WorldPop, School of Geography and Environmental Science, University of Southampton, Southampton, UK.
Southampton Statistical Sciences Research Institute, University of Southampton, Southampton, UK.
Stat Med. 2021 Apr;40(9):2197-2211. doi: 10.1002/sim.8897. Epub 2021 Feb 4.
Health and development indicators (HDIs) such as vaccination coverage are regularly measured in many low- and middle-income countries using household surveys, often due to the unreliability or incompleteness of routine data collection systems. Recently, the development of model-based approaches for producing subnational estimates of HDIs using survey data, particularly cluster-level data, has been an active area of research. This is mostly driven by the increasing demand for estimates at certain administrative levels, for example, districts, at which many development goals are set and evaluated. In this study, we explore spatial modeling approaches for producing district-level estimates of vaccination coverage. Specifically, we compare discrete spatial smoothing models which directly model district-level data with continuous Gaussian process (GP) models that utilize geolocated cluster-level data. We adopt a fully Bayesian framework, implemented using the INLA and SPDE approaches. We compare the predictive performance of the models by analyzing vaccination coverage using data from two Demographic and Health Surveys (DHS), namely the 2014 Kenya DHS and the 2015-16 Malawi DHS. We find that the continuous GP models performed well, offering a credible alternative to traditional discrete spatial smoothing models. Our analysis also revealed that accounting for between-cluster variation in the continuous GP models did not have any real effect on the district-level estimates. Our results provide guidance to practitioners on the reliability of these model-based approaches for producing estimates of vaccination coverage and other HDIs.
健康和发展指标(HDIs),如疫苗接种覆盖率,经常在许多低收入和中等收入国家通过家庭调查进行测量,这主要是由于常规数据收集系统的不可靠或不完整。最近,使用调查数据,特别是集群级数据,来生成国家以下级别 HDI 估计值的基于模型的方法的发展一直是一个活跃的研究领域。这主要是由于在某些行政级别(例如地区)对估计的需求不断增加,许多发展目标就是在这些行政级别设定和评估的。在这项研究中,我们探索了用于生成疫苗接种覆盖率的地区级别估计值的空间建模方法。具体来说,我们比较了直接对地区级别数据建模的离散空间平滑模型和利用地理位置集群级别数据的连续高斯过程(GP)模型。我们采用了完全贝叶斯框架,使用 INLA 和 SPDE 方法实现。我们通过分析来自两个人口与健康调查(DHS)的数据来比较模型的预测性能,即 2014 年肯尼亚 DHS 和 2015-16 年马拉维 DHS。我们发现连续 GP 模型表现良好,为传统的离散空间平滑模型提供了一个可靠的替代方案。我们的分析还表明,在连续 GP 模型中考虑集群间的变化对地区级别估计值没有任何实际影响。我们的结果为从业者提供了关于这些基于模型的方法在生成疫苗接种覆盖率和其他 HDI 估计值的可靠性的指导。