related COVID-19 symptoms and generates reports and alerts that can be used for medical decision support. Several COVID-19 applications have been developed, tested, and deployed to support clinical trials. We present the design of the framework, a description of our implemented system, and the accuracy results. The test results show the suitability of the system for in-home health management during a pandemic.
捕捉心理、情绪和生理状态,尤其是在疫情期间,以及在疫情管理生态系统中利用所捕捉的感官数据具有挑战性。医疗物联网(IoMT)的最新进展表明,从家庭环境中收集各类与情绪和身体健康相关的数据取得了喜人的成果。先进的深度学习(DL)应用程序可以在资源受限的边缘环境中运行,这使得来自IoMT设备的数据能够在边缘进行本地处理,并执行与家庭健康相关的推理。这使得健康数据能够保留在用户边缘附近,同时确保推理系统的隐私性、安全性和低延迟。在本文中,我们开发了一个边缘IoMT系统,该系统使用深度学习来检测各类与健康相关的COVID-19症状,并生成可用于医疗决策支持的报告和警报。已经开发、测试并部署了多个COVID-19应用程序以支持临床试验。我们展示了框架的设计、对我们所实现系统的描述以及准确性结果。测试结果表明该系统适用于疫情期间的家庭健康管理。