Title of article :
A Bayesian Adjustment for Covariate Misclassification with Correlated Binary Outcome Data
Author/Authors :
Dianxu Ren & Roslyn A. Stone، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Estimated associations between an outcome variable and misclassified covariates tend
to be biased when the methods of estimation that ignore the classification error are applied. Available
methods to account for misclassification often require the use of a validation sample (i.e. a gold
standard). In practice, however, such a gold standard may be unavailable or impractical.We propose
a Bayesian approach to adjust for misclassification in a binary covariate in the random effect logistic
model when a gold standard is not available. This Markov Chain Monte Carlo (MCMC) approach uses
two imperfect measures of a dichotomous exposure under the assumptions of conditional independence
and non-differential misclassification. A simulated numerical example and a real clinical example are
given to illustrate the proposed approach. Our results suggest that the estimated log odds of inpatient
care and the corresponding standard deviation are much larger in our proposed method compared
with the models ignoring misclassification. Ignoring misclassification produces downwardly biased
estimates and underestimate uncertainty.
Keywords :
Bayesian approach , Misclassification , Logistic model , MCMC , random effect logistic model
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS