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Identifying Highly Influential Travellers for Spreading Disease on a Public Transport System

机译:确定在公共交通系统中传播疾病的极有影响力的旅行者

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The recent outbreak of a novel coronavirus and its rapid spread underlines the importance of understanding human mobility. Enclosed spaces, such as public transport vehicles (e.g. buses and trains), offer a suitable environment for infections to spread widely and quickly. Investigating the movement patterns and the physical encounters of individuals on public transit systems is thus critical to understand the drivers of infectious disease outbreaks. For instance, previous work has explored the impact of recurring patterns inherent in human mobility on disease spread, but has not considered other dimensions such as the distance travelled or the number of encounters. Here, we consider multiple mobility dimensions simultaneously to uncover critical information for the design of effective intervention strategies. We use one month of citywide smart card travel data collected in Sydney, Australia to classify bus passengers along three dimensions, namely the degree of exploration, the distance travelled and the number of encounters. Additionally, wes imulate disease spread on the transport network and trace the infection paths. We investigate in detail the transmissions between the classified groups while varying the infection probability and the suspension time of pathogens. Our results show that characterizing individuals along multiple dimensions simultaneously uncovers a complex infection interplay between the different groups of passengers, that would remain hidden when considering only a single dimension. We also identify groups that are more influential than others given specific disease characteristics, which can guide containment and vaccination efforts.
机译:最近爆​​发的新型冠状病毒及其迅速传播,凸显了了解人类活动能力的重要性。诸如公共交通工具(例如公共汽车和火车)的封闭空间为感染的广泛传播和快速传播提供了合适的环境。因此,调查个人在公共交通系统上的运动方式和身体相遇对于了解传染病暴发的驱动因素至关重要。例如,先前的工作已经探索了人类活动固有的重复模式对疾病传播的影响,但并未考虑其他方面,例如行进的距离或遭遇的次数。在这里,我们同时考虑了多个流动维度,以发现关键信息,以设计有效的干预策略。我们使用在澳大利亚悉尼收集的一个月的全市智能卡旅行数据,按照探索度,旅行距离和遭遇次数三个维度对公交乘客进行分类。此外,我们模仿疾病在运输网络上的传播并追踪感染路径。我们详细研究分类组之间的传播,同时改变病原体的感染概率和悬浮时间。我们的结果表明,同时表征多个维度的人会发现不同组乘客之间的复杂感染相互作用,而仅考虑单个维度时,这种相互作用会一直隐藏。我们还确定了具有特定疾病特征的人群,这些人群比其他人群更具影响力,可以指导遏制和疫苗接种工作。

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