Contact Tracing of Infectious Diseases Using Wi-Fi Signals and Machine Learning Classification

A. Narzullaev, Z. Muminov, Mavlutdin Narzullaev
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引用次数: 7

Abstract

There is just a handful of interventions proven to curb the spread of infectious diseases. One of them is contact tracing that involves reaching infected people to investigate where they might have been infected and whom they might have exposed to the virus. Contact tracing has been identified as a core disease control measure by the World Health Organization and has been exercised by state health agencies for decades. In this research, we proposed a new contact tracing method based on machine learning classification algorithms, for infectious diseases, such as COVID-19. The proposed method uses the Wi-Fi signals data from a possible contact and a confirmed patient's smartphones to detect whether the two shared the same physical space. Simulation results show up to 95% tracing accuracy depending on area size.
基于Wi-Fi信号和机器学习分类的传染病接触追踪
只有少数干预措施被证明可以遏制传染病的传播。其中之一是接触者追踪,包括接触感染者,调查他们可能被感染的地方以及他们可能接触过病毒的人。接触者追踪已被世界卫生组织确定为一项核心疾病控制措施,并已由国家卫生机构实施了数十年。在这项研究中,我们提出了一种新的基于机器学习分类算法的接触者追踪方法,用于传染病,如COVID-19。该方法使用来自潜在接触者和确诊患者智能手机的Wi-Fi信号数据来检测两者是否共享同一物理空间。仿真结果表明,随面积大小的变化,跟踪精度可达95%。
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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