Reduce the Spread Risk of COVID-19 based on Clinical Fusion Data and Monitoring System in Wireless Sensor Network

Majed Hamed .., A. N. Rashid
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Abstract

The expression “COVID-19” has been the fiercest but most trending Google search since it first appeared in November 2019. Due to advances in mobile technology and sensors, Healthcare systems based on the Internet of Things are conceivable. Instead of the traditional reactive healthcare systems, these new healthcare systems can be proactive and preventive. This paper suggested a framework for real-time suspect detection based on the Internet of Things. In the early phases of predicting COVID-19, the framework evaluates the existence of the virus by extracting health variables obtained in real-time from sensors and other IoT devices, in order to better understand the behavior of the virus by collecting symptom data of COVID-19, In this paper, four machine learning models (Random Forest, Decision Tree, K-Nearest Neural Network, and Artificial Neural Network) are proposed, these data and applied as a machine learning model to obtain high diagnostic accuracy, however, it is noted that there is a problem when collecting clinical fusion data that is scarce and unbalanced, so a dataset augmented by Generative Adversarial Network (GAN) was used. Several algorithms achieved high levels of accuracy (ACC), including Random Forest (99%), and Decision Tree (99%), K-Nearest Neighbour (98%), and Artificial Neural Network (99%). These results show the ability of GANs to generate data and their ability to provide relevant data to efficiently manage Covid-19 and reduce the risk of its spread through accurate diagnosis of patients and informing health authorities of suspected cases.
基于临床融合数据和无线传感器网络监测系统降低新型冠状病毒传播风险
“COVID-19”一词自2019年11月首次出现以来,一直是最激烈但最热门的谷歌搜索。由于移动技术和传感器的进步,基于物联网的医疗保健系统是可以想象的。与传统的被动医疗保健系统不同,这些新的医疗保健系统可以是主动的和预防性的。本文提出了一种基于物联网的嫌疑人实时检测框架。在预测COVID-19的早期阶段,该框架通过提取传感器和其他物联网设备实时获取的健康变量来评估病毒的存在性,以便通过收集COVID-19的症状数据更好地了解病毒的行为。本文提出了随机森林、决策树、k -最近邻神经网络和人工神经网络四种机器学习模型。然而,在收集临床融合数据时存在缺乏和不平衡的问题,因此使用了生成对抗网络(GAN)增强的数据集。一些算法实现了高水平的准确性(ACC),包括随机森林(99%)、决策树(99%)、k近邻(98%)和人工神经网络(99%)。这些结果表明,gan能够生成数据并提供相关数据,通过准确诊断患者并向卫生当局通报疑似病例,有效管理Covid-19并降低其传播风险。
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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