COVID-19 趋势和影响调查对县级疫苗接种覆盖率的偏差调整预测。

IF 3.1 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES Medical Decision Making Pub Date : 2024-02-01 Epub Date: 2023-12-30 DOI:10.1177/0272989X231218024
Marissa B Reitsma, Sherri Rose, Alex Reinhart, Jeremy D Goldhaber-Fiebert, Joshua A Salomon
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引用次数: 0

摘要

背景:非代表性、大规模、低成本调查数据中可能存在的选择偏差会限制其在人口健康测量和公共卫生决策中的应用。我们从大规模的美国 COVID-19 趋势和影响调查中开发了一种方法来对县级 COVID-19 疫苗接种覆盖率预测进行偏差调整:设计:我们开发了一个多步骤回归框架,以调整县级疫苗接种覆盖率高原预测中的选择偏差。我们的方法包括对美国社区调查进行后分层,调整观察到的协变量差异,以及对无偏参考指标进行二次归一化。作为一项案例研究,我们前瞻性地应用了这一框架来预测县级 5-11 岁儿童的长期疫苗接种覆盖率。我们根据对 5-11 岁儿童 3 个月覆盖率的中期观察结果对我们的方法进行了评估,并使用长期覆盖率估计值来监测疫苗接种规模扩大速度的公平性:结果:我们的预测表明全国长期疫苗接种覆盖率的上限较低(46%),发现了巨大的地域差异(美国各县的覆盖率从 11% 到 91% 不等),并强调了在 5 到 11 岁儿童接种 COVID-19 疫苗紧急使用授权后 3 个月内扩大接种规模的步伐存在广泛差异:局限性:我们依赖于疫苗接种犹豫与观察到的覆盖率之间的历史关系,这可能无法反映 COVID-19 政策和流行病学状况的快速变化:我们的分析展示了一种方法,可利用多种信息来源的不同优势,在主动决策所需的时间尺度和地理范围内进行估算:设计综合健康测量系统,将在及时性、空间分辨率和代表性等方面具有不同优势的信息源结合起来,可以最大限度地提高数据收集的成本效益:这些大规模、低成本、非代表性的数据可能存在选择偏差,导致人们对其在人口健康测量中的效用产生质疑。我们开发了一个多步骤回归框架,对美国迄今为止最大规模的公共卫生调查--美国 COVID-19 趋势和影响调查--中得出的县级疫苗接种覆盖率预测结果进行偏差调整。我们的研究表明,利用多种数据源的不同优势来生成时间尺度和地理尺度上的估计值,对于前瞻性的公共卫生决策是非常有价值的。
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Bias-Adjusted Predictions of County-Level Vaccination Coverage from the COVID-19 Trends and Impact Survey.

Background: The potential for selection bias in nonrepresentative, large-scale, low-cost survey data can limit their utility for population health measurement and public health decision making. We developed an approach to bias adjust county-level COVID-19 vaccination coverage predictions from the large-scale US COVID-19 Trends and Impact Survey.

Design: We developed a multistep regression framework to adjust for selection bias in predicted county-level vaccination coverage plateaus. Our approach included poststratification to the American Community Survey, adjusting for differences in observed covariates, and secondary normalization to an unbiased reference indicator. As a case study, we prospectively applied this framework to predict county-level long-run vaccination coverage among children ages 5 to 11 y. We evaluated our approach against an interim observed measure of 3-mo coverage for children ages 5 to 11 y and used long-term coverage estimates to monitor equity in the pace of vaccination scale up.

Results: Our predictions suggested a low ceiling on long-term national vaccination coverage (46%), detected substantial geographic heterogeneity (ranging from 11% to 91% across counties in the United States), and highlighted widespread disparities in the pace of scale up in the 3 mo following Emergency Use Authorization of COVID-19 vaccination for 5- to 11-y-olds.

Limitations: We relied on historical relationships between vaccination hesitancy and observed coverage, which may not capture rapid changes in the COVID-19 policy and epidemiologic landscape.

Conclusions: Our analysis demonstrates an approach to leverage differing strengths of multiple sources of information to produce estimates on the time scale and geographic scale necessary for proactive decision making.

Implications: Designing integrated health measurement systems that combine sources with different advantages across the spectrum of timeliness, spatial resolution, and representativeness can maximize the benefits of data collection relative to costs.

Highlights: The COVID-19 pandemic catalyzed massive survey data collection efforts that prioritized timeliness and sample size over population representativeness.The potential for selection bias in these large-scale, low-cost, nonrepresentative data has led to questions about their utility for population health measurement.We developed a multistep regression framework to bias adjust county-level vaccination coverage predictions from the largest public health survey conducted in the United States to date: the US COVID-19 Trends and Impact Survey.Our study demonstrates the value of leveraging differing strengths of multiple data sources to generate estimates on the time scale and geographic scale necessary for proactive public health decision making.

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来源期刊
Medical Decision Making
Medical Decision Making 医学-卫生保健
CiteScore
6.50
自引率
5.60%
发文量
146
审稿时长
6-12 weeks
期刊介绍: Medical Decision Making offers rigorous and systematic approaches to decision making that are designed to improve the health and clinical care of individuals and to assist with health care policy development. Using the fundamentals of decision analysis and theory, economic evaluation, and evidence based quality assessment, Medical Decision Making presents both theoretical and practical statistical and modeling techniques and methods from a variety of disciplines.
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