Bayesian hierarchical modeling for bivariate multiscale spatial data with application to blood test monitoring

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Spatial and Spatio-Temporal Epidemiology Pub Date : 2024-07-10 DOI:10.1016/j.sste.2024.100661
Shijie Zhou, Jonathan R. Bradley
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Abstract

Public health spatial data are often recorded at different spatial scales (or geographic regions/divisions) and over different correlated variables. Motivated by data from the Dartmouth Atlas Project, we consider jointly analyzing average annual percentages of diabetic Medicare enrollees who have taken the hemoglobin A1c and blood lipid tests, observed at the hospital service area (HSA) and county levels, respectively. Capitalizing on bivariate relationships between these two scales is not immediate as counties are not nested within HSAs. It is well known that one can improve predictions by leveraging correlations across both variables and scales. There are very few methods available that simultaneously model multivariate and multiscale correlations. We propose three new hierarchical Bayesian models for bivariate multiscale spatial data, extending spatial random effects, multivariate conditional autoregressive (MCAR), and ordered hierarchical models through a multiscale spatial approach. We simulated data from each of the three models and compared the corresponding predictions, and found the computationally intensive multiscale MCAR model is more robust to model misspecification. In an analysis of 2015 Texas Dartmouth Atlas Project data, we produced finer resolution predictions (partitioning of HSAs and counties) than univariate analyses, determined that the novel multiscale MCAR and OH models were preferable via out-of-sample metrics, and determined the HSA with the highest within-HSA variability of hemoglobin A1c blood testing. Additionally, we compare the univariate multiscale models to the bivariate multiscale models and see clear improvements in prediction over univariate analyses.

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应用于血液检测监测的双变量多尺度空间数据贝叶斯分层模型
公共卫生空间数据通常记录在不同的空间尺度(或地理区域/分区)和不同的相关变量上。受达特茅斯地图集项目数据的启发,我们考虑联合分析分别在医院服务区(HSA)和县一级观察到的参加过血红蛋白 A1c 和血脂检测的糖尿病医保参保者的年平均百分比。由于县并不嵌套在 HSA 中,因此无法直接利用这两个量表之间的二元关系。众所周知,利用变量和尺度之间的相关性可以提高预测效果。目前很少有方法能同时模拟多变量和多尺度相关性。我们针对双变量多尺度空间数据提出了三种新的分层贝叶斯模型,通过多尺度空间方法扩展了空间随机效应、多变量条件自回归(MCAR)和有序分层模型。我们分别模拟了这三种模型的数据,并比较了相应的预测结果,结果发现计算密集型多尺度 MCAR 模型对模型错误规范的鲁棒性更高。在对 2015 年德克萨斯州达特茅斯地图集项目数据的分析中,我们得出了比单变量分析更精细的分辨率预测(HSA 和县的划分),通过样本外指标确定了新型多尺度 MCAR 和 OH 模型更优,并确定了 HSA 内血红蛋白 A1c 血液检测变异性最高的 HSA。此外,我们还将单变量多尺度模型与双变量多尺度模型进行了比较,发现预测效果明显优于单变量分析。
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来源期刊
Spatial and Spatio-Temporal Epidemiology
Spatial and Spatio-Temporal Epidemiology PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
5.10
自引率
8.80%
发文量
63
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