Lee Kyung Hee, Alemi Farrokh, Yu Jo-Vivian, Hong Y Alicia
Recreation, Parks and Leisure Services Administration, Central Michigan University, Mount Pleasant, USA.
Health Adminstration and Policy, George Mason University, Fairfax, USA.
Cureus. 2023 Feb 17;15(2):e35110. doi: 10.7759/cureus.35110. eCollection 2023 Feb.
Objective To estimate the multiple direct/indirect effects of social, environmental, and economic factors on COVID-19 vaccination rates (series complete) in the 3109 continental counties in the United States (U.S.). Study design The dependent variable was the COVID-19 vaccination rates in the U.S. (April 15, 2022). Independent variables were collected from reliable secondary data sources, including the Census and CDC. Independent variables measured at two different time frames were utilized to predict vaccination rates. The number of vaccination sites in a given county was calculated using the geographic information system (GIS) packages as of April 9, 2022. The Internet Archive (Way Back Machine) was used to look up data for historical dates. Methods A chain of temporally-constrained least absolute shrinkage and selection operator (LASSO) regressions was used to identify direct and indirect effects on vaccination rates. The first regression identified direct predictors of vaccination rates. Next, the direct predictors were set as response variables in subsequent regressions and regressed on variables that occurred before them. These regressions identified additional indirect predictors of vaccination. Finally, both direct and indirect variables were included in a network model. Results Fifteen variables directly predicted vaccination rates and explained 43% of the variation in vaccination rates in April 2022. In addition, 11 variables indirectly affected vaccination rates, and their influence on vaccination was mediated by direct factors. For example, children in poverty rate mediated the effect of (a) median household income, (b) children in single-parent homes, and (c) income inequality. For another example, median household income mediated the effect of (a) the percentage of residents under the age of 18, (b) the percentage of residents who are Asian, (c) home ownership, and (d) traffic volume in the prior year. Our findings describe not only the direct but also the indirect effect of variables. Conclusions A diverse set of demographics, social determinants, public health status, and provider characteristics predicted vaccination rates. Vaccination rates change systematically and are affected by the demographic composition and social determinants of illness within the county. One of the merits of our study is that it shows how the direct predictors of vaccination rates could be mediators of the effects of other variables.
目的 评估社会、环境和经济因素对美国本土3109个县新冠病毒疫苗接种率(全程接种)的多重直接/间接影响。研究设计 因变量为美国的新冠病毒疫苗接种率(2022年4月15日)。自变量从可靠的二手数据源收集,包括人口普查数据和美国疾病控制与预防中心(CDC)的数据。利用在两个不同时间框架下测量的自变量来预测疫苗接种率。截至2022年4月9日,使用地理信息系统(GIS)软件包计算给定县内的疫苗接种点数量。利用互联网档案库(时光机)查找历史日期的数据。方法 使用一系列时间受限的最小绝对收缩和选择算子(LASSO)回归来确定对疫苗接种率的直接和间接影响。第一次回归确定疫苗接种率的直接预测因素。接下来,将直接预测因素作为后续回归中的响应变量,并对在其之前出现的变量进行回归。这些回归确定了疫苗接种的其他间接预测因素。最后,将直接和间接变量纳入一个网络模型。结果 15个变量直接预测了疫苗接种率,并解释了2022年4月疫苗接种率变化的43%。此外,11个变量间接影响疫苗接种率,它们对疫苗接种的影响由直接因素介导。例如,贫困儿童比例介导了(a)家庭收入中位数、(b)单亲家庭儿童数量和(c)收入不平等的影响。再比如,家庭收入中位数介导了(a)18岁以下居民比例、(b)亚裔居民比例、(c)房屋拥有率和(d)上一年交通流量的影响。我们的研究结果不仅描述了变量的直接影响,还描述了其间接影响。结论 一系列不同的人口统计学特征、社会决定因素、公共卫生状况和医疗服务提供者特征预测了疫苗接种率。疫苗接种率有系统地变化,并受到县内疾病的人口构成和社会决定因素的影响。我们研究的优点之一是它展示了疫苗接种率的直接预测因素如何可能成为其他变量影响的中介。