In this paper, a Bayesian approach is developed for simultaneously comparing multiple experimental treatments with a common control treatment in an exploratory clinical trial. The sample size is set to ensure that, at the end of the study, there will be at least one treatment for which the investigators have a strong belief that it is better than control, or else they have a strong belief that none of the experimental treatments are substantially better than control. This criterion bears a direct relationship with conventional frequentist power requirements, while allowing prior opinion to feature in the analysis with a consequent reduction in sample size. If it is concluded that at least one of the experimental treatments shows promise, th...
In Bayesian inference, prior distributions formalize preexperimental information and uncertainty on ...
OBJECTIVE : In intervention research, the decision to continue developing a new program or treatmen...
This paper considers the design and interpretation of clinical trials comparing treatments for condi...
This paper presents a simple Bayesian approach to sample size determination in clinical trials. It i...
Design and analysis of clinical trials imply decisions that often involve multiple parties. We focus...
Current practice for sample size computations in clinical trials is largely based on frequentist or ...
In clinical research, parameters required for sample size calculation are usually unknown. A typical...
[[abstract]]In clinical research, parameters required for sample size calculation are usually unknow...
International audienceThe most common Bayesian methods for sample size determination (SSD) are revie...
It is common for a number of potentially effective treatments to be available for clinical evaluatio...
This article deals with determination of a sample size that guarantees the success of a trial. We fo...
Experimental design represents the typical context in which the interplay between Bayesian and frequ...
In this dissertation, we present new methods for Phase I trials and Small n Sequential Multiple Assi...
Basket trials are increasingly used for the simultaneous evaluation of a new treatment in various pa...
Objective: In intervention research, the decision to continue developing a new program or treatment ...
In Bayesian inference, prior distributions formalize preexperimental information and uncertainty on ...
OBJECTIVE : In intervention research, the decision to continue developing a new program or treatmen...
This paper considers the design and interpretation of clinical trials comparing treatments for condi...
This paper presents a simple Bayesian approach to sample size determination in clinical trials. It i...
Design and analysis of clinical trials imply decisions that often involve multiple parties. We focus...
Current practice for sample size computations in clinical trials is largely based on frequentist or ...
In clinical research, parameters required for sample size calculation are usually unknown. A typical...
[[abstract]]In clinical research, parameters required for sample size calculation are usually unknow...
International audienceThe most common Bayesian methods for sample size determination (SSD) are revie...
It is common for a number of potentially effective treatments to be available for clinical evaluatio...
This article deals with determination of a sample size that guarantees the success of a trial. We fo...
Experimental design represents the typical context in which the interplay between Bayesian and frequ...
In this dissertation, we present new methods for Phase I trials and Small n Sequential Multiple Assi...
Basket trials are increasingly used for the simultaneous evaluation of a new treatment in various pa...
Objective: In intervention research, the decision to continue developing a new program or treatment ...
In Bayesian inference, prior distributions formalize preexperimental information and uncertainty on ...
OBJECTIVE : In intervention research, the decision to continue developing a new program or treatmen...
This paper considers the design and interpretation of clinical trials comparing treatments for condi...