基于雾计算增强物联网m-ary数据聚合树最低共同祖先的COVID-19大流行接触者追踪

A. Khan, M. Chishti
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引用次数: 0

摘要

本研究旨在利用雾计算增强物联网中m-ary数据聚合树中的最低共同祖先技术来辅助COVID-19的接触者追踪。物联网(IoT)的一个有希望的特点是数据聚合,可以用来拯救世界免受当前COVID-19大流行的危机。由于感染该疾病的患者数量已经非常庞大,因此与患者不同属性相关的数据,如患者热像记录和患者以前的健康记录将是巨大的。采用数据聚合技术对患者的传感数据进行有效的聚合和分析。在从汇总数据中得出的各种推论中,最重要的一个是接触追踪。COVID-19的接触者追踪是指找出已经感染或曾感染该疾病的个人或群体。设计/方法/方法作者建议利用雾计算增强物联网中多数据聚合树中的最低共同祖先技术,帮助医疗保健专家在特定地区或社区进行接触者追踪。在这项研究中,作者认为,在COVID-19大流行的当前情况下,找到感染过一群人的人或一群人是极其重要的。找到已经感染或正在感染他人的个人可以通过阻止社区转移来阻止大流行的恶化。在疫情激增的社区,收集所有出现症状的人或患者的样本,并将其存储在一个基于树的结构中,并按时间进行分类。COVID-19的接触者追踪涉及发现感染或被该疾病感染的一个人或一群人。作者利用雾计算增强物联网中多数据聚合树中的最低共同祖先技术,帮助医疗保健专家在特定地区或社区进行接触者追踪。这些模拟是随机在一组人身上进行的。算法1给出的算法在仿真模型的0级采集的样本上执行,为了对数据进行聚合和传输,作者在1级实现了算法2。结果表明,采用本文设计的方法可以很容易地从样品中识别出载体。实践意义本文提出的高效接触者追踪机制可以减少社区转移,为卫生保健专家抗击COVID-19大流行提供帮助。在当前危机时刻,有效抗击COVID-19并将人类从大流行中拯救出来具有巨大的社会意义。原创性/价值据作者所知,在雾计算增强的物联网中,首次提出了基于m-ary数据聚合树的最低共同祖先技术,以接触追踪COVID-19传播过程中感染或被感染的个体。根据特定社区中人们之间的相互作用/联系(如位置、朋友和时间)创建图形或m- mary树,作者可以尝试遍历它,以找出感染任何两个人或一组人的人,或者利用在m- mary树中查找最低共同祖先的技术来感染。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On contact tracing in COVID-19 (SARS-CoV-2) pandemic using lowest common ancestor in m-ary data aggregation tree in the fog-computing enhanced internet of things
Purpose The purpose of this study is to exploit the lowest common ancestor technique in an m-ary data aggregation tree in the fog computing-enhanced IoT to assist in contact tracing in COVID-19. One of the promising characteristics of the Internet of Things (IoT) that can be used to save the world from the current crisis of COVID-19 pandemic is data aggregation. As the number of patients infected by the disease is already huge, the data related to the different attributes of patients such as patient thermal image record and the previous health record of the patient is going to be gigantic. The authors used the technique of data aggregation to efficiently aggregate the sensed data from the patients and analyse it. Among the various inferences drawn from the aggregated data, one of the most important is contact tracing. Contact tracing in COVID-19 deals with finding out a person or a group of persons who have infected or were infected by the disease. Design/methodology/approach The authors propose to exploit the technique of lowest common ancestor in an m-ary data aggregation tree in the Fog-Computing enhanced IoT to help the health-care experts in contact tracing in a particular region or community. In this research, the authors argue the current scenario of COVID-19 pandemic, finding the person or a group of persons who has/have infected a group of people is of extreme importance. Finding the individuals who have been infected or are infecting others can stop the pandemic from worsening by stopping the community transfer. In a community where the outbreak has spiked, the samples from either all the persons or the patients showing the symptoms are collected and stored in an m-ary tree-based structure sorted over time. Findings Contact tracing in COVID-19 deals with finding out a person or a group of persons who have infected or were infected by the disease. The authors exploited the technique of lowest common ancestor in an m-ary data aggregation tree in the fog-computing-enhanced IoT to help the health-care experts in contact tracing in a particular region or community. The simulations were carried randomly on a set of individuals. The proposed algorithm given in Algorithm 1 is executed on the samples collected at level-0 of the simulation model, and to aggregate the data and transmit the data, the authors implement Algorithm 2 at the level-1. It is found from the results that a carrier can be easily identified from the samples collected using the approach designed in the paper. Practical implications The work presented in the paper can aid the health-care experts fighting the COVID-19 pandemic by reducing the community transfer with efficient contact tracing mechanism proposed in the paper. Social implications Fighting COVID-19 efficiently and saving the humans from the pandemic has huge social implications in the current times of crisis. Originality/value To the best of the authors’ knowledge, the lowest common ancestor technique in m-ary data aggregation tree in the fog computing-enhanced IoT to contact trace the individuals who have infected or were infected during the transmission of COVID-19 is first of its kind proposed. Creating a graph or an m-ary tree based on the interactions/connections between the people in a particular community like location, friends and time, the authors can attempt to traverse it to find out who infected any two persons or a group of persons or was infected by exploiting the technique of finding out the lowest common ancestor in a m-ary tree.
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