Back to Search Start Over

Longitudinal data analysis with covariates measurement error

Authors :
Wang, Liqun (Statistics) Tate, Robert B. (Community Health Sciences)
Torabi, Mahmoud (Statistics)
Hoque, Md. Erfanul
Wang, Liqun (Statistics) Tate, Robert B. (Community Health Sciences)
Torabi, Mahmoud (Statistics)
Hoque, Md. Erfanul
Publication Year :
2016

Abstract

Longitudinal data occur frequently in medical studies and covariates measured by error are typical features of such data. Generalized linear mixed models (GLMMs) are commonly used to analyse longitudinal data. It is typically assumed that the random effects covariance matrix is constant across the subject (and among subjects) in these models. In many situations, however, this correlation structure may differ among subjects and ignoring this heterogeneity can cause the biased estimates of model parameters. In this thesis, following Lee et al. (2012), we propose an approach to properly model the random effects covariance matrix based on covariates in the class of GLMMs where we also have covariates measured by error. The resulting parameters from this decomposition have a sensible interpretation and can easily be modelled without the concern of positive definiteness of the resulting estimator. The performance of the proposed approach is evaluated through simulation studies which show that the proposed method performs very well in terms biases and mean square errors as well as coverage rates. The proposed method is also analysed using a data from Manitoba Follow-up Study.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1198411288
Document Type :
Electronic Resource