| Literature DB >> 26190876 |
Grace Y Yi1, Yanyuan Ma2, Donna Spiegelman3, Raymond J Carroll4.
Abstract
Covariate measurement imprecision or errors arise frequently in many areas. It is well known that ignoring such errors can substantially degrade the quality of inference or even yield erroneous results. Although in practice both covariates subject to measurement error and covariates subject to misclassification can occur, research attention in the literature has mainly focused on addressing either one of these problems separately. To fill this gap, we develop estimation and inference methods that accommodate both characteristics simultaneously. Specifically, we consider measurement error and misclassification in generalized linear models under the scenario that an external validation study is available, and systematically develop a number of effective functional and structural methods. Our methods can be applied to different situations to meet various objectives.Entities:
Keywords: External validation study; Functional measurement error modeling; Generalized linear models; Likelihood method; Measurement error; Misclassification; Regression calibration; Semiparametric regression; Simulation extrapolation algorithm; Structural measurement error modeling
Year: 2015 PMID: 26190876 PMCID: PMC4504707 DOI: 10.1080/01621459.2014.922777
Source DB: PubMed Journal: J Am Stat Assoc ISSN: 0162-1459 Impact factor: 5.033