Department of Environmental Health and Engineering, Bloomberg School of Public Health, Johns Hopkins University, Baltimore, Maryland.
School of Engineering and Computing Sciences, New York Institute of Technology, Vancouver, British Columbia, Canada.
Am J Prev Med. 2021 May;60(5):614-620. doi: 10.1016/j.amepre.2020.11.016. Epub 2021 Jan 26.
This study aims to determine whether subway ridership and built environmental factors, such as population density and points of interests, are linked to the per capita COVID-19 infection rate in New York City ZIP codes, after controlling for racial and socioeconomic characteristics.
Spatial lag models were employed to model the cumulative COVID-19 per capita infection rate in New York City ZIP codes (N=177) as of April 1 and May 25, 2020, accounting for the spatial relationships among observations. Both direct and total effects (through spatial relationships) were reported.
This study distinguished between density and crowding. Crowding (and not density) was associated with the higher infection rate on April 1. Average household size was another significant crowding-related variable in both models. There was no evidence that subway ridership was related to the COVID-19 infection rate. Racial and socioeconomic compositions were among the most significant predictors of spatial variation in COVID-19 per capita infection rates in New York City, even more so than variables such as point-of-interest rates, density, and nursing home bed rates.
Point-of-interest destinations not only could facilitate the spread of virus to other parts of the city (through indirect effects) but also were significantly associated with the higher infection rate in their immediate neighborhoods during the early stages of the pandemic. Policymakers should pay particularly close attention to neighborhoods with a high proportion of crowded households and these destinations during the early stages of pandemics.
本研究旨在确定在控制种族和社会经济特征后,地铁出行量和建成环境因素(如人口密度和兴趣点)与纽约市邮政编码的人均 COVID-19 感染率之间是否存在关联。
采用空间滞后模型对截至 2020 年 4 月 1 日和 5 月 25 日纽约市邮政编码的 COVID-19 人均累计感染率(N=177)进行建模,以解释观测值之间的空间关系。报告了直接和总效应(通过空间关系)。
本研究区分了密度和拥挤程度。拥挤(而非密度)与 4 月 1 日的高感染率相关。在两个模型中,平均家庭规模是另一个与拥挤相关的重要变量。没有证据表明地铁出行量与 COVID-19 感染率有关。种族和社会经济构成是纽约市 COVID-19 人均感染率空间变化的最重要预测因素之一,甚至比兴趣点率、密度和养老院床位率等变量更为重要。
兴趣点目的地不仅可以通过间接效应促进病毒传播到城市的其他地区,而且在大流行的早期阶段,它们与附近地区的高感染率显著相关。政策制定者在大流行的早期阶段应特别关注拥挤家庭比例较高的社区和这些目的地。