启用医疗物联网(IOMT)的流行病期间传染病控制第三方监测模型

A. I. Erike, C. O. Ikerionwu, Y. U. Mshelia, F. O. Elei
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引用次数: 0

摘要

传染病对社会和整个世界的发展构成了极大的威胁。随着猴痘、拉沙热、非典、COVID-19 等疾病的多次爆发,全球经济受到了严重影响。与类似疾病爆发相关的转移率和死亡率令人震惊。本研究提出了一种利用医疗物联网(IoMT)开发第三方通知模型的新方法。该模型利用 IoMT 无处不在的连接性,即使是普通人也能在指定范围内收到传染病媒介出现的通知。包括云和网络 API 块、医疗保健提供商管理、物联网传感器和通知块在内的四层架构构成了该模型的基石。研究的重点是开发一个位置跟踪设备(LTD)原型,该原型结合了哈弗辛公式,使用由位置跟踪设备提供的位置数据作为输入参数,在边缘进行个人之间的实时距离计算。数据接收率的优化基于人类的平均步行速度,以提高系统的响应速度。原型测试结果表明,平均响应延迟时间为 4.68 秒,相当于与实际矢量距离计算偏差约 6.85 米。研究实施面临的挑战包括互联网连接速度、网络可用性和地形。尽管存在这些挑战,启用 IoMT 的模型为传染病载体监测引入了一种前景广阔的方法,将个性化的载体/病媒存在感知与疾病控制生态系统中的相关风险结合在一起。因此,在流行病期间,每个用户都可以使用 "LTD "来帮助追踪用户与症状患者的距离,从而在流行病期间帮助控制传染病的传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Internet of medical things (IOMT) enabled third-party monitoring model for infectious diseases control during epidemics
Infectious diseases pose a very significant threat to development of the society and the world at large. With several outbreaks of diseases like Monkeypox, Lassa fever, SARS, COVID-19, etc, the global economy was grossly affected. The rate of transfer and mortality associated with similar outbreaks is alarming. This research presents a novel approach utilizing the Internet of Medical Things (IoMT) to develop a third-party notification model. This model uses IoMT's ubiquitous connectivity to notify even ordinary individuals of the presence of an infectious disease vector within a specified range. A four-tier architecture, including cloud and web API blocks, healthcare provider management, IoT sensory, and notification blocks forms the bedrock of the model. The research focuses on developing a Location Tracking Device (LTD) prototype that incorporates the Haversine formula for real-time distance calculation between individuals performed at the edge using the location data supplied by the LTDs as input parameters. The optimization of data reception rates was based on the average human walking speed in order to enhance response time of the system. Results from testing the prototype demonstrate an average of 4.68s response delay which corresponds to an offset of about 6.85m from the real vector distance calculation. The research implementation challenges include the internet connection speed, network availability, and topography. Despite these challenges, the IoMT-enabled model introduces a promising approach to infectious disease-carrier monitoring, integrating personalized carrier/vector-presence awareness with associated risks within the disease control ecosystem. Hence, every user can use the LTD during an epidemic to help track the user’s nearness to a symptomatic person thereby helping to control the spread of infectious diseases during epidemics.
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来源期刊
CiteScore
0.10
自引率
0.00%
发文量
126
审稿时长
11 weeks
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