Combining expert ratings and exposure measurements: a random effect paradigm.

P. Wild, E. Sauleau, E. Bourgkard, J. Moulin
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引用次数: 37

Abstract

The aim of this paper is to present a paradigm for combining ordinal expert ratings with exposure measurements while accounting for a between-worker effect when estimating exposure group (EG)-specific means for epidemiological purposes. Expert judgement is used to classify the EGs into a limited number of exposure levels independently of the exposure measurements. The mean exposure of each EG is considered to be a random deviate from a central exposure rating-specific value. Combining this approach with the standard between-worker random effect model, we obtain a nested two-way model. Using Gibbs sampling, we can fit such models incorporating prior information on components of variance and modelling options to the rating-specific means. An approximate formula is presented estimating the mean exposure of each EG as a function of the geometric mean of the measurements in this EG, between and within EG standard deviations and the overall geometric mean, thus borrowing information from other EGs. We apply this paradigm to an actual data set of dust exposure measurements in a steel producing factory. Some EG-specific means are quite different from the estimates including the ratings. Rating-specific means could be estimated under different hypotheses. It is argued that when setting up an expert rating of exposures it is best done independently of existing exposure measurements. The present model is then a convenient framework in which to combine the two sources of information.
结合专家评级和暴露测量:随机效应范式。
本文的目的是提出一种范式,将顺序专家评级与暴露测量相结合,同时在估计暴露组(EG)特定方法用于流行病学目的时考虑工人之间的影响。专家判断用于将EGs独立于暴露测量将其划分为有限数量的暴露水平。每个EG的平均暴露值被认为是与中央暴露等级特定值的随机偏差。将该方法与标准的工人间随机效应模型相结合,得到了一个嵌套的双向模型。使用吉布斯抽样,我们可以拟合这样的模型,将方差成分的先验信息和建模选项纳入到评级特定的均值中。提出了一个近似公式,估计每个EG的平均暴露量作为该EG中测量值的几何平均值的函数,在EG标准差之间和之内,以及总体几何平均值,从而借鉴了其他EG的信息。我们将此范例应用于一家钢铁生产工厂的粉尘暴露测量的实际数据集。一些特定于eg的方法与包括评级在内的估计有很大不同。在不同的假设下,可以估计出评级特定的均值。有人认为,在建立专家的暴露等级时,最好独立于现有的暴露测量来完成。因此,目前的模型是一个方便的框架,可以将两种信息来源结合起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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