Biomathematics Graduate Program and Department of Mathematics, North Carolina State University, Raleigh, North Carolina, United States of America.
Department of Mathematics, University of Tennessee, Knoxville, Tennessee, United States of America.
PLoS One. 2022 Sep 28;17(9):e0274899. doi: 10.1371/journal.pone.0274899. eCollection 2022.
Evidence seems to suggest that the risk of Coronavirus Disease 2019 (COVID-19) might vary across communities due to differences in population characteristics and movement patterns. However, little is known about these differences in the greater St Louis Area of Missouri and yet this information is useful for targeting control efforts. Therefore, the objectives of this study were to investigate (a) geographic disparities of COVID-19 risk and (b) associations between COVID-19 risk and socioeconomic, demographic, movement and chronic disease factors in the Greater St. Louis Area of Missouri, USA.
Data on COVID-19 incidence and chronic disease hospitalizations were obtained from the Department of Health and Missouri Hospital Association, respectively. Socioeconomic and demographic data were obtained from the 2018 American Community Survey while population mobility data were obtained from the SafeGraph website. Choropleth maps were used to identify geographic disparities of COVID-19 risk and several sociodemographic and chronic disease factors at the ZIP Code Tabulation Area (ZCTA) spatial scale. Global negative binomial and local geographically weighted negative binomial models were used to investigate associations between ZCTA-level COVID-19 risk and socioeconomic, demographic and chronic disease factors.
There were geographic disparities found in COVID-19 risk. Risks tended to be higher in ZCTAs with high percentages of the population with a bachelor's degree (p<0.0001) and obesity hospitalizations (p<0.0001). Conversely, risks tended to be lower in ZCTAs with high percentages of the population working in agriculture (p<0.0001). However, the association between agricultural occupation and COVID-19 risk was modified by per capita between ZCTA visits. Areas that had both high per capita between ZCTA visits and high percentages of the population employed in agriculture had high COVID-19 risks. The strength of association between agricultural occupation and COVID-19 risk varied by geographic location.
Geographic disparities of COVID-19 risk exist in the St. Louis area and are associated with sociodemographic factors, population movements, and obesity hospitalization risks. The latter is particularly concerning due to the growing prevalence of obesity and the known immunological impairments among obese individuals. Therefore, future studies need to focus on improving our understanding of the relationships between COVID-19 vaccination efficacy, obesity and waning of immunity among obese individuals so as to better guide vaccination regimens and reduce disparities.
有证据表明,由于人口特征和流动模式的差异,2019 年冠状病毒病(COVID-19)的风险可能在不同社区有所不同。然而,密苏里州圣路易斯大都市区的这些差异知之甚少,但这些信息对于有针对性地开展控制工作很有用。因此,本研究的目的是调查:(a)COVID-19 风险的地理差异,以及(b)COVID-19 风险与美国密苏里州圣路易斯大都市区社会经济、人口统计学、流动和慢性疾病因素之间的关联。
COVID-19 发病率数据来自卫生部门,慢性疾病住院数据来自密苏里州医院协会。社会经济和人口统计学数据来自 2018 年美国社区调查,人口流动数据来自 SafeGraph 网站。使用专题地图来确定 COVID-19 风险以及密苏里州圣路易斯大都市区邮政编码区(ZCTA)空间尺度的几个社会人口学和慢性疾病因素的地理差异。使用全局负二项式和局部地理加权负二项式模型,调查 ZCTA 级 COVID-19 风险与社会经济、人口统计学和慢性疾病因素之间的关联。
发现 COVID-19 风险存在地理差异。具有较高本科以上学历人口比例(p<0.0001)和肥胖住院比例(p<0.0001)的 ZCTA 风险较高。相反,农业人口比例较高的 ZCTA 风险较低(p<0.0001)。然而,农业职业与 COVID-19 风险之间的关联受到 ZCTA 之间人均访问量的调节。人均 ZCTA 之间访问量高且农业人口比例高的地区 COVID-19 风险较高。农业职业与 COVID-19 风险之间的关联强度因地理位置而异。
圣路易斯地区存在 COVID-19 风险的地理差异,与社会人口因素、人口流动和肥胖住院风险有关。后者尤其令人担忧,因为肥胖的流行率不断上升,以及肥胖人群中已知的免疫功能受损。因此,未来的研究需要重点关注提高我们对 COVID-19 疫苗效力、肥胖和肥胖人群免疫减弱之间关系的理解,以便更好地指导疫苗接种方案并减少差异。