My doctoral research focused on two topics: i) models for the analysis of multi-state time-to-event data; and ii) decision-theoretic approaches for the design of clinical trials with a survival endpoint. For the first, I developed stochastic processes useful for the Bayesian non-parametric analysis of follow-up studies where patients may experience multiple events relevant to their prognosis. For the second, I developed an approach that uses data from early clinical trials to specify the statistical test used in a confirmatory survival study, accounting for the possible failure of standard assumptions. In this thesis, I describe 3 research papers that report my contributions. Part of my work has been conducted while a visiting researcher at...
Reliability and survival data are widely encountered across many common settings. Subjects under inv...
University of Minnesota Ph.D. dissertation. August 2015. Major: Biostatistics. Advisor: Joseph Koopm...
Sequential, multiple assignment, randomized trials (SMARTs) typically rely on a binary variable to d...
This thesis explores Bayesian methods for the statistical design, analysis and synthesis of clinical...
Joint models are increasingly used for the analysis of clinical trials data. However, few methods ha...
This dissertation focuses on developing Bayesian survival analysis methodology for optimizing decisi...
We overview Bayesian estimation, hypothesis testing, and model-averaging and illustrate how they ben...
Background Bayesian statistics are an appealing alternative to the traditional frequentist approach ...
In the first part of the dissertation, we present a Bayesian framework for sequential monitoring tha...
In many biomedical studies, the observed data may violate the assumptions of standard parametric met...
The gold of biostatistical researches is to develop statistical tools that improves human health or ...
The main focus of this Phd project is the application of Bayesian models in Biostatistics.It has bec...
Recent scientific advances in biomedical research have rapidly increased the number of promising new...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
Clinical trials have many different aspects to them, and here three topics will be explored: Bayesia...
Reliability and survival data are widely encountered across many common settings. Subjects under inv...
University of Minnesota Ph.D. dissertation. August 2015. Major: Biostatistics. Advisor: Joseph Koopm...
Sequential, multiple assignment, randomized trials (SMARTs) typically rely on a binary variable to d...
This thesis explores Bayesian methods for the statistical design, analysis and synthesis of clinical...
Joint models are increasingly used for the analysis of clinical trials data. However, few methods ha...
This dissertation focuses on developing Bayesian survival analysis methodology for optimizing decisi...
We overview Bayesian estimation, hypothesis testing, and model-averaging and illustrate how they ben...
Background Bayesian statistics are an appealing alternative to the traditional frequentist approach ...
In the first part of the dissertation, we present a Bayesian framework for sequential monitoring tha...
In many biomedical studies, the observed data may violate the assumptions of standard parametric met...
The gold of biostatistical researches is to develop statistical tools that improves human health or ...
The main focus of this Phd project is the application of Bayesian models in Biostatistics.It has bec...
Recent scientific advances in biomedical research have rapidly increased the number of promising new...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
Clinical trials have many different aspects to them, and here three topics will be explored: Bayesia...
Reliability and survival data are widely encountered across many common settings. Subjects under inv...
University of Minnesota Ph.D. dissertation. August 2015. Major: Biostatistics. Advisor: Joseph Koopm...
Sequential, multiple assignment, randomized trials (SMARTs) typically rely on a binary variable to d...