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Detection of spatial variation in risk when using CAR models for smoothing relative risks

机译:使用CAR模型平滑相对风险时检测风险的空间变化

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摘要

In this paper we derive score tests for spatial independence in mortality or incidence risk in the framework of hierarchical spatial models where different Gaussian Markov random field (MRF) priors are given for modelling the area random effects (specifically, two non-intrinsic Gaussian priors and a convolution Gaussian prior). The techniques used to test the practically relevant and important simplifying hypotheses of an absence of spatial variation in risk will provide a guidance for practitioners to select an adequate model (i.e., a model with an exchangeable-independent-prior, an intrinsic prior, a convolution prior or a non-intrinsic prior, for the area-specific random effects distribution). The proposed methodology is illustrated by analyzing the well-known data set of lip cancer in Scotland and female mortality due to cerebrovascular disease in Navarra, Spain.
机译:在本文中,我们在分层空间模型的框架中得出了死亡率或发生风险的空间独立性的评分测试,在分层空间模型中给出了不同的高斯马尔可夫随机场(MRF)先验来建模区域随机效应(具体而言,两个非本征高斯先验和卷积高斯先验)。用于测试风险不存在空间差异的实用且重要的简化假设的技术将为从业人员选择适当的模型(即具有可交换独立先验,固有先验,卷积的模型)提供指导先验或非先验先验(针对特定区域的随机效应分布)。通过分析苏格兰著名的唇癌数据以及西班牙纳瓦拉的女性因脑血管疾病导致的死亡率,来说明所提出的方法。

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