» Articles » PMID: 28138941

Measurement Error and Environmental Epidemiology: a Policy Perspective

Overview
Date 2017 Feb 1
PMID 28138941
Citations 6
Authors
Affiliations
Soon will be listed here.
Abstract

Purpose Of Review: Measurement error threatens public health by producing bias in estimates of the population impact of environmental exposures. Quantitative methods to account for measurement bias can improve public health decision making.

Recent Findings: We summarize traditional and emerging methods to improve inference under a standard perspective, in which the investigator estimates an exposure-response function, and a policy perspective, in which the investigator directly estimates population impact of a proposed intervention. Under a policy perspective, the analyst must be sensitive to errors in measurement of factors that modify the effect of exposure on outcome, must consider whether policies operate on the true or measured exposures, and may increasingly need to account for potentially dependent measurement error of two or more exposures affected by the same policy or intervention. Incorporating approaches to account for measurement error into such a policy perspective will increase the impact of environmental epidemiology.

Citing Articles

A simulation-based assessment of the ability to detect thresholds in chronic risk concentration-response functions in the presence of exposure measurement error.

Glasgow G, Ramkrishnan B, Smith A PLoS One. 2022; 17(3):e0264833.

PMID: 35275966 PMC: 8916630. DOI: 10.1371/journal.pone.0264833.


Disparate Associations of Years of Football Participation and a Metric of Head Impact Exposure with Neurobehavioral Outcomes in Former Collegiate Football Players.

Brett B, Nader A, Kerr Z, Chandran A, Walton S, DeFreese J J Int Neuropsychol Soc. 2021; 28(1):22-34.

PMID: 33563361 PMC: 8353007. DOI: 10.1017/S1355617721000047.


A Quantile-Based g-Computation Approach to Addressing the Effects of Exposure Mixtures.

Keil A, Buckley J, OBrien K, Ferguson K, Zhao S, White A Environ Health Perspect. 2020; 128(4):47004.

PMID: 32255670 PMC: 7228100. DOI: 10.1289/EHP5838.


Accounting for measurement error to assess the effect of air pollution on omic signals.

Ponzi E, Vineis P, Chung K, Blangiardo M PLoS One. 2020; 15(1):e0226102.

PMID: 31896134 PMC: 6940143. DOI: 10.1371/journal.pone.0226102.


Methods to account for uncertainties in exposure assessment in studies of environmental exposures.

Wu Y, Hoffman F, Apostoaei A, Kwon D, Thomas B, Glass R Environ Health. 2019; 18(1):31.

PMID: 30961632 PMC: 6454753. DOI: 10.1186/s12940-019-0468-4.


References
1.
Lajous M, Willett W, Robins J, Young J, Rimm E, Mozaffarian D . Changes in fish consumption in midlife and the risk of coronary heart disease in men and women. Am J Epidemiol. 2013; 178(3):382-91. PMC: 3727335. DOI: 10.1093/aje/kws478. View

2.
Masiuk S, Shklyar S, Kukush A, Carroll R, Kovgan L, Likhtarov I . Estimation of radiation risk in presence of classical additive and Berkson multiplicative errors in exposure doses. Biostatistics. 2016; 17(3):422-36. PMC: 4915607. DOI: 10.1093/biostatistics/kxv052. View

3.
Pollack A, Perkins N, Mumford S, Ye A, Schisterman E . Correlated biomarker measurement error: an important threat to inference in environmental epidemiology. Am J Epidemiol. 2012; 177(1):84-92. PMC: 3590042. DOI: 10.1093/aje/kws209. View

4.
Michels K . A renaissance for measurement error. Int J Epidemiol. 2001; 30(3):421-2. DOI: 10.1093/ije/30.3.421. View

5.
Taubman S, Robins J, Mittleman M, Hernan M . Intervening on risk factors for coronary heart disease: an application of the parametric g-formula. Int J Epidemiol. 2009; 38(6):1599-611. PMC: 2786249. DOI: 10.1093/ije/dyp192. View