Esmail Abdul-Fattah, Elias Krainski, Janet Van Niekerk, Håvard Rue
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引用次数: 0
摘要
本文旨在将疾病绘图中广泛使用的贝叶斯空间模型 Besag 模型扩展为不规则网格型数据的非稳态空间模型。目的是提高模型捕捉复杂空间依赖模式的能力,增加可解释性。建议的模型使用多个精确参数,以反映不同子区域的不同空间依赖强度。我们为灵活的局部精度参数推导了一个联合惩罚复杂性先验,以防止过拟合,并确保以用户定义的速率收缩到静态模型。所提出的方法可作为开发其他领域(如时间)各种非稳态效应的基础。随附的 R 软件包 fbesag 为读者提供了立即使用和应用的必要工具。我们通过对巴西登革热风险的建模来说明该建议的新颖性,在巴西,静态空间假设失效,在考虑空间非静态因素时,可以估算出有趣的风险概况。此外,我们还对巴西的不同死因进行了建模,并利用新模型对这些死因的空间静止性进行了研究。
Non-stationary Bayesian spatial model for disease mapping based on sub-regions
This paper aims to extend the Besag model, a widely used Bayesian spatial model in disease mapping, to a non-stationary spatial model for irregular lattice-type data. The goal is to improve the model’s ability to capture complex spatial dependence patterns and increase interpretability. The proposed model uses multiple precision parameters, accounting for different intensities of spatial dependence in different sub-regions. We derive a joint penalized complexity prior to the flexible local precision parameters to prevent overfitting and ensure contraction to the stationary model at a user-defined rate. The proposed methodology can be used as a basis for the development of various other non-stationary effects over other domains such as time. An accompanying R package fbesag equips the reader with the necessary tools for immediate use and application. We illustrate the novelty of the proposal by modeling the risk of dengue in Brazil, where the stationary spatial assumption fails and interesting risk profiles are estimated when accounting for spatial non-stationary. Additionally, we model different causes of death in Brazil, where we use the new model to investigate the spatial stationarity of these causes.
期刊介绍:
Statistical Methods in Medical Research is a peer reviewed scholarly journal and is the leading vehicle for articles in all the main areas of medical statistics and an essential reference for all medical statisticians. This unique journal is devoted solely to statistics and medicine and aims to keep professionals abreast of the many powerful statistical techniques now available to the medical profession. This journal is a member of the Committee on Publication Ethics (COPE)