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Multivariate left-censored Bayesian modeling for predicting exposure using multiple chemical predictors

机译:多元左删失贝叶斯模型,使用多种化学预测因子预测暴露

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摘要

Environmental health exposures to airborne chemicals often originate from chemical mixtures. Environmental health professionals may be interested in assessing exposure to one or more of the chemicals in these mixtures, but often, exposure measurement data are not available, either because measurements were not collected/assessed for all exposure scenarios of interest or because some of the measurements were below the analytical methods' limits of detection (i.e., censored). In some cases, based on chemical laws, two or more components may have linear relationships with one another, whether in single or multiple mixtures. Although bivariate analyses can be used if the correlation is high, correlations are often low. To serve this need, this paper develops a multivariate framework for assessing exposure using relationships of the chemicals present in these mixtures. This framework accounts for censored measurements in all chemicals, allowing us to develop unbiased exposure estimates. We assessed our model's performance against simpler models at a variety of censoring levels and assessed our model's 95% coverage. We applied our model to assess vapor exposure from measurements of three chemicals in crude oil taken on the Ocean Intervention III during the Deepwater Horizon oil spill response and cleanup.
机译:空气中化学物质对环境健康的危害通常来自化学混合物。环境卫生专业人员可能有兴趣评估这些混合物中一种或多种化学物质的暴露程度,但是通常由于没有针对所有感兴趣的暴露场景收集/评估测量值,或者因为某些测量值而无法获得暴露测量数据低于分析方法的检出限(即经过审查)。在某些情况下,基于化学定律,两种或多种组分可能彼此呈线性关系,无论是单一混合物还是多种混合物。尽管如果相关性较高,则可以使用双变量分析,但相关性通常较低。为了满足这一需求,本文开发了一个多变量框架,用于使用这些混合物中存在的化学物质之间的关系来评估暴露程度。该框架考虑了所有化学物质的审查测量,从而使我们能够得出无偏的暴露估计。我们在各种审查级别上与较简单的模型一起评估了模型的性能,并评估了模型的95%覆盖率。我们应用了该模型,通过在Deepwater Horizo​​n溢油应急响应和清理过程中对Ocean Intervention III进行的三种原油中三种化学物质的测量来评估蒸气暴露。

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