首页> 外文期刊>The Annals of applied statistics >A BAYESIAN HIERARCHICAL SPATIAL MODEL FOR DENTAL CARIES ASSESSMENT USING NON-GAUSSIAN MARKOV RANDOM FIELDS
【24h】

A BAYESIAN HIERARCHICAL SPATIAL MODEL FOR DENTAL CARIES ASSESSMENT USING NON-GAUSSIAN MARKOV RANDOM FIELDS

机译:基于非高斯马尔可夫随机场的龋齿评估的贝叶斯层次空间模型

获取原文
获取原文并翻译 | 示例
       

摘要

Research in dental caries generates data with two levels of hierarchy: that of a tooth overall and that of the different surfaces of the tooth. The outcomes often exhibit spatial referencing among neighboring teeth and surfaces, that is, the disease status of a tooth or surface might be influenced by the status of a set of proximal teeth/surfaces. Assessments of dental caries (tooth decay) at the tooth level yield binary outcomes indicating the presence/absence of teeth, and trinary outcomes at the surface level indicating healthy, decayed or filled surfaces. The presence of these mixed discrete responses complicates the data analysis under a unified framework. To mitigate complications, we develop a Bayesian two-level hierarchical model under suitable (spatial) Markov random field assumptions that accommodates the natural hierarchy within the mixed responses. At the first level, we utilize an autologistic model to accommodate the spatial dependence for the tooth-level binary outcomes. For the second level and conditioned on a tooth being nonmissing, we utilize a Potts model to accommodate the spatial referencing for the surface-level trinary outcomes. The regression models at both levels were controlled for plausible covariates (risk factors) of caries and remain connected through shared parameters. To tackle the computational challenges in our Bayesian estimation scheme caused due to the doubly-intractable normalizing constant, we employ a double Metropolis-Hastings sampler. We compare and contrast our model performances to the standard nonspatial (naive) model using a small simulation study, and illustrate via an application to a clinical dataset on dental caries.
机译:对龋齿的研究产生具有两个层次结构的数据:整个牙齿的层次结构和牙齿的不同表面的层次结构。结果通常在相邻牙齿和表面之间表现出空间参考,也就是说,牙齿或表面的疾病状态可能会受一组近端牙齿/表面的状态影响。在牙齿水平的龋齿评估(蛀牙)会产生表明牙齿存在/不存在的二元结果,而在表面水平的三分结果表明表面健康,腐烂或充满。这些混合离散响应的存在使统一框架下的数据分析变得复杂。为了减轻复杂性,我们在适当的(空间)马尔可夫随机场假设下开发了一种贝叶斯两级层次模型,该模型在混合响应中适应了自然层次。在第一级,我们利用自动逻辑模型来适应牙齿级二进制结果的空间依赖性。对于第二级并以不缺失的牙齿为条件,我们利用Potts模型来适应表面级三级结局的空间参考。在两个层次上的回归模型都控制了龋齿的合理协变量(风险因子),并通过共享参数保持联系。为了解决由于倍增难于归一化常数而引起的贝叶斯估计方案中的计算难题,我们采用了双重Metropolis-Hastings采样器。我们使用小型模拟研究将模型性能与标准非空间(原始)模型进行比较和对比,并通过对龋齿临床数据集的应用进行说明。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号