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Bayesian analysis of time-series data under case-crossover designs: Posterior equivalence and inference

机译:案例交叉设计下的时间序列数据贝叶斯分析:后验等价和推论

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Summary: Case-crossover designs are widely used to study short-term exposure effects on the risk of acute adverse health events. While the frequentist literature on this topic is vast, there is no Bayesian work in this general area. The contribution of this paper is twofold. First, the paper establishes Bayesian equivalence results that require characterization of the set of priors under which the posterior distributions of the risk ratio parameters based on a case-crossover and time-series analysis are identical. Second, the paper studies inferential issues under case-crossover designs in a Bayesian framework. Traditionally, a conditional logistic regression is used for inference on risk-ratio parameters in case-crossover studies. We consider instead a more general full likelihood-based approach which makes less restrictive assumptions on the risk functions. Formulation of a full likelihood leads to growth in the number of parameters proportional to the sample size. We propose a semi-parametric Bayesian approach using a Dirichlet process prior to handle the random nuisance parameters that appear in a full likelihood formulation. We carry out a simulation study to compare the Bayesian methods based on full and conditional likelihood with the standard frequentist approaches for case-crossover and time-series analysis. The proposed methods are illustrated through the Detroit Asthma Morbidity, Air Quality and Traffic study, which examines the association between acute asthma risk and ambient air pollutant concentrations.
机译:简介:病例交叉设计被广泛用于研究短期暴露对急性不良健康事件风险的影响。尽管有关该主题的常客文献很多,但在该一般领域没有贝叶斯著作。本文的贡献是双重的。首先,本文建立了贝叶斯等价结果,该结果需要表征先验集,在这些先验集下,基于案例交叉和时间序列分析的风险比参数的后验分布是相同的。其次,本文研究了贝叶斯框架下案例交叉设计下的推理问题。传统上,在案例交叉研究中使用条件逻辑回归来推断风险比率参数。相反,我们考虑一种更通用的基于完全似然性的方法,该方法对风险函数的限制较少。完全可能性的公式化导致参数数量与样本大小成正比的增长。我们提出使用Dirichlet过程的半参数贝叶斯方法,以处理出现在全似然公式中的随机扰动参数。我们进行了一项仿真研究,以将基于完全和条件似然的贝叶斯方法与用于案例交叉和时间序列分析的标准常客方法进行比较。底特律哮喘的发病率,空气质量和交通状况研究对拟议的方法进行了说明,该研究检查了急性哮喘风险与环境空气污染物浓度之间的关系。

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