Graduate School of Business at Columbia University, 419 Uris Hall, 3022 Broadway, New York 10027, NY, United States.
Management Science & Engineering Masters Program at Columbia University, United States.
Int J Infect Dis. 2021 Jan;102:509-516. doi: 10.1016/j.ijid.2020.10.063. Epub 2020 Nov 17.
With an eye toward possible public policy implications, our objective is to identify the socio-economic and demographic factors that drive the large variation in COVID-19 incidence rates observed within relatively compact geographic regions, and to quantify the relative impact of each of these factors. We use international comparisons as a starting point.
New York City, consisting of some 175 zip codes, is an ideal arena to pursue the above study given the large variation in case incidence rates across zip codes. We conducted systematic regression studies employing data with zip code granularity. Our model specifications are based on a well-established epidemiologic model that explains the effects of household sizes on R0.
Average household size emerges as the single most important driver behind the large variation in COVID-19 incidence rates. It independently explains 62% of the variation. The percentage of the population above the age of 65 and the percentage below the poverty line are also strongly positively associated with zip code incidence rates. As to ethnic/racial characteristics, the percentages of African Americans, Hispanics and Asians within the population are significantly associated, but the magnitude of the impact is smaller. (The proportion of Asians within a zip code has a negative association.) Contrary to common belief, population density, by itself, does not have a significantly positive impact (other than when a high population is driven by large household sizes).
Our findings support implemented and proposed policies to quarantine patients and separate infected individuals from families or dormitories; they also support newly revised nursing home admission policies.
着眼于可能的公共政策影响,我们的目标是确定导致在相对较小的地理区域内观察到的 COVID-19 发病率存在巨大差异的社会经济和人口因素,并量化这些因素中的每一个因素的相对影响。我们以国际比较为起点。
纽约市由大约 175 个邮政编码组成,由于邮政编码之间的病例发病率存在很大差异,因此是进行上述研究的理想场所。我们进行了系统的回归研究,使用具有邮政编码粒度的数据。我们的模型规格基于解释家庭规模对 R0 的影响的既定流行病学模型。
平均家庭规模是导致 COVID-19 发病率差异的最大单一驱动因素。它独立解释了 62%的差异。人口中 65 岁以上和贫困线以下的比例也与邮政编码发病率呈强烈正相关。至于种族/族裔特征,人口中非洲裔美国人、西班牙裔和亚洲人的比例显著相关,但影响的幅度较小。(邮政编码内的亚洲人比例呈负相关。)与普遍看法相反,人口密度本身并没有显著的积极影响(除非高人口是由大家庭规模驱动的)。
我们的研究结果支持实施和提议的隔离患者和将感染者与家庭或宿舍分开的政策;它们还支持新修订的疗养院入院政策。