Pennell Michael L, Dunson David B
Division of Biostatistics, College of Public Health, The Ohio State University, B-115 Starling-Loving Hall, 320 West 10th Avenue, Columbus, Ohio 43210, USA.
Biometrics. 2008 Jun;64(2):413-23. doi: 10.1111/j.1541-0420.2007.00885.x. Epub 2007 Aug 30.
In certain biomedical studies, one may anticipate changes in the shape of a response distribution across the levels of an ordinal predictor. For instance, in toxicology studies, skewness and modality might change as dose increases. To address this issue, we propose a Bayesian nonparametric method for testing for distribution changes across an ordinal predictor. Using a dynamic mixture of Dirichlet processes, we allow the response distribution to change flexibly at each level of the predictor. In addition, by assigning mixture priors to the hyperparameters, we can obtain posterior probabilities of no effect of the predictor and identify the lowest dose level for which there is an appreciable change in distribution. The method also provides a natural framework for performing tests across multiple outcomes. We apply our method to data from a genotoxicity experiment.
在某些生物医学研究中,人们可能预期在有序预测变量的各个水平上响应分布的形状会发生变化。例如,在毒理学研究中,随着剂量增加,偏度和模态可能会改变。为了解决这个问题,我们提出一种贝叶斯非参数方法,用于检验有序预测变量上的分布变化。通过使用狄利克雷过程的动态混合,我们允许响应分布在预测变量的每个水平上灵活变化。此外,通过为超参数分配混合先验,我们可以获得预测变量无效应的后验概率,并确定分布有明显变化的最低剂量水平。该方法还为跨多个结果进行检验提供了一个自然的框架。我们将我们的方法应用于基因毒性实验的数据。