Laboratório de Ciência de Dados e Inteligência Artificial Universidade de Fortaleza, Fortaleza, Ceará, 60811-905, Brazil.
Programa de Pós Graduação em Informática Aplicada Universidade de Fortaleza, Fortaleza, Ceará, 60811-905, Brazil.
Sci Rep. 2023 Apr 8;13(1):5761. doi: 10.1038/s41598-023-32786-z.
Human mobility plays a key role in the dissemination of infectious diseases around the world. However, the complexity introduced by commuting patterns in the daily life of cities makes such a role unclear, especially at the intracity scale. Here, we propose a multiplex network fed with 9 months of mobility data with more than 107 million public bus validations in order to understand the relation between urban mobility and the spreading of COVID-19 within a large city, namely, Fortaleza in the northeast of Brazil. Our results suggest that the shortest bus rides in Fortaleza, measured in the number of daily rides among all neighborhoods, decreased [Formula: see text]% more than the longest ones after an epidemic wave. Such a result is the opposite of what has been observed at the intercity scale. We also find that mobility changes among the neighborhoods are synchronous and geographically homogeneous. Furthermore, we find that the most central neighborhoods in mobility are the first targets for infectious disease outbreaks, which is quantified here in terms of the positive linear relation between the disease arrival time and the average of the closeness centrality ranking. These central neighborhoods are also the top neighborhoods in the number of reported cases at the end of an epidemic wave as indicated by the exponential decay behavior of the disease arrival time in relation to the number of accumulated reported cases with decay constant [Formula: see text] days. We believe that these results can help in the development of new strategies to impose restriction measures in the cities guiding decision-makers with smart actions in public health policies, as well as supporting future research on urban mobility and epidemiology.
人类的流动性在全球传染病的传播中起着关键作用。然而,城市日常生活中的通勤模式所带来的复杂性使得这种作用变得不明确,尤其是在城市内部。在这里,我们提出了一个使用 9 个月的移动数据的复合格网,该数据包含了超过 1070 万次公共汽车验证,用于了解城市流动性与 COVID-19 在大城市(即巴西东北部的福塔莱萨)内部传播之间的关系。我们的结果表明,在福塔莱萨,最短的公共汽车车程(按所有社区之间的日常车程数衡量)比流行波后的最长车程减少了 [Formula: see text]%。这一结果与城市间尺度上的观察结果相反。我们还发现,社区之间的流动性变化是同步和地理均匀的。此外,我们发现,在流动性方面最中心的社区是传染病爆发的第一批目标,这可以用疾病到达时间和接近中心性排名平均值之间的正线性关系来量化。这些中心社区也是报告病例数量最多的社区,因为疾病到达时间与报告病例的累计数量之间呈指数衰减关系,衰减常数为 [Formula: see text] 天。我们相信,这些结果可以帮助制定新的城市限制措施战略,为决策者提供公共卫生政策方面的明智行动,并支持未来对城市流动性和流行病学的研究。