利用物联网和磁共振技术检测、跟踪和预防无症状COVID-19患者的计算生物医学框架

IF 1.4 4区 工程技术 Q2 ENGINEERING, MULTIDISCIPLINARY International Journal for Multiscale Computational Engineering Pub Date : 2023-01-01 DOI:10.1615/intjmultcompeng.2023050009
PRASANNA R, Ragupathi T, Ganesh Kumar N, Banu Priya Prathaban, Aswath S, Rajesh kanna R
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引用次数: 0

摘要

本文提出了一种融合物联网和混合现实技术的新型生物医学系统,用于检测、跟踪和阻止无症状感染者进入公共场所,防止COVID-19感染的进一步传播。无症状感染者是病毒传播最活跃的载体,而接触者追踪和无症状感染者的接触者追踪是缓解病毒传播最具挑战性的条件。该系统可以在剧院、商场、火车站、机场、市场、会议场所等公共场所实施,对无症状感染者进行筛查并限制其入境。在大流行期间遏制或减少COVID感染的传播是全球最具挑战性的因素。然而,通过该系统,发现和预防无症状患者将大大减少疫情期间COVID感染的传播。该系统包括一个基于物联网的传感系统,用于获取当前传感器值,以及一个MR视觉软件系统,用于从服务器检索预先保存的传感器值。MR视觉系统将当前传感器值与人的服务器值进行比较,并准确显示允许人员的绿色MR图像和限制无症状COVID患者的红色MR图像。
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Computational Biomedical Framework Using IoT and MR for Detecting, Tracking and Preventing Asymptomatic COVID-19 Patients
This article proposes a novel biomedical system integrating Internet of Things (IoT) and Mixed Reality (MR) technologies for detecting, tracking and preventing asymptomatic COVID patients from entering into public places which prevents the further spread of COVID-19 infection. Asymptomatic patients are the very active carriers for virus transmission and the most challenging condition in mitigating the virus transmission are contact tracking and contact tracing of asymptomatic patients. The proposed system can be implemented in public places such as theatres, malls, railway stations, airport, markets, conferences, and other gatherings for screening people to detect asymptomatic COVID patients and restrict them from entry. The arrest or decrease in spread of COVID infection during pandemic situation is the most challenging factor around the globe. However, with the proposed system, detection and prevention of asymptomatic COVID patients will result in drastic decrease in the spread of COVID infection during pandemic situation. The proposed system comprises of an IoT based sensing system to get the current sensor values and an MR vision software system to retrieve the pre-saved sensor values from the server. The MR vision system compares the present sensor values and the server values of the human and displays accurately with green MR images for permitted persons and red MR images for restricted asymptomatic COVID patients.
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来源期刊
CiteScore
3.40
自引率
14.30%
发文量
44
审稿时长
>12 weeks
期刊介绍: The aim of the journal is to advance the research and practice in diverse areas of Multiscale Computational Science and Engineering. The journal will publish original papers and educational articles of general value to the field that will bridge the gap between modeling, simulation and design of products based on multiscale principles. The scope of the journal includes papers concerned with bridging of physical scales, ranging from the atomic level to full scale products and problems involving multiple physical processes interacting at multiple spatial and temporal scales. The emerging areas of computational nanotechnology and computational biotechnology and computational energy sciences are of particular interest to the journal. The journal is intended to be of interest and use to researchers and practitioners in academic, governmental and industrial communities.
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