Cargando…

Risk Estimation with Epidemiologic Data When Response Attenuates at High-Exposure Levels

BACKGROUND: In occupational studies, which are commonly used for risk assessment for environmental settings, estimated exposure–response relationships often attenuate at high exposures. Relative risk (RR) models with transformed (e.g., log- or square root–transformed) exposures can provide a good fi...

Descripción completa

Detalles Bibliográficos
Autores principales: Steenland, Kyle, Seals, Ryan, Klein, Mitch, Jinot, Jennifer, Kahn, Henry D.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: National Institute of Environmental Health Sciences 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3114819/
https://www.ncbi.nlm.nih.gov/pubmed/21220221
http://dx.doi.org/10.1289/ehp.1002521
_version_ 1782206120321875968
author Steenland, Kyle
Seals, Ryan
Klein, Mitch
Jinot, Jennifer
Kahn, Henry D.
author_facet Steenland, Kyle
Seals, Ryan
Klein, Mitch
Jinot, Jennifer
Kahn, Henry D.
author_sort Steenland, Kyle
collection PubMed
description BACKGROUND: In occupational studies, which are commonly used for risk assessment for environmental settings, estimated exposure–response relationships often attenuate at high exposures. Relative risk (RR) models with transformed (e.g., log- or square root–transformed) exposures can provide a good fit to such data, but resulting exposure–response curves that are supralinear in the low-dose region may overestimate low-dose risks. Conversely, a model of untransformed (linear) exposure may underestimate risks attributable to exposures in the low-dose region. METHODS: We examined several models, seeking simple parametric models that fit attenuating exposure–response data well. We have illustrated the use of both log-linear and linear RR models using cohort study data on breast cancer and exposure to ethylene oxide. RESULTS: Linear RR models fit the data better than do corresponding log-linear models. Among linear RR models, linear (untransformed), log-transformed, square root–transformed, linear-exponential, and two-piece linear exposure models all fit the data reasonably well. However, the slopes of the predicted exposure–response relations were very different in the low-exposure range, which resulted in different estimates of the exposure concentration associated with a 1% lifetime excess risk (0.0400, 0.00005, 0.0016, 0.0113, and 0.0100 ppm, respectively). The linear (in exposure) model underestimated the categorical exposure–response in the low-dose region, whereas log-transformed and square root–transformed exposure models overestimated it. CONCLUSION: Although a number of models may fit attenuating data well, models that assume linear or nearly linear exposure–response relations in the low-dose region of interest may be preferred by risk assessors, because they do not depend on the choice of a point of departure for linear low-dose extrapolation and are relatively easy to interpret.
format Online
Article
Text
id pubmed-3114819
institution National Center for Biotechnology Information
language English
publishDate 2011
publisher National Institute of Environmental Health Sciences
record_format MEDLINE/PubMed
spelling pubmed-31148192011-06-16 Risk Estimation with Epidemiologic Data When Response Attenuates at High-Exposure Levels Steenland, Kyle Seals, Ryan Klein, Mitch Jinot, Jennifer Kahn, Henry D. Environ Health Perspect Research BACKGROUND: In occupational studies, which are commonly used for risk assessment for environmental settings, estimated exposure–response relationships often attenuate at high exposures. Relative risk (RR) models with transformed (e.g., log- or square root–transformed) exposures can provide a good fit to such data, but resulting exposure–response curves that are supralinear in the low-dose region may overestimate low-dose risks. Conversely, a model of untransformed (linear) exposure may underestimate risks attributable to exposures in the low-dose region. METHODS: We examined several models, seeking simple parametric models that fit attenuating exposure–response data well. We have illustrated the use of both log-linear and linear RR models using cohort study data on breast cancer and exposure to ethylene oxide. RESULTS: Linear RR models fit the data better than do corresponding log-linear models. Among linear RR models, linear (untransformed), log-transformed, square root–transformed, linear-exponential, and two-piece linear exposure models all fit the data reasonably well. However, the slopes of the predicted exposure–response relations were very different in the low-exposure range, which resulted in different estimates of the exposure concentration associated with a 1% lifetime excess risk (0.0400, 0.00005, 0.0016, 0.0113, and 0.0100 ppm, respectively). The linear (in exposure) model underestimated the categorical exposure–response in the low-dose region, whereas log-transformed and square root–transformed exposure models overestimated it. CONCLUSION: Although a number of models may fit attenuating data well, models that assume linear or nearly linear exposure–response relations in the low-dose region of interest may be preferred by risk assessors, because they do not depend on the choice of a point of departure for linear low-dose extrapolation and are relatively easy to interpret. National Institute of Environmental Health Sciences 2011-06 2011-01-10 /pmc/articles/PMC3114819/ /pubmed/21220221 http://dx.doi.org/10.1289/ehp.1002521 Text en http://creativecommons.org/publicdomain/mark/1.0/ Publication of EHP lies in the public domain and is therefore without copyright. All text from EHP may be reprinted freely. Use of materials published in EHP should be acknowledged (for example, ?Reproduced with permission from Environmental Health Perspectives?); pertinent reference information should be provided for the article from which the material was reproduced. Articles from EHP, especially the News section, may contain photographs or illustrations copyrighted by other commercial organizations or individuals that may not be used without obtaining prior approval from the holder of the copyright.
spellingShingle Research
Steenland, Kyle
Seals, Ryan
Klein, Mitch
Jinot, Jennifer
Kahn, Henry D.
Risk Estimation with Epidemiologic Data When Response Attenuates at High-Exposure Levels
title Risk Estimation with Epidemiologic Data When Response Attenuates at High-Exposure Levels
title_full Risk Estimation with Epidemiologic Data When Response Attenuates at High-Exposure Levels
title_fullStr Risk Estimation with Epidemiologic Data When Response Attenuates at High-Exposure Levels
title_full_unstemmed Risk Estimation with Epidemiologic Data When Response Attenuates at High-Exposure Levels
title_short Risk Estimation with Epidemiologic Data When Response Attenuates at High-Exposure Levels
title_sort risk estimation with epidemiologic data when response attenuates at high-exposure levels
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3114819/
https://www.ncbi.nlm.nih.gov/pubmed/21220221
http://dx.doi.org/10.1289/ehp.1002521
work_keys_str_mv AT steenlandkyle riskestimationwithepidemiologicdatawhenresponseattenuatesathighexposurelevels
AT sealsryan riskestimationwithepidemiologicdatawhenresponseattenuatesathighexposurelevels
AT kleinmitch riskestimationwithepidemiologicdatawhenresponseattenuatesathighexposurelevels
AT jinotjennifer riskestimationwithepidemiologicdatawhenresponseattenuatesathighexposurelevels
AT kahnhenryd riskestimationwithepidemiologicdatawhenresponseattenuatesathighexposurelevels