A novel adaptation of spatial interpolation methods to map health attitudes related to COVID-19.

Q2 Biochemistry, Genetics and Molecular Biology
Raisa Behal, Kenneth Davis, Jeffrey Doering
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引用次数: 0

Abstract

Background: The COVID-19 pandemic presented substantial challenges to public health stakeholders working to vaccinate populations against the disease, particularly among vaccine hesitant individuals in low- and middle-income countries. Data on the determinants of vaccine hesitancy are scarce, and often available only at the national level. In this paper, our goal is to inform programmatic decision making in support of local vaccine uptake. Our analytical objectives to support this goal are to (1) reliably estimate attitudinal data at the hyperlocal level, and (2) estimate the loss of data heterogeneity among these attitudinal indicators at higher levels of aggregation. With hyperlocal attitudinal data on the determinants of vaccine hesitancy, public health stakeholders can better tailor interventions aimed at increasing uptake sub-nationally, and even down to the individual vaccination site or neighborhood.

Methods: We estimated attitudinal data on the determinants of vaccine hesitancy as framed by the WHO's Confidence, Complacency, and Convenience ("3Cs") Model of Vaccine Hesitancy using a nationally and regionally representative household survey of 4,922 adults aged 18 and above, collected in February 2022. This custom survey was designed to collect information on attitudes towards COVID-19 and concerns about the COVID-19 vaccine. A machine learning (ML) framework was used to spatially interpolate metrics representative of the 3Cs at a one square kilometer (1km2) resolution using approximately 130 spatial covariates from high-resolution satellite imagery, and 24 covariates from the 2018 Nigeria Demographic and Health Survey (DHS).

Results: Spatial interpolated hyperlocal estimates of the 3Cs captured significant information on attitudes towards COVID-19 and COVID-19 vaccines. The interpolated estimates held increased heterogeneity within each subsequent level of disaggregation, with most variation at the 1km2 level.

Conclusions: Our findings demonstrate that a) attitudinal data can be successfully estimated at the hyperlocal level, and b) the determinants of COVID-19 vaccine hesitancy have large spatial variance that cannot be captured through national surveys alone. Access to community level attitudes toward vaccine safety and efficacy; vaccination access, time, and financial burden; and COVID-19 beliefs and infection concerns presents novel implications for public health practitioners and policymakers seeking to increase COVID-19 vaccine uptake through more customized community-level interventions.

Abstract Image

Abstract Image

Abstract Image

采用新颖的空间插值方法绘制与 COVID-19 有关的健康态度图。
背景:COVID-19 大流行给致力于为民众接种疫苗预防该疾病的公共卫生利益相关者带来了巨大挑战,尤其是中低收入国家中对疫苗犹豫不决的人。有关疫苗接种犹豫不决的决定因素的数据很少,通常只能在国家层面获得。在本文中,我们的目标是为支持当地疫苗接种的计划决策提供信息。为支持这一目标,我们的分析目标是:(1) 可靠地估算超地方层面的态度数据;(2) 估算这些态度指标在更高的汇总层面上的数据异质性损失。有了关于疫苗接种犹豫不决的决定因素的超地方态度数据,公共卫生利益相关者就能更好地定制干预措施,以提高次国家级,甚至是个别接种点或社区的疫苗接种率:我们在 2022 年 2 月对 4922 名 18 岁及以上的成年人进行了具有全国和地区代表性的家庭调查,根据世界卫生组织的疫苗犹豫不决模型("3C"),估算了疫苗犹豫不决的决定因素的态度数据。这项定制调查旨在收集有关对 COVID-19 的态度以及对 COVID-19 疫苗的担忧的信息。采用机器学习(ML)框架,利用来自高分辨率卫星图像的约 130 个空间协变量和来自 2018 年尼日利亚人口与健康调查(DHS)的 24 个协变量,以一平方公里(1km2)的分辨率对代表 3C 的指标进行空间插值:3Cs 的空间内插超本地估计值捕捉到了有关对 COVID-19 和 COVID-19 疫苗态度的重要信息。插值估计值在随后的每一级分类中都保持了更大的异质性,其中 1 平方公里范围内的差异最大:我们的研究结果表明:a)态度数据可以成功地在超地方一级进行估算;b)COVID-19 疫苗犹豫不决的决定因素有很大的空间差异,仅靠全国性调查无法捕捉到这些差异。获取社区层面对疫苗安全性和有效性的态度;接种疫苗的途径、时间和经济负担;以及 COVID-19 的信仰和感染问题,为公共卫生从业人员和政策制定者提供了新的启示,他们希望通过更加个性化的社区干预措施来提高 COVID-19 疫苗的接种率。
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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来源期刊
BMC Proceedings
BMC Proceedings Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
CiteScore
3.50
自引率
0.00%
发文量
6
审稿时长
10 weeks
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