Long-term spatial patterns in COVID-19 booster vaccine uptake.

IF 5.4 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Anthony J Wood, Anne Marie MacKintosh, Martine Stead, Rowland R Kao
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Abstract

Background: Vaccination is a critical tool for controlling infectious diseases, with its use to protect against COVID-19 being a prime example. Where a disease is highly transmissible, even a small proportion of unprotected individuals can have substantial implications for disease burden and control. As factors such as deprivation and ethnicity have been shown to influence uptake rates, identifying how uptake varies with socio-demographic indicators is critical for reducing hesitancy and issues of access and identifying plausible future uptake patterns.

Methods: We analyse COVID-19 booster vaccinations in Scotland, subdivided by age, sex, dose and location. Linking to public demographic data, we use Random Forests to fit patterns in first booster uptake, with systematic variation restricted to  ~ 1km in urban areas. We introduce a method to predict future distributions using our first booster model, assuming existing trends over deprivation will persist. This provides a quantitative estimate of the impact of changing motivations and efforts to increase uptake.

Results: While age and sex have the greatest impact on the model fit, there is a substantial influence of community deprivation and the proportion of residents belonging to a black or minority ethnicity. Differences between first and second boosters suggest in the longer-term that the impact of deprivation is likely to increase.

Conclusions: This would further the disproportionate impact of COVID-19 on deprived communities. Our methods are based solely on public demographic data and routinely recorded vaccination data, and would be easily adaptable to other countries and vaccination campaigns where data recording is similar.

COVID-19加强疫苗接种的长期空间格局
背景:疫苗接种是控制传染病的重要工具,利用疫苗预防COVID-19就是一个很好的例子。在一种疾病具有高度传染性的情况下,即使一小部分未受保护的个人也可能对疾病负担和控制产生重大影响。由于贫困和种族等因素已被证明会影响吸收率,因此,确定吸收率如何随社会人口指标变化,对于减少犹豫和获取问题以及确定未来合理的吸收率模式至关重要。方法:对苏格兰的COVID-19加强疫苗接种情况进行分析,并按年龄、性别、剂量和地点进行细分。与公共人口统计数据相联系,我们使用随机森林来拟合首次助推器吸收的模式,在城市地区,系统变化限制在~ 1公里。我们引入了一种方法,使用我们的第一个增强模型来预测未来的分布,假设现有的剥夺趋势将持续下去。这提供了对改变动机和努力增加吸收的影响的定量估计。结果:虽然年龄和性别对模型拟合的影响最大,但社区剥夺和属于黑人或少数民族的居民比例对模型拟合有实质性影响。第一和第二助推器之间的差异表明,长期来看,贫困的影响可能会增加。结论:这将进一步加剧COVID-19对贫困社区的不成比例的影响。我们的方法完全基于公共人口统计数据和常规记录的疫苗接种数据,并且很容易适用于数据记录相似的其他国家和疫苗接种运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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