Literature DB >> 15286024

Monte Carlo sensitivity analysis and Bayesian analysis of smoking as an unmeasured confounder in a study of silica and lung cancer.

Kyle Steenland1, Sander Greenland.   

Abstract

Conventional confidence intervals reflect uncertainty due to random error but omit uncertainty due to biases, such as confounding, selection bias, and measurement error. Such uncertainty can be quantified, especially if the investigator has some idea of the amount of such bias. A traditional sensitivity analysis produces one or more point estimates for the exposure effect hypothetically adjusted for bias, but it does not provide a range of effect measures given the likely range of bias. Here the authors used Monte Carlo sensitivity analysis and Bayesian bias analysis to provide such a range, using data from a US silica-lung cancer study in which results were potentially confounded by smoking. After positing a distribution for the smoking habits of workers and referents, a distribution of rate ratios for the effect of smoking on lung cancer, and a model for the bias parameter, the authors derived a distribution for the silica-lung cancer rate ratios hypothetically adjusted for smoking. The original standardized mortality ratio for the silica-lung cancer relation was 1.60 (95% confidence interval: 1.31, 1.93). Monte Carlo sensitivity analysis, adjusting for possible confounding by smoking, led to an adjusted standardized mortality ratio of 1.43 (95% Monte Carlo limits: 1.15, 1.78). Bayesian results were similar (95% posterior limits: 1.13, 1.84). The authors believe that these types of analyses, which make explicit and quantify sources of uncertainty, should be more widely adopted by epidemiologists.

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Year:  2004        PMID: 15286024     DOI: 10.1093/aje/kwh211

Source DB:  PubMed          Journal:  Am J Epidemiol        ISSN: 0002-9262            Impact factor:   4.897


  57 in total

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2.  Using bayesian models to assess the effects of under-reporting of cannabis use on the association with birth defects, national birth defects prevention study, 1997-2005.

Authors:  Marleen M H J van Gelder; A Rogier T Donders; Owen Devine; Nel Roeleveld; Jennita Reefhuis
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3.  A guide for multilevel modeling of dyadic data with binary outcomes using SAS PROC NLMIXED.

Authors:  James M McMahon; Enrique R Pouget; Stephanie Tortu
Journal:  Comput Stat Data Anal       Date:  2006-08       Impact factor: 1.681

4.  Reducing healthy worker survivor bias by restricting date of hire in a cohort study of Vermont granite workers.

Authors:  Katie M Applebaum; Elizabeth J Malloy; Ellen A Eisen
Journal:  Occup Environ Med       Date:  2007-04-20       Impact factor: 4.402

Review 5.  Uncertainty analysis: an example of its application to estimating a survey proportion.

Authors:  Anne M Jurek; George Maldonado; Sander Greenland; Timothy R Church
Journal:  J Epidemiol Community Health       Date:  2007-07       Impact factor: 3.710

6.  Propensity score-based sensitivity analysis method for uncontrolled confounding.

Authors:  Lingling Li; Changyu Shen; Ann C Wu; Xiaochun Li
Journal:  Am J Epidemiol       Date:  2011-06-09       Impact factor: 4.897

7.  Bayesian methods for correcting misclassification: an example from birth defects epidemiology.

Authors:  Richard F MacLehose; Andrew F Olshan; Amy H Herring; Margaret A Honein; Gary M Shaw; Paul A Romitti
Journal:  Epidemiology       Date:  2009-01       Impact factor: 4.822

8.  Cancer incidence among Minnesota taconite mining industry workers.

Authors:  Elizabeth M Allen; Bruce H Alexander; Richard F MacLehose; Heather H Nelson; Gurumurthy Ramachandran; Jeffrey H Mandel
Journal:  Ann Epidemiol       Date:  2015-08-29       Impact factor: 3.797

9.  Comparison of bias analysis strategies applied to a large data set.

Authors:  Timothy L Lash; Barbara Abrams; Lisa M Bodnar
Journal:  Epidemiology       Date:  2014-07       Impact factor: 4.822

10.  Coronary artery disease and cancer mortality in a cohort of workers exposed to vinyl chloride, carbon disulfide, rotating shift work, and o-toluidine at a chemical manufacturing plant.

Authors:  Tania Carreón; Misty J Hein; Kevin W Hanley; Susan M Viet; Avima M Ruder
Journal:  Am J Ind Med       Date:  2014-01-24       Impact factor: 2.214

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