Missing covariate data is common in observational studies of time to an event, especially when covariates are repeatedly measured over time. Failure to account for the missing data can lead to bias or loss of efficiency, especially when the data are non-ignorably missing. Previous work has focused on the case of fixed covariates rather than those that are repeatedly measured over the follow-up period, so here we present a selection model that allows for proportional hazards regression with time-varying covariates when some covariates may be non-ignorably missing. We develop a fully Bayesian model and obtain posterior estimates of the parameters via the Gibbs sampler in WinBUGS. We illustrate our model with an analysis of post-diagnosis weig...
This dissertation includes three papers on missing data problems where methods other than parametric...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
We consider variable selection in the Cox regression model (Cox, 1975, Biometrika 362, 269–276) with...
Missing covariate data is common in observational studies of time to an event, especially when covar...
Missing covariate data often arise in various settings, including surveys, clinical trials, epidemio...
University of Minnesota Ph.D. dissertation. May 2011. Major: Biostatistics. Advisor: Melanie M. Wall...
In this paper, we develop Bayesian methodology and computational algorithms for variable subset sele...
Rationale This paper presents a Bayesian approach using WinBUGS for analysing survival data in which...
We consider the variable selection problem for a class of statistical models with missing data, incl...
BACKGROUND: Missing data in covariates can result in biased estimates and loss of power to detect as...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...
Covariate-adjusted sensitivity analyses is proposed for missing time-to-event outcomes. The method i...
In many longitudinal studies, individual characteristics associated with their repeated measures may...
Missing observations are a common occurrence in public health, clinical studies and social science r...
The selection of variables used to predict a time to event outcome is a common and important issue w...
This dissertation includes three papers on missing data problems where methods other than parametric...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
We consider variable selection in the Cox regression model (Cox, 1975, Biometrika 362, 269–276) with...
Missing covariate data is common in observational studies of time to an event, especially when covar...
Missing covariate data often arise in various settings, including surveys, clinical trials, epidemio...
University of Minnesota Ph.D. dissertation. May 2011. Major: Biostatistics. Advisor: Melanie M. Wall...
In this paper, we develop Bayesian methodology and computational algorithms for variable subset sele...
Rationale This paper presents a Bayesian approach using WinBUGS for analysing survival data in which...
We consider the variable selection problem for a class of statistical models with missing data, incl...
BACKGROUND: Missing data in covariates can result in biased estimates and loss of power to detect as...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...
Covariate-adjusted sensitivity analyses is proposed for missing time-to-event outcomes. The method i...
In many longitudinal studies, individual characteristics associated with their repeated measures may...
Missing observations are a common occurrence in public health, clinical studies and social science r...
The selection of variables used to predict a time to event outcome is a common and important issue w...
This dissertation includes three papers on missing data problems where methods other than parametric...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
We consider variable selection in the Cox regression model (Cox, 1975, Biometrika 362, 269–276) with...