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基于物联网的云框架用于控制埃博拉病毒爆发。

IoT-based cloud framework to control Ebola virus outbreak.

作者信息

Sareen Sanjay, Sood Sandeep K, Gupta Sunil Kumar

机构信息

1Computer Section, Guru Nanak Dev University, Amritsar, Punjab India.

2I. K. Gujral Punjab Technical University, Kapurthala, Punjab India.

出版信息

J Ambient Intell Humaniz Comput. 2018;9(3):459-476. doi: 10.1007/s12652-016-0427-7. Epub 2016 Oct 20.

Abstract

Ebola is a deadly infectious virus that spreads very quickly through human-to-human transmission and sometimes death. The continuous detection and remote monitoring of infected patients are required in order to prevent the spread of Ebola virus disease (EVD). Healthcare services based on Internet of Things (IoT) and cloud computing technologies are emerging as a more effective and proactive solution which provides remote continuous monitoring of patients. A novel architecture based on Radio Frequency Identification Device (RFID), wearable sensor technology, and cloud computing infrastructure is proposed for the detection and monitoring of Ebola infected patients. The aim of this work is to prevent the spreading of the infection at the early stage of the outbreak. The J48 decision tree is used to evaluate the level of infection in a user depending on his symptoms. RFID is used to automatically sense the close proximity interactions (CPIs) between users. Temporal Network Analysis (TNA) is applied to describe and monitor the current state of the outbreak using the CPI data. The performance and accuracy of our proposed model are evaluated on Amazon EC2 cloud using synthetic data of two million users. Our proposed model provided 94 % accuracy for the classification and 92 % of the resource utilization.

摘要

埃博拉是一种致命的传染性病毒,通过人际传播扩散速度极快,有时会导致死亡。为防止埃博拉病毒病(EVD)传播,需要对感染患者进行持续检测和远程监测。基于物联网(IoT)和云计算技术的医疗服务正成为一种更有效、更主动的解决方案,可对患者进行远程持续监测。本文提出了一种基于射频识别设备(RFID)、可穿戴传感器技术和云计算基础设施的新型架构,用于检测和监测埃博拉感染患者。这项工作的目的是在疫情爆发的早期阶段防止感染扩散。J48决策树用于根据用户症状评估其感染程度。RFID用于自动感知用户之间的近距离交互(CPl)。应用时间网络分析(TNA),利用CPl数据描述和监测疫情的当前状态。我们使用200万用户的合成数据在亚马逊EC2云上评估了所提模型的性能和准确性。我们提出的模型在分类方面的准确率为94%,资源利用率为92%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d507/7091278/92f23be0a10c/12652_2016_427_Fig1_HTML.jpg

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