In this article, we investigate group differences in phthalate exposure profiles using NHANES data. Phthalates are a family of industrial chemicals used in plastics and as solvents. There is increasing evidence of adverse health effects of exposure to phthalates on reproduction and neuro-development, and concern about racial disparities in exposure. We would like to identify a single set of low-dimensional factors summarizing exposure to different chemicals, while allowing differences across groups. Improving on current multi-group additive factor models, we propose a class of Perturbed Factor Analysis (PFA) models that assume a common factor structure after perturbing the data via multiplication by a group-specific matrix. Bayesian inference algorithms are defined using a matrix normal hierarchical model for the perturbation matrices. The resulting model is just as flexible as current approaches in allowing arbitrarily large differences across groups but has substantial advantages that we illustrate in simulation studies. Applying PFA to NHANES data, we learn common factors summarizing exposures to phthalates, while showing clear differences across groups.
翻译:在本篇文章中,我们利用NHANES数据调查甲状腺接触剖面的组别差异。Phothalates是塑料和溶剂中使用的工业化学品组别。越来越多的证据表明,接触硫酸盐对生殖和神经发育产生有害健康影响,并关注接触中的种族差异。我们希望确定一组单一的低维因素,概括不同化学品接触情况,同时允许不同群体之间的差异。改进目前的多组添加系数模型,我们建议采用一组受扰动系数分析模型,在通过特定群体矩阵的倍增来影响数据后,假设一种共同因素结构。Bayesian 推断算法是使用一个透扰动矩阵的矩阵正常等级模型来界定的。由此得出的模型与目前的方法一样灵活,允许各组间任意出现巨大差异,但具有我们在模拟研究中说明的巨大优势。将PFA应用NHEES数据,我们学习了一组共同因素,同时显示各组之间的明显差异。