
Exposure measurement error in air pollution studies: the impact of shared, multiplicative measurement error on epidemiological health risk estimates
Author(s) -
Mariam S. Girguis,
Lianfa Li,
Fred Lurmann,
Jun Wu,
Carrie V. Breton,
Frank D. Gilliland,
Daniel O. Stram,
Rima Habre
Publication year - 2020
Publication title -
air quality, atmosphere and health
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.751
H-Index - 45
eISSN - 1873-9326
pISSN - 1873-9318
DOI - 10.1007/s11869-020-00826-6
Subject(s) - observational error , statistics , environmental health , exposure assessment , epidemiology , environmental epidemiology , health effect , environmental science , multiple exposure , econometrics , computer science , mathematics , medicine , computer vision
Spatiotemporal air pollution models are increasingly being used to estimate health effects in epidemiological studies. Although such exposure prediction models typically result in improved spatial and temporal resolution of air pollution predictions, they remain subject to shared measurement error, a type of measurement error common in spatiotemporal exposure models which occurs when measurement error is not independent of exposures. A fundamental challenge of exposure measurement error in air pollution assessment is the strong correlation and sometimes identical (shared) error of exposure estimates across geographic space and time. When exposure estimates with shared measurement error are used to estimate health risk in epidemiological analyses, complex errors are potentially introduced, resulting in biased epidemiological conclusions. We demonstrate the influence of using a three-stage spatiotemporal exposure prediction model and introduce formal methods of shared, multiplicative measurement error (SMME) correction of epidemiological health risk estimates. Using our three-stage, ensemble learning based nitrogen oxides (NO x ) exposure prediction model, we quantified SMME. We conducted an epidemiological analysis of wheeze risk in relation to NO x exposure among school-aged children. To demonstrate the incremental influence of exposure modeling stage, we iteratively estimated the health risk using assigned exposure predictions from each stage of the NO x model. We then determined the impact of SMME on the variance of the health risk estimates under various scenarios. Depending on the stage of the spatiotemporal exposure model used, we found that wheeze odds ratio ranged from 1.16 to 1.28 for an interquartile range increase in NO x . With each additional stage of exposure modeling, the health effect estimate moved further away from the null (OR=1). When corrected for observed SMME, the health effects confidence intervals slightly lengthened, but our epidemiological conclusions were not altered. When the variance estimate was corrected for the potential "worst case scenario" of SMME, the standard error further increased, having a meaningful influence on epidemiological conclusions. Our framework can be expanded and used to understand the implications of using exposure predictions subject to shared measurement error in future health investigations.