Artigo Revisado por pares

A General Method for Dealing with Misclassification in Regression: The Misclassification SIMEX

2005; Oxford University Press; Volume: 62; Issue: 1 Linguagem: Inglês

10.1111/j.1541-0420.2005.00396.x

ISSN

1541-0420

Autores

Helmut Küchenhoff, Samuel Mwalili, Emmanuel Lesaffre,

Tópico(s)

Advanced Statistical Methods and Models

Resumo

Summary We have developed a new general approach for handling misclassification in discrete covariates or responses in regression models. The simulation and extrapolation (SIMEX) method, which was originally designed for handling additive covariate measurement error, is applied to the case of misclassification. The statistical model for characterizing misclassification is given by the transition matrix Π from the true to the observed variable. We exploit the relationship between the size of misclassification and bias in estimating the parameters of interest. Assuming that Π is known or can be estimated from validation data, we simulate data with higher misclassification and extrapolate back to the case of no misclassification. We show that our method is quite general and applicable to models with misclassified response and/or misclassified discrete regressors. In the case of a binary response with misclassification, we compare our method to the approach of Neuhaus (1999, Biometrika 86, 843–855), and to the matrix method of Morrissey and Spiegelman (1999, Biometrics 55, 338–344) in the case of a misclassified binary regressor. We apply our method to a study on caries with a misclassified longitudinal response.

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