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Approaches to Uncertainty in Exposure Assessment in Environmental Epidemiology
Author(s) -
Donna Spiegelman
Publication year - 2010
Publication title -
annual review of public health
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.239
H-Index - 144
eISSN - 1545-2093
pISSN - 0163-7525
DOI - 10.1146/annurev.publhealth.012809.103720
Subject(s) - statistics , confounding , exposure assessment , observational error , confidence interval , point estimation , econometrics , sensitivity (control systems) , uncertainty analysis , mathematics , engineering , electronic engineering
Uncertainty in assessment of individual exposure levels leads to bias, often, but not always, toward the null in estimates of health effects, and to underestimation of the variability of the estimates, leading to anticonservative p-values. In the absence of data on the uncertainty in individual exposure estimates, sensitivity analysis, also known as uncertainty analysis and bias analysis, is available. Hypothesized values of key parameters of the model relating the observed exposure to the true exposure are used to assess the resulting amount of bias in point and interval estimates. In general, the relative risk estimates can vary from zero to infinity as the hypothesized values of key parameters of the measurement error model vary. Thus, we recommend that exposure validation data be used to empirically adjust point and interval estimates of health effects for measurement error. The remainder of this review gives an overview of available methods for doing so. Just as we routinely adjust for confounding, we can and should routinely adjust for measurement error.

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