Log-Linear Modeling of Agreement among Expert Exposure Assessors.

Annals of Occupational Hygiene Pub Date : 2015-07-01 Epub Date: 2015-03-06 DOI:10.1093/annhyg/mev011
Phillip R Hunt, Melissa C Friesen, Susan Sama, Louise Ryan, Donald Milton
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引用次数: 2

Abstract

Background: Evaluation of expert assessment of exposure depends, in the absence of a validation measurement, upon measures of agreement among the expert raters. Agreement is typically measured using Cohen's Kappa statistic, however, there are some well-known limitations to this approach. We demonstrate an alternate method that uses log-linear models designed to model agreement. These models contain parameters that distinguish between exact agreement (diagonals of agreement matrix) and non-exact associations (off-diagonals). In addition, they can incorporate covariates to examine whether agreement differs across strata.

Methods: We applied these models to evaluate agreement among expert ratings of exposure to sensitizers (none, likely, high) in a study of occupational asthma.

Results: Traditional analyses using weighted kappa suggested potential differences in agreement by blue/white collar jobs and office/non-office jobs, but not case/control status. However, the evaluation of the covariates and their interaction terms in log-linear models found no differences in agreement with these covariates and provided evidence that the differences observed using kappa were the result of marginal differences in the distribution of ratings rather than differences in agreement. Differences in agreement were predicted across the exposure scale, with the likely moderately exposed category more difficult for the experts to differentiate from the highly exposed category than from the unexposed category.

Conclusions: The log-linear models provided valuable information about patterns of agreement and the structure of the data that were not revealed in analyses using kappa. The models' lack of dependence on marginal distributions and the ease of evaluating covariates allow reliable detection of observational bias in exposure data.

专家暴露评估者共识的对数线性模型。
背景:在没有验证测量的情况下,专家对暴露评估的评价取决于专家评价者之间的一致性。一致性通常使用Cohen的Kappa统计来衡量,然而,这种方法有一些众所周知的局限性。我们展示了另一种方法,即使用对数线性模型来模拟协议。这些模型包含区分精确一致(一致矩阵的对角线)和非精确关联(非对角线)的参数。此外,他们可以结合协变量来检查不同阶层的一致性是否不同。方法:我们应用这些模型来评估专家在职业性哮喘研究中对致敏剂暴露(无、可能、高)评级的一致性。结果:使用加权kappa的传统分析表明,蓝领/白领工作和办公室/非办公室工作在协议方面存在潜在差异,但病例/对照状态没有。然而,在对数线性模型中对协变量及其相互作用项的评估没有发现与这些协变量一致的差异,并提供证据表明,使用kappa观察到的差异是评级分布的边际差异的结果,而不是一致性差异的结果。在整个暴露尺度上,一致性的差异被预测出来,对于专家来说,将可能的中度暴露类别与高度暴露类别区分开来比从未暴露类别区分开来更困难。结论:对数线性模型提供了关于协议模式和数据结构的有价值的信息,这些信息在使用kappa分析中没有揭示。该模型不依赖于边际分布,且易于评估协变量,因此可以可靠地检测暴露数据中的观测偏倚。
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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