We develop a semiparametric Bayesian approach to missing outcome data in longitudinal studies in the presence of auxiliary covariates. We consider a joint model for the full data response, missingness, and auxiliary covariates. We include auxiliary covariates to “move” the missingness “closer” to missing at random. In particular, we specify a semiparametric Bayesian model for the observed data via Gaussian process priors and Bayesian additive regression trees. These model specifications allow us to capture nonlinear and nonadditive effects, in contrast to existing parametric methods. We then separately specify the conditional distribution of the missing data response given the observed data response, missingness, and auxiliary covariates (i...
In many situations where a statistician deals with missing data prior information is needed in order...
Drop-out is a prevalent complication in the analysis of data from longitudinal studies, and remains ...
This thesis develops Bayesian methods for analyzing clustered longitudinal data of discrete outcomes...
<div><p>We develop a Bayesian nonparametric model for a longitudinal response in the presence of non...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...
Randomized clinical trials with outcome measured longitudinally are frequently analyzed using either...
In randomized clinical trials, it is common that patients may stop taking their assigned treatments ...
In randomized clinical trials, it is common that patients may stop taking their assigned treatments ...
The analysis of longitudinal data with nonignorable dropout remains an active area in biostatistics ...
The analysis of longitudinal data with nonignorable dropout remains an active area in biostatistics ...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
In longitudinal clinical trials, it is common that subjects may permanently withdraw from the study ...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
Abstract: We consider inference in randomized longitudinal studies with missing data that is generat...
In many situations where a statistician deals with missing data prior information is needed in order...
Drop-out is a prevalent complication in the analysis of data from longitudinal studies, and remains ...
This thesis develops Bayesian methods for analyzing clustered longitudinal data of discrete outcomes...
<div><p>We develop a Bayesian nonparametric model for a longitudinal response in the presence of non...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...
Randomized clinical trials with outcome measured longitudinally are frequently analyzed using either...
In randomized clinical trials, it is common that patients may stop taking their assigned treatments ...
In randomized clinical trials, it is common that patients may stop taking their assigned treatments ...
The analysis of longitudinal data with nonignorable dropout remains an active area in biostatistics ...
The analysis of longitudinal data with nonignorable dropout remains an active area in biostatistics ...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
In longitudinal clinical trials, it is common that subjects may permanently withdraw from the study ...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
Abstract: We consider inference in randomized longitudinal studies with missing data that is generat...
In many situations where a statistician deals with missing data prior information is needed in order...
Drop-out is a prevalent complication in the analysis of data from longitudinal studies, and remains ...
This thesis develops Bayesian methods for analyzing clustered longitudinal data of discrete outcomes...