An important goal of environmental health research is to assess the risk posed by mixtures of environmental exposures. Two popular classes of models for mixtures analyses are response-surface methods and exposure-index methods. Response-surface methods estimate high-dimensional surfaces and are thus highly flexible but difficult to interpret. In contrast, exposure-index methods decompose coefficients from a linear model into an overall mixture effect and individual index weights; these models yield easily interpretable effect estimates and efficient inferences when model assumptions hold, but, like most parsimonious models, incur bias when these assumptions do not hold. In this paper we propose a Bayesian multiple index model framework that combines the strengths of each, allowing for non-linear and non-additive relationships between exposure indices and a health outcome, while reducing the dimensionality of the exposure vector and estimating index weights with variable selection. This framework contains response-surface and exposure-index models as special cases, thereby unifying the two analysis strategies. This unification increases the range of models possible for analyzing environmental mixtures and health, allowing one to select an appropriate analysis from a spectrum of models varying in flexibility and interpretability. In an analysis of the association between telomere length and 18 organic pollutants in the National Health and Nutrition Examination Survey (NHANES), the proposed approach fits the data as well as more complex response-surface methods and yields more interpretable results.
翻译:环境健康研究的一个重要目标是评估环境接触混合物构成的风险。混合物分析的两种流行模型类别是反应表面方法和暴露指数方法。反应表面方法估计高维表面,因此非常灵活,但很难解释。对比之下,暴露指数方法将线性模型的系数分解成整体混合物效应和个别指数加权数;这些模型产生易于解释的效果估计值和有效推断值,在模型假设保持时,这些模型与大多数偏差模型一样,在这些假设不起作用时会产生偏差。在本文件中,我们提出了一个巴伊西亚多种指数模型框架,将每种模型的优点结合起来,允许暴露指数和健康结果之间非线性和非线性的关系,同时降低暴露矢量的维度,并以变量选择估计指数加权数;这一框架包含作为特殊案例的应对表面和暴露指数模型,从而统一了两种分析战略。这种统一增加了分析环境混合物和健康可能采用的模式的范围,允许一种从不同模型中选择一种适当的分析,在灵活性和可解释性方面各有优势,允许每种指数的多重模型,使暴露指数指数和健康结果与健康结果之间的非线性关系,同时分析第十八号国家健康研究研究研究结果,作为第十八号研究研究研究结果。