Literature DB >> 20007122

Bayesian method for improving logistic regression estimates under group-based exposure assessment with additive measurement errors.

Hyang-Mi Kim1, Igor Burstyn.   

Abstract

The group-based exposure assessment has been widely used in occupational epidemiology. When the sample size used to estimate group means is "large", this leads to negligible attenuation in the estimation of odds ratio. However, the bias is proportional to the between-subject variability and is affected by the difference in true group means. We explore a Bayesian method, which adjusts in a natural way for the extra uncertainty in the outcome model associated with using the predicted values as exposures. We aim to improve the estimate obtained in naïve analysis by exploiting the properties of Berkson type error structure. We consider cases where differences in the proximity of group means and the between-subject variance are both large. The results of the simulations show that our Bayesian measurement error adjustment method that follows group-based exposure assessment improves estimates of odds ratios when the between-subject variance is large and group means are far apart.

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Year:  2009        PMID: 20007122     DOI: 10.1080/19338240903348220

Source DB:  PubMed          Journal:  Arch Environ Occup Health        ISSN: 1933-8244            Impact factor:   1.663


  1 in total

1.  Berkson error adjustment and other exposure surrogates in occupational case-control studies, with application to the Canadian INTEROCC study.

Authors:  Tamer Oraby; Siva Sivaganesan; Joseph D Bowman; Laurel Kincl; Lesley Richardson; Mary McBride; Jack Siemiatycki; Elisabeth Cardis; Daniel Krewski
Journal:  J Expo Sci Environ Epidemiol       Date:  2017-03-29       Impact factor: 5.563

  1 in total

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