论文标题

建模与非随机丧失性的协变量的COVID-19发病率的种族/种族差异

Modeling racial/ethnic differences in COVID-19 incidence with covariates subject to non-random missingness

论文作者

Trangucci, Rob, Chen, Yang, Zelner, Jon

论文摘要

对于公共卫生研究人员和政策制定者来说,以种族/种族为特征Covid-19的累积负担至关重要,以设计有效的缓解措施。但是,由于种族和种族协变量,监视案例数据受到了严重缺失,从而阻碍了该分析。更糟糕的是,这种缺失可能取决于这些缺失的协变量的值,即它们并不是随机缺失(NMAR)。我们提出了一个贝叶斯参数模型,该模型利用有关疾病空间变化和协变量过程的联合信息,并可以容纳MAR和NMAR失踪。我们表明,当已知种群协变量的空间分布并观察到的情况与空间观察单位有关时,该模型是可以局部识别的。我们还使用仿真研究来研究模型的有限样本性能。我们将模型在NMAR数据上的性能与完整分析(MI)(MI)进行了比较,这两者都是公共卫生研究人员通常使用的,当时与缺失的分类协变量面对面。最后,我们使用密歇根州韦恩县,密歇根州韦恩县的累积Covid-19发生空间变化,并使用密歇根州部门以及卫生与公共服务的数据进行建模。该分析表明,与白人居民相比,密歇根州共同居民在密歇根州共vid-19的早期大流行期间,种族相对风险的估计值与白人居民相比被低估了,当失踪种族丢失或使用MI估算这些值时。

Characterizing the cumulative burden of COVID-19 by race/ethnicity is of the utmost importance for public health researchers and policy makers in order to design effective mitigation measures. This analysis is hampered, however, by surveillance case data with substantial missingness in race and ethnicity covariates. Worse yet, this missingness likely depends on the values of these missing covariates, i.e. they are not missing at random (NMAR). We propose a Bayesian parametric model that leverages joint information on spatial variation in the disease and covariate missingness processes and can accommodate both MAR and NMAR missingness. We show that the model is locally identifiable when the spatial distribution of the population covariates is known and observed cases can be associated with a spatial unit of observation. We also use a simulation study to investigate the model's finite-sample performance. We compare our model's performance on NMAR data against complete-case analysis and multiple imputation (MI), both of which are commonly used by public health researchers when confronted with missing categorical covariates. Finally, we model spatial variation in cumulative COVID-19 incidence in Wayne County, Michigan using data from the Michigan Department and Health and Human Services. The analysis suggests that population relative risk estimates by race during the early part of the COVID-19 pandemic in Michigan were understated for non-white residents compared to white residents when cases missing race were dropped or had these values imputed using MI.

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