Wilson Katie, Wakefield Jon
Department of Biostatistics, University of Washington, United States.
Department of Biostatistics, University of Washington, United States; Department of Statistics, University of Washington, United States.
Spat Spatiotemporal Epidemiol. 2021 Jun;37:100421. doi: 10.1016/j.sste.2021.100421. Epub 2021 Apr 14.
In low and middle income countries, household surveys are a valuable source of information for a range of health and demographic indicators. Increasingly, subnational estimates are required for targeting interventions and evaluating progress towards targets. In the majority of cases, stratified cluster sampling is used, with clusters corresponding to enumeration areas. The reported geographical information varies. A common procedure, to preserve confidentiality, is to give a jittered location with the true centroid of the cluster is displaced under a known algorithm. An alternative situation, which was used for older surveys in particular, is to report the geographical region within the cluster lies. In this paper, we describe a spatial hierarchical model in which we account for inaccuracies in the cluster locations. The computational algorithm we develop is fast and avoids the heavy computation of a pure MCMC approach. We illustrate by simulation the benefits of the model, over naive alternatives.
在低收入和中等收入国家,家庭调查是一系列健康和人口指标的重要信息来源。越来越多地需要进行次国家级估计,以便确定干预措施的目标并评估实现目标的进展情况。在大多数情况下,采用分层整群抽样,群与普查区相对应。所报告的地理信息各不相同。为保护机密性,一种常见的做法是给出一个抖动后的位置,即根据已知算法将群的真实质心进行位移。另一种情况,特别是在旧的调查中使用的,是报告群所在的地理区域。在本文中,我们描述了一种空间层次模型,在该模型中我们考虑了群位置的不准确性。我们开发的计算算法速度快,避免了纯MCMC方法的繁重计算。我们通过模拟说明了该模型相对于简单替代方法的优势。