In clinical trials, multiple endpoints for treatment efficacy often are obtained, and in addition, data may be collected hierarchically. Statistical analyses become very challenging for this multidimensional hierarchical data, particularly with data collected at more than two levels. We propose a latent variable approach to assess an intervention effect on multiple binary outcomes from three-level hierarchical data. This approach incorporates the correlation structure into one or more latent outcomes, and simultaneously regresses the latent outcome(s) on observed covariates. Random effects are included to model the hierarchical structure. Parameters estimation is done using a fully Bayesian approach implemented in WinBUGS. We first illustra...
In clinical trials, it is common to have multiple clinical outcomes (e.g., co-primary endpoints or a...
BACKGROUND: Bayesian hierarchical models have been proposed to combine evidence from different types...
open2noIn this article, we aim at assessing hierarchical Bayesian modeling for the analysis of multi...
In clinical trials, multiple endpoints for treatment efficacy often are obtained, and in addition, d...
The paper deals with the analysis of multiple exposures on the occurrence of a disease. We consider ...
University of Minnesota Ph.D. dissertation. August 2013. Major: Biostatistics. Advisors: Bradley P. ...
Multivariate data is common in a wide range of settings. As data structures become increasingly com...
Background: Routinely collected healthcare data provides a rich environment for the investigation of...
Cost-effectiveness analyses (CEA) may be undertaken alongside cluster randomized trials (CRTs) where...
Colorectal cancer is the second leading cause of cancer related deaths in the United States, with mo...
Joint modeling has become a topic of great interest in recent years. The models are simultaneously ...
AbstractBackgroundIn medical, social, and behavioral research we often encounter datasets with a mul...
The role of biomarkers has increased in cancer clinical trials such that novel designs are needed to...
none2In this paper, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple ...
Background: There is limited guidance for using common drug therapies in the context of multimorbi...
In clinical trials, it is common to have multiple clinical outcomes (e.g., co-primary endpoints or a...
BACKGROUND: Bayesian hierarchical models have been proposed to combine evidence from different types...
open2noIn this article, we aim at assessing hierarchical Bayesian modeling for the analysis of multi...
In clinical trials, multiple endpoints for treatment efficacy often are obtained, and in addition, d...
The paper deals with the analysis of multiple exposures on the occurrence of a disease. We consider ...
University of Minnesota Ph.D. dissertation. August 2013. Major: Biostatistics. Advisors: Bradley P. ...
Multivariate data is common in a wide range of settings. As data structures become increasingly com...
Background: Routinely collected healthcare data provides a rich environment for the investigation of...
Cost-effectiveness analyses (CEA) may be undertaken alongside cluster randomized trials (CRTs) where...
Colorectal cancer is the second leading cause of cancer related deaths in the United States, with mo...
Joint modeling has become a topic of great interest in recent years. The models are simultaneously ...
AbstractBackgroundIn medical, social, and behavioral research we often encounter datasets with a mul...
The role of biomarkers has increased in cancer clinical trials such that novel designs are needed to...
none2In this paper, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple ...
Background: There is limited guidance for using common drug therapies in the context of multimorbi...
In clinical trials, it is common to have multiple clinical outcomes (e.g., co-primary endpoints or a...
BACKGROUND: Bayesian hierarchical models have been proposed to combine evidence from different types...
open2noIn this article, we aim at assessing hierarchical Bayesian modeling for the analysis of multi...