| Literature DB >> 3427157 |
Abstract
Misclassification is a common source of bias and reduced efficiency in the analysis of discrete data. Several methods have been proposed to adjust for misclassification using information on error rates (i) gathered by resampling the study population, (ii) gathered by sampling a separate population, or (iii) assumed a priori. We present unified methods for incorporating these types of information into analyses based on log-linear models and maximum likelihood estimation. General variance expressions are developed. Examples from epidemiologic studies are used to demonstrate the proposed methodology.Mesh:
Year: 1987 PMID: 3427157
Source DB: PubMed Journal: Biometrics ISSN: 0006-341X Impact factor: 2.571