Iyer Shankar, Karrer Brian, Citron Daniel T, Kooti Farshad, Maas Paige, Wang Zeyu, Giraudy Eugenia, Medhat Ahmed, Dow P Alex, Pompe Alex
Meta, 1 Hacker Way, Menlo Park, CA 94025, United States.
Meta, 1 Hacker Way, Menlo Park, CA 94025, United States.
Epidemics. 2023 Mar;42:100663. doi: 10.1016/j.epidem.2022.100663. Epub 2023 Jan 10.
To understand and model public health emergencies, epidemiologists need data that describes how humans are moving and interacting across physical space. Such data has traditionally been difficult for researchers to obtain with the temporal resolution and geographic breadth that is needed to study, for example, a global pandemic. This paper describes Colocation Maps, which are spatial network datasets that have been developed within Meta's Data For Good program. These Maps estimate how often people from different regions are colocated: in particular, for a pair of geographic regions x and y, these Maps estimate the rate at which a randomly chosen person from x and a randomly chosen person from y are simultaneously located in the same place during a randomly chosen minute in a given week. These datasets are well suited to parametrize metapopulation models of disease spread or to measure temporal changes in interactions between people from different regions; indeed, they have already been used for both of these purposes during the COVID-19 pandemic. In this paper, we show how Colocation Maps differ from existing data sources, describe how the datasets are built, provide examples of their use in compartmental modeling, and summarize ideas for further development of these and related datasets. Among the findings of this study, we observe that a pair of regions can exhibit high colocation despite few people moving between those regions. Additionally, for the purposes of clarifying how to interpret and utilize Colocation Maps, we scrutinize the Maps' built-in assumptions about representativeness and contact heterogeneity.
为了理解和模拟突发公共卫生事件,流行病学家需要能够描述人类在物理空间中移动和互动方式的数据。传统上,研究人员很难获取具有所需时间分辨率和地理广度的数据,例如用于研究全球大流行的数据。本文介绍了共置地图,它们是在Meta的“数据为善”计划中开发的空间网络数据集。这些地图估计来自不同地区的人共置的频率:具体来说,对于一对地理区域x和y,这些地图估计在给定一周内的随机一分钟内,从x中随机选择的一个人和从y中随机选择的一个人同时位于同一地点的速率。这些数据集非常适合为疾病传播的集合种群模型设置参数,或测量不同地区人群之间互动的时间变化;事实上,在新冠疫情期间,它们已经被用于这两个目的。在本文中,我们展示了共置地图与现有数据源的不同之处,描述了数据集的构建方式,提供了它们在 compartmental 建模中的使用示例,并总结了进一步开发这些及相关数据集的思路。在本研究的发现中,我们观察到,尽管在两个地区之间流动的人很少,但这两个地区仍可能呈现出高共置率。此外,为了阐明如何解释和利用共置地图,我们仔细审查了地图中关于代表性和接触异质性的内在假设。