首页> 外文期刊>The Annals of occupational hygiene. >Combining a job-exposure matrix with exposure measurements to assess occupational exposure to benzene in a population cohort in Shanghai, China
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Combining a job-exposure matrix with exposure measurements to assess occupational exposure to benzene in a population cohort in Shanghai, China

机译:将工作暴露矩阵与暴露量测量值相结合,以评估中国上海某人群中苯的职业暴露量

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Background: Generic job-exposure matrices (JEMs) are often used in population-based epidemiologic studies to assess occupational risk factors when only the job and industry information of each subject is available. JEM ratings are often based on professional judgment, are usually ordinal or semi-quantitative, and often do not account for changes in exposure over time. We present an empirical Bayesian framework that combines ordinal subjective JEM ratings with benzene measurements. Our aim was to better discriminate between job, industry, and time differences in exposure levels compared to using a JEM alone. Methods: We combined 63221 short-term area air measurements of benzene exposure (1954-2000) collected during routine health and safety inspections in Shanghai, China, with independently developed JEM intensity ratings for each job and industry using a mixed-effects model. The fixed-effects terms included the JEM intensity ratings for job and industry (both ordinal, 0-3) and a time trend that we incorporated as a b-spline. The random-effects terms included job (n = 33) and industry nested within job (n = 399). We predicted the benzene concentration in two ways: (i) a calibrated JEM estimate was calculated using the fixed-effects model parameters for calendar year and JEM intensity ratings; (ii) a job-/industry-specific estimate was calculated using the fixed-effects model parameters and the best linear unbiased predictors from the random effects for job and industry using an empirical Bayes estimation procedure. Finally, we applied the predicted benzene exposures to a prospective population-based cohort of women in Shanghai, China (n = 74942). Results: Exposure levels were 13 times higher in 1965 than in 2000 and declined at a rate that varied from 4 to 15% per year from 1965 to 1985, followed by a small peak in the mid-1990s. The job-/industry-specific estimates had greater differences between exposure levels than the calibrated JEM estimates (97.5th percentile/2.5th percentile exposure level, BGR 95B: 20.4 versus 3.0, respectively). The calibrated JEM and job-/industry-specific estimates were moderately correlated in any given year (Pearson correlation, r p = 0.58). We classified only those jobs and industries with a job or industry JEM exposure probability rating of 3 (50% of workers exposed) as exposed. As a result, 14.8% of the subjects and 8.7% of the employed person-years in the study population were classified as benzene exposed. The cumulative exposure metrics based on the calibrated JEM and job-/industry-specific estimates were highly correlated (r p = 0.88). Conclusions: We provide a useful framework for combining quantitative exposure data with expert-based exposure ratings in population-based studies that maximized the information from both sources. Our framework calibrated the ratings to a concentration scale between ratings and across time and provided a mechanism to estimate exposure when a job/industry group reported by a subject was not represented in the exposure database. It also allowed the job/industry groups' exposure levels to deviate from the pooled average for their respective JEM intensity ratings.
机译:背景:当只有每个受试者的工作和行业信息可用时,基于人群的流行病学研究通常使用通用的工作暴露矩阵(JEM)来评估职业风险因素。 JEM评级通常是基于专业判断,通常是顺序或半定量的,并且通常不考虑暴露随时间的变化。我们提出了经验贝叶斯框架,该框架结合了有序的主观JEM评级与苯测量值。与仅使用JEM相比,我们的目标是更好地区分暴露水平的工作,行业和时间差异。方法:我们将在中国上海进行的常规健康与安全检查中收集的63221短期苯空气暴露区域(1954-2000)空气测量与使用混合效应模型针对每个工作和行业独立制定的JEM强度等级结合在一起。固定效应术语包括工作和行业的JEM强度等级(序数均为0-3)以及我们作为b样条曲线纳入的时间趋势。随机效应项包括工作(n = 33)和行业嵌套在工作中(n = 399)。我们通过两种方式预测苯的浓度:(i)使用日历年和JEM强度等级的固定效应模型参数计算校准的JEM估算值; (ii)使用固定效应模型参数和最佳的线性无偏预测因子,通过经验贝叶斯估计程序,根据对工作和行业的随机效应,计算出特定于工作/行业的估计。最后,我们将预测的苯暴露量应用于中国上海的预期人群研究(n = 74942)。结果:1965年的暴露水平是2000年的13倍,并且在1965年至1985年期间以每年4%到15%的速度下降,随后在1990年代中期出现了一个小高峰。特定于工作/行业的估计的暴露水平之间的差异比经过校准的JEM估计值高(分别为97.5%/ 2.5%,BGR 95B:20.4和3.0)。在任何给定的年份中,校准的JEM和特定于工作/行业的估计值均具有中等相关性(Pearson相关性,p = 0.58)。我们仅将那些具有职业或行业JEM暴露概率等级为3(> 50%受雇工人)的职业分类为暴露。结果,在研究人群中,有14.8%的受试者和8.7%的受雇人年被分类为苯暴露。基于校准的JEM和特定于工作/行业的估计的累积暴露指标高度相关(r p = 0.88)。结论:我们提供了一个有用的框架,可将基于人群的研究中的定量暴露数据与基于专家的暴露等级相结合,从而最大限度地利用两种来源的信息。我们的框架将评分校准为介于评分和跨时间之间的集中程度,并提供了一种机制来估算暴露对象数据库中未显示受试者报告的工作/行业组的暴露程度。它还允许工作/行业组的暴露水平偏离其各自的JEM强度等级的汇总平均值。

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