Impact of network centrality and income on slowing infection spread after outbreaks.

IF 1.3 Q3 COMPUTER SCIENCE, THEORY & METHODS
Shiv G Yücel, Rafael H M Pereira, Pedro S Peixoto, Chico Q Camargo
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引用次数: 1

Abstract

The COVID-19 pandemic has shed light on how the spread of infectious diseases worldwide are importantly shaped by both human mobility networks and socio-economic factors. However, few studies look at how both socio-economic conditions and the complex network properties of human mobility patterns interact, and how they influence outbreaks together. We introduce a novel methodology, called the Infection Delay Model, to calculate how the arrival time of an infection varies geographically, considering both effective distance-based metrics and differences in regions' capacity to isolate-a feature associated with socio-economic inequalities. To illustrate an application of the Infection Delay Model, this paper integrates household travel survey data with cell phone mobility data from the São Paulo metropolitan region to assess the effectiveness of lockdowns to slow the spread of COVID-19. Rather than operating under the assumption that the next pandemic will begin in the same region as the last, the model estimates infection delays under every possible outbreak scenario, allowing for generalizable insights into the effectiveness of interventions to delay a region's first case. The model sheds light on how the effectiveness of lockdowns to slow the spread of disease is influenced by the interaction of mobility networks and socio-economic levels. We find that a negative relationship emerges between network centrality and the infection delay after a lockdown, irrespective of income. Furthermore, for regions across all income and centrality levels, outbreaks starting in less central locations were more effectively slowed by a lockdown. Using the Infection Delay Model, this paper identifies and quantifies a new dimension of disease risk faced by those most central in a mobility network.

Abstract Image

Abstract Image

Abstract Image

网络中心性和收入对疫情后减缓感染传播的影响。
2019冠状病毒病大流行揭示了人类流动网络和社会经济因素如何在很大程度上影响全球传染病的传播。然而,很少有研究着眼于社会经济条件和人类流动模式的复杂网络特性如何相互作用,以及它们如何共同影响疫情。我们引入了一种新的方法,称为感染延迟模型,来计算感染的到达时间在地理上是如何变化的,同时考虑了基于距离的有效度量和区域隔离能力的差异——这是与社会经济不平等相关的特征。为了说明感染延迟模型的应用,本文将家庭旅行调查数据与来自圣保罗大都会地区的手机移动数据相结合,以评估封锁对减缓COVID-19传播的有效性。该模型不是假设下一次大流行将在上一次大流行的同一地区开始,而是在每一种可能的爆发情景下估计感染延迟,从而可以对延迟一个地区第一例病例的干预措施的有效性进行概括性的了解。该模型揭示了封锁减缓疾病传播的有效性如何受到流动网络和社会经济水平相互作用的影响。我们发现,与收入无关,封锁后的网络中心性与感染延迟之间存在负相关关系。此外,对于所有收入和中心性水平的地区,从中心位置较低的地区开始的疫情通过封锁得到了更有效的减缓。利用感染延迟模型,本文确定并量化了移动网络中最核心人群所面临的疾病风险的新维度。
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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来源期刊
Applied Network Science
Applied Network Science Multidisciplinary-Multidisciplinary
CiteScore
4.60
自引率
4.50%
发文量
74
审稿时长
5 weeks
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