IntelliTrace:基于传染病传播特征的智能接触追踪方法

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Soorim Yang, Kyoung-Hwan Kim, Hye-Ryeong Jeong, Seokjun Lee, Jaeho Kim
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引用次数: 0

摘要

COVID-19 大流行凸显了快速追踪接触者作为有效抑制传染病传播手段的必要性。现有的接触者追踪方法利用基于位置或距离的检测来识别与确诊患者的接触者。现有的接触追踪方法在实际应用中遇到了挑战,原因是即使是感染风险较低的偶然接触也会被归类为密切接触。出现这一问题的原因是病毒的传播特性尚未得到充分考虑。本研究通过提出 IntelliTrace 解决了上述问题,这是一种智能方法,引入了方法上的创新,优先考虑共同的环境背景,而不是物理上的近距离接触。这种方法通过考虑病毒的传播特性,更准确地评估潜在的传播事件,并特别关注 COVID-19。在这项研究中,我们利用机器学习技术为室内环境提供了基于空间的室内 Wi-Fi 接触追踪,为室外环境提供了基于轨迹的室外 GPS 接触追踪。在室内环境中,根据用户是否与确诊案例处于同一空间来检测联系。在室外环境中,我们根据人们的同伴状态(如轨迹中的相同动作)进行判断,从而检测出联系人。在为期一个月的实验中,28 名参与者在校园内安装了智能手机应用程序,我们利用这些数据集来训练和验证所提出的暴露检测方法的性能。实验结果表明,IntelliTrace 在室内环境中的 F1 得分率为 86.84%,在室外环境中为 94.94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IntelliTrace: Intelligent Contact Tracing Method Based on Transmission Characteristics of Infectious Disease
The COVID-19 pandemic has underscored the necessity for rapid contact tracing as a means to effectively suppress the spread of infectious diseases. Existing contact tracing methods leverage location-based or distance-based detection to identify contact with a confirmed patient. Existing contact tracing methods have encountered challenges in practical applications, stemming from the tendency to classify even casual contacts, which carry a low risk of infection, as close contacts. This issue arises because the transmission characteristics of the virus have not been fully considered. This study addresses the above problem by proposing IntelliTrace, an intelligent method that introduces methodological innovations prioritizing shared environmental context over physical proximity. This approach more accurately assesses potential transmission events by considering the transmission characteristics of the virus, with a special focus on COVID-19. In this study, we present space-based indoor Wi-Fi contact tracing using machine learning for indoor environments and trajectory-based outdoor GPS contact tracing for outdoor environments. For an indoor environment, a contact is detected based on whether users are in the same space with the confirmed case. For an outdoor environment, we detect contact through judgments based on the companion statuses of people, such as the same movements in their trajectories. The datasets obtained from 28 participants who installed the smartphone application during a one-month experiment in a campus space were utilized to train and validate the performance of the proposed exposure-detection method. As a result of the experiment, IntelliTrace exhibited an F1 score performance of 86.84% in indoor environments and 94.94% in outdoor environments.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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