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Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors

In epidemiological studies, exposures of interest are often measured with uncertainties, which may be independent or correlated. Independent errors can often be characterized relatively easily while correlated measurement errors have shared and hierarchical components that complicate the description...

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Autores principales: Zhang, Zhuo, Preston, Dale L., Sokolnikov, Mikhail, Napier, Bruce A., Degteva, Marina, Moroz, Brian, Vostrotin, Vadim, Shiskina, Elena, Birchall, Alan, Stram, Daniel O.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5378348/
https://www.ncbi.nlm.nih.gov/pubmed/28369141
http://dx.doi.org/10.1371/journal.pone.0174641
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author Zhang, Zhuo
Preston, Dale L.
Sokolnikov, Mikhail
Napier, Bruce A.
Degteva, Marina
Moroz, Brian
Vostrotin, Vadim
Shiskina, Elena
Birchall, Alan
Stram, Daniel O.
author_facet Zhang, Zhuo
Preston, Dale L.
Sokolnikov, Mikhail
Napier, Bruce A.
Degteva, Marina
Moroz, Brian
Vostrotin, Vadim
Shiskina, Elena
Birchall, Alan
Stram, Daniel O.
author_sort Zhang, Zhuo
collection PubMed
description In epidemiological studies, exposures of interest are often measured with uncertainties, which may be independent or correlated. Independent errors can often be characterized relatively easily while correlated measurement errors have shared and hierarchical components that complicate the description of their structure. For some important studies, Monte Carlo dosimetry systems that provide multiple realizations of exposure estimates have been used to represent such complex error structures. While the effects of independent measurement errors on parameter estimation and methods to correct these effects have been studied comprehensively in the epidemiological literature, the literature on the effects of correlated errors, and associated correction methods is much more sparse. In this paper, we implement a novel method that calculates corrected confidence intervals based on the approximate asymptotic distribution of parameter estimates in linear excess relative risk (ERR) models. These models are widely used in survival analysis, particularly in radiation epidemiology. Specifically, for the dose effect estimate of interest (increase in relative risk per unit dose), a mixture distribution consisting of a normal and a lognormal component is applied. This choice of asymptotic approximation guarantees that corrected confidence intervals will always be bounded, a result which does not hold under a normal approximation. A simulation study was conducted to evaluate the proposed method in survival analysis using a realistic ERR model. We used both simulated Monte Carlo dosimetry systems (MCDS) and actual dose histories from the Mayak Worker Dosimetry System 2013, a MCDS for plutonium exposures in the Mayak Worker Cohort. Results show our proposed methods provide much improved coverage probabilities for the dose effect parameter, and noticeable improvements for other model parameters.
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spelling pubmed-53783482017-04-07 Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors Zhang, Zhuo Preston, Dale L. Sokolnikov, Mikhail Napier, Bruce A. Degteva, Marina Moroz, Brian Vostrotin, Vadim Shiskina, Elena Birchall, Alan Stram, Daniel O. PLoS One Research Article In epidemiological studies, exposures of interest are often measured with uncertainties, which may be independent or correlated. Independent errors can often be characterized relatively easily while correlated measurement errors have shared and hierarchical components that complicate the description of their structure. For some important studies, Monte Carlo dosimetry systems that provide multiple realizations of exposure estimates have been used to represent such complex error structures. While the effects of independent measurement errors on parameter estimation and methods to correct these effects have been studied comprehensively in the epidemiological literature, the literature on the effects of correlated errors, and associated correction methods is much more sparse. In this paper, we implement a novel method that calculates corrected confidence intervals based on the approximate asymptotic distribution of parameter estimates in linear excess relative risk (ERR) models. These models are widely used in survival analysis, particularly in radiation epidemiology. Specifically, for the dose effect estimate of interest (increase in relative risk per unit dose), a mixture distribution consisting of a normal and a lognormal component is applied. This choice of asymptotic approximation guarantees that corrected confidence intervals will always be bounded, a result which does not hold under a normal approximation. A simulation study was conducted to evaluate the proposed method in survival analysis using a realistic ERR model. We used both simulated Monte Carlo dosimetry systems (MCDS) and actual dose histories from the Mayak Worker Dosimetry System 2013, a MCDS for plutonium exposures in the Mayak Worker Cohort. Results show our proposed methods provide much improved coverage probabilities for the dose effect parameter, and noticeable improvements for other model parameters. Public Library of Science 2017-04-03 /pmc/articles/PMC5378348/ /pubmed/28369141 http://dx.doi.org/10.1371/journal.pone.0174641 Text en © 2017 Zhang et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Zhang, Zhuo
Preston, Dale L.
Sokolnikov, Mikhail
Napier, Bruce A.
Degteva, Marina
Moroz, Brian
Vostrotin, Vadim
Shiskina, Elena
Birchall, Alan
Stram, Daniel O.
Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors
title Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors
title_full Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors
title_fullStr Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors
title_full_unstemmed Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors
title_short Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors
title_sort correction of confidence intervals in excess relative risk models using monte carlo dosimetry systems with shared errors
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5378348/
https://www.ncbi.nlm.nih.gov/pubmed/28369141
http://dx.doi.org/10.1371/journal.pone.0174641
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