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The CONSTANCES job exposure matrix based on selfreported exposure to physical risk factors: development and evaluation

机译:基于自我报告的身体危险因素的跨国作业曝光矩阵:发展和评估

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Objectives Job exposure matrices (JEMs) can be constructed from expert-rated assessments, direct measurement and self-reports. This paper describes the construction of a general population JEM based on self-reported physical exposures, its ability to create homogeneous exposure groups (HEG) and the use of different exposure metrics to express job-level estimates. Methods The JEM was constructed from physical exposure data obtained from the Cohorte des consultants des Centres d'examens de sante (CONSTANCE S). Using data from 35 526 eligible participants, the JEM consisted of 27 physical risk factors from 407 job codes. We determined whether the JEM created HEG by performing non-parametric multivariate analysis of variance (NPMANOVA). We compared three exposure metrics (mean, bias-corrected mean, median) by calculating within-job and between-job variances, and by residual plots between each metric and individual reported exposure. Results NPMANOVA showed significantly higher between-job than within-job variance among the 27 risk factors (F(253,21964)= 61.33, p< 0.0001, r2= 41.1%). The bias-corrected mean produced more favourable HEG as we observed higher between-job variance and more explained variance than either means or medians. When compared with individual reported exposures, the biascorrected mean led to near-zero mean differences and lower variance than other exposure metrics. Conclusions CONSTANCE S JEM using self-reported data yielded HEGs, and can thus classify individual participants based on job title. The bias-corrected mean metric may better reflect the shape of the underlying exposure distribution. This JEM opens new possibilities for using unbiased exposure estimates to study the effects of workplace physical exposures on a variety of health conditions within a large general population study.
机译:目标工作曝光矩阵(JEM)可以由专家额定评估,直接测量和自我报告构建。本文介绍了基于自我报告的物理曝光的一般人口JEM的构建,它创建均匀暴露组(HEG)和使用不同的曝光指标来表达工作级别估计。方法采用来自Cohorte des Consultants des Centers de Sante(Constance S)获得的物理曝光数据构建的JEM。使用来自35个526个符合条件的参与者的数据,JEM由40个工作号码的27个身体危险因素组成。我们确定JEM是否通过执行对方差(NPManova)的非参数多变量分析来创建了HEG。我们通过在工作内和作业之间的工作场所和作业之间的差异和作业之间的剩余地块和各个度量报告的曝光之间进行了三个曝光度量(平均校正平均值,中位数)。结果NPManova在27个风险因素(F(253,21964)= 61.33,P <0.0001,R2 = 41.1%)之间的工作与工作中的工作方案显着更高。偏置校正的平均值产生了更有利的毛灵,因为我们观察到工作方差更高,比手段或中位数更加解释的差异。与个体报告的曝光相比,BIASCorrected均值导致接近零的平均差异和比其他曝光度量的差异较低。结论康斯坦茨利用自我报告的数据产生了休息,因此可以根据职称分类个人参与者。偏置校正的平均度量可以更好地反映潜在的曝光分布的形状。该JEM开启了使用无偏见的曝光估计来研究工作场所身体暴露对大型一般人群研究中各种健康状况的影响的新可能性。

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