Spatial Analysis and Geographic Education Laboratory, Department of Earth Sciences, University of Memphis, Memphis, TN 38152, USA.
Department of Geosciences, Mississippi State University, Starkville, MS 39762, USA.
Int J Environ Res Public Health. 2022 Jun 24;19(13):7732. doi: 10.3390/ijerph19137732.
The aim of this study is to correlate lifestyle characteristics to COVID-19 vaccination rates at the U.S. County level and provide where and when COVID-19 vaccination impacted different households. We grouped counties by their dominant LifeMode, and the mean vaccination rates per LifeMode are calculated. A 95% confidence interval for both the mean and median vaccination rate for each LifeMode is generated. The limits of this interval were compared to the nationwide statistics to determine whether each LifeMode's vaccine uptake differs significantly from the nationwide average. We used Environmental Systems Research Institute Inc. (ESRI) Tapestry LifeModes data that are collected at the U.S. household level through geodemographic segmentation typically used for marketing purposes. High risk Lifestyle segments and their locations are clearly the areas in the U.S. where the public might benefit from a COVID-19 vaccine. We then used logistic regression analysis to predict vaccination rates using ESRI's tapestry segmentation and other demographic variables. Our findings demonstrate that vaccine uptake appears to be highest in the urban corridors of the Northeast and the West Coast and in the retirement communities of Arizona and Florida and lowest in the rural areas of the Great Plains and Southeast. Looking closely at other parts of the West such as the Dakotas and Montana, counties that contain Native American reservations have higher vaccination rates. Racial/ethnic minorities also adopt the vaccine at higher rates. The most effective predictor of vaccination hesitancy was Republican voting habits, with Republican counties less likely to take the vaccine. The other predictors in order of importance were college education, minority race/ethnicity, median income, and median age. Our approach correlating lifestyle characteristics to COVID-19 vaccination rate at the U.S. County level provided unique insights into where and when COVID-19 vaccination impacted different households. The results suggest that prevention and control policies can be implemented to those specific households.
本研究旨在将生活方式特征与美国县级的 COVID-19 疫苗接种率相关联,并提供 COVID-19 疫苗接种在何时何地影响不同家庭。我们根据主导生活方式对县进行分组,并计算每种生活方式的平均疫苗接种率。为每种生活方式生成疫苗接种率的平均值和中位数的 95%置信区间。将该区间的上限和下限与全国统计数据进行比较,以确定每种生活方式的疫苗接种率是否与全国平均水平有显著差异。我们使用环境系统研究所公司(ESRI)的 Tapestry LifeModes 数据,这些数据通过通常用于营销目的的地理人口细分在美国家庭层面收集。高风险生活方式细分及其位置显然是美国公众可能从 COVID-19 疫苗中受益的地区。然后,我们使用逻辑回归分析使用 ESRI 的 Tapestry 细分和其他人口统计变量预测疫苗接种率。我们的研究结果表明,疫苗接种率似乎在东北部和西海岸的城市走廊以及亚利桑那州和佛罗里达州的退休社区最高,在大平原和东南部的农村地区最低。仔细观察西部的其他地区,如达科他州和蒙大拿州,包含美国原住民保留地的县疫苗接种率更高。少数族裔也以更高的速度接种疫苗。疫苗犹豫的最有效预测因素是共和党投票习惯,共和党县接种疫苗的可能性较小。其次重要的预测因素按重要性顺序排列依次为大学教育、少数族裔、中等收入和中等年龄。我们将生活方式特征与美国县级的 COVID-19 疫苗接种率相关联的方法提供了有关 COVID-19 疫苗接种何时何地影响不同家庭的独特见解。结果表明,可以针对那些特定家庭实施预防和控制政策。