Bilandi Naveen, Verma Harsh K, Dhir Renu
Department of Computer Science and Engineering, National Institute of Technology, Jalandhar, India.
Department of Computer Science and Engineering, DAV University, Jalandhar, India.
Arab J Sci Eng. 2021;46(9):8203-8222. doi: 10.1007/s13369-021-05411-2. Epub 2021 Feb 26.
The coronaviruses are a deadly family of epidemic viruses that can spread from one individual to another very quickly, infecting masses. The literature on epidemics indicates that the early diagnosis of a coronavirus infection can lead to a reduction in mortality rates. To prevent coronavirus disease 2019 (COVID-19) from spreading, the regular identification and monitoring of infected patients are needed. In this regard, wireless body area networks (WBANs) can be used in conjunction with machine learning and the Internet of Things (IoT) to identify and monitor the human body for health-related information, which in turn can aid in the early diagnosis of diseases. This paper proposes a novel coronavirus-body area network (CoV-BAN) model based on IoT technology as a real-time health monitoring system for the detection of the early stages of coronavirus infection using a number of wearable biosensors to examine the health status of the patient. The proposed CoV-BAN model is tested with five machine learning-based classification methods, including random forest, logistic regression, Naive Bayes, support vector machine and multi-layer perceptron classifiers, to optimize the accuracy of the diagnosis of COVID-19. For the long-term sustainability of the sensor devices, the development of energy-efficient WBAN is critical. To address this issue, a long-range (LoRa)-based IoT program is used to receive biosensor signals from the patient and transmit them to the cloud directly for monitoring. The experimental results indicate that the proposed model using the random forest classifier outperforms models using the other classifiers, with an average accuracy of 88.6%. In addition, power consumption is reduced when LoRa technology is used as a relay node.
冠状病毒是一类致命的流行性病毒,能够在人与人之间迅速传播,感染众多人群。关于流行病的文献表明,冠状病毒感染的早期诊断可降低死亡率。为防止2019冠状病毒病(COVID-19)传播,需要对感染患者进行定期识别和监测。在这方面,无线体域网(WBAN)可与机器学习和物联网(IoT)结合使用,以识别和监测人体的健康相关信息,进而有助于疾病的早期诊断。本文提出了一种基于物联网技术的新型冠状病毒体域网(CoV-BAN)模型,作为一种实时健康监测系统,使用多个可穿戴生物传感器检测冠状病毒感染的早期阶段,以检查患者的健康状况。所提出的CoV-BAN模型使用包括随机森林、逻辑回归、朴素贝叶斯、支持向量机和多层感知器分类器在内的五种基于机器学习的分类方法进行测试,以优化COVID-19诊断的准确性。为了传感器设备的长期可持续性,开发节能型WBAN至关重要。为解决这一问题,使用基于长距离(LoRa)的物联网程序从患者接收生物传感器信号,并将其直接传输到云端进行监测。实验结果表明,所提出的使用随机森林分类器的模型优于使用其他分类器的模型,平均准确率为88.6%。此外,当使用LoRa技术作为中继节点时,功耗会降低。