Yin Xueqing, Anderson Craig, Lee Duncan, Napier Gary
School of Mathematics and Statistics, 12440 Liaoning University , Shenyang, Liaoning, China.
School of Mathematics and Statistics, University of Glasgow, Glasgow, UK.
Int J Biostat. 2025 May 22. doi: 10.1515/ijb-2023-0138.
Bayesian hierarchical models with a spatially smooth conditional autoregressive prior distribution are commonly used to estimate the spatio-temporal pattern in disease risk from areal unit data. However, most of the modeling approaches do not take possible boundaries of step changes in disease risk between geographically neighbouring areas into consideration, which may lead to oversmoothing of the risk surfaces, prevent the detection of high-risk areas and yield biased estimation of disease risk. In this paper, we propose a two-stage method to jointly estimate the disease risk in small areas over time and detect the locations of boundaries that separate pairs of neighbouring areas exhibiting vastly different risks. In the first stage, we use a graph-based optimisation algorithm to construct a set of candidate neighbourhood matrices that represent a range of possible boundary structures for the disease data. In the second stage, a Bayesian hierarchical spatio-temporal model that takes the boundaries into account is fitted to the data. The performance of the methodology is evidenced by simulation, before being applied to a study of respiratory disease risk in Greater Glasgow, Scotland.
具有空间平滑条件自回归先验分布的贝叶斯分层模型通常用于根据区域单元数据估计疾病风险的时空模式。然而,大多数建模方法没有考虑地理相邻区域之间疾病风险阶梯变化的可能边界,这可能导致风险表面过度平滑,无法检测到高风险区域,并产生疾病风险的偏差估计。在本文中,我们提出了一种两阶段方法,用于随时间联合估计小区域内的疾病风险,并检测分隔表现出极大不同风险的相邻区域对的边界位置。在第一阶段,我们使用基于图的优化算法来构建一组候选邻域矩阵,这些矩阵代表疾病数据的一系列可能边界结构。在第二阶段,将考虑边界的贝叶斯分层时空模型应用于数据。在将该方法应用于苏格兰大格拉斯哥地区的呼吸道疾病风险研究之前,通过模拟证明了该方法的性能。