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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
Author(s) -
Melissa C. Friesen,
Joseph Coble,
Wei Lü,
XiaoOu Shu,
Bu-Tian Ji,
Shouzheng Xue,
Lützen Portengen,
WongHo Chow,
Yu-Tang Gao,
Gong Yang,
Nathaniel Rothman,
Roel Vermeulen
Publication year - 2011
Publication title -
the annals of occupational hygiene
Language(s) - English
Resource type - Journals
eISSN - 1475-3162
pISSN - 0003-4878
DOI - 10.1093/annhyg/mer080
Subject(s) - job exposure matrix , random effects model , exposure assessment , econometrics , statistics , population , cohort study , estimation , environmental health , psychology , meta analysis , medicine , mathematics , engineering , systems engineering
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.

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