Incorporating Individual-Level Distributions of Exposure Error in Epidemiologic Analyses: An Example Using Arsenic in Drinking Water and Bladder Cancer

Purpose Epidemiologic analyses traditionally rely on point estimates of exposure for assessing risk despite exposure error. We present a strategy that produces a range of risk estimates reflecting distributions of individual-level exposure. Methods Quantitative estimates of exposure and its associat...

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Veröffentlicht in:Annals of epidemiology 2010-10, Vol.20 (10), p.750-758
Hauptverfasser: Meliker, Jaymie R., PhD, Goovaerts, Pierre, PhD, Jacquez, Geoffrey M., PhD, Nriagu, Jerome O., PhD
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Sprache:eng
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Zusammenfassung:Purpose Epidemiologic analyses traditionally rely on point estimates of exposure for assessing risk despite exposure error. We present a strategy that produces a range of risk estimates reflecting distributions of individual-level exposure. Methods Quantitative estimates of exposure and its associated error are used to create for each individual a normal distribution of exposure estimates which is then sampled using Monte Carlo simulation. After the exposure estimate is sampled, the relationship between exposure and disease is evaluated; this process is repeated 99 times generating a distribution of risk estimates and confidence intervals. This is demonstrated in a bladder cancer case-control study using individual-level distributions of exposure to arsenic in drinking water. Results Sensitivity analyses indicate similar performance for categorical or continuous exposure estimates, and that increases in exposure error translate into a wider range of risk estimates. Bladder cancer analyses yield a wide range of possible risk estimates, allowing quantification of exposure error in the association between arsenic and bladder cancer, typically ignored in conventional analyses. Conclusions Incorporating distributions of individual-level exposure error results in a more nuanced depiction of epidemiologic findings. This approach can be readily adopted by epidemiologists assuming distributions of individual-level exposure.
ISSN:1047-2797
1873-2585
DOI:10.1016/j.annepidem.2010.06.012