| Literature DB >> 24009099 |
Jean de Dieu Tapsoba1, Shen-Ming Lee, Ching-Yun Wang.
Abstract
Data collected in many epidemiological or clinical research studies are often contaminated with measurement errors that may be of classical or Berkson error type. The measurement error may also be a combination of both classical and Berkson errors and failure to account for both errors could lead to unreliable inference in many situations. We consider regression analysis in generalized linear models when some covariates are prone to a mixture of Berkson and classical errors, and calibration data are available only for some subjects in a subsample. We propose an expected estimating equation approach to accommodate both errors in generalized linear regression analyses. The proposed method can consistently estimate the classical and Berkson error variances based on the available data, without knowing the mixture percentage. We investigated its finite-sample performance numerically. Our method is illustrated by an application to real data from an HIV vaccine study.Entities:
Keywords: Berkson error; calibration subsample; classical error; expected estimating equation; generalized linear model; instrumental variable
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Year: 2013 PMID: 24009099 PMCID: PMC3947110 DOI: 10.1002/sim.5966
Source DB: PubMed Journal: Stat Med ISSN: 0277-6715 Impact factor: 2.373