Abstract Background Statistical inference based on small datasets, commonly found in precision oncology, is subject to low power and high uncertainty. In these settings, drawing strong conclusions about future research utility is difficult when using standard inferential measures. It is therefore important to better quantify the uncertainty associated with both significant and non-significant results based on small sample sizes. Methods We developed a new method, Bayesian Additional Evidence (BAE), that determines (1) how much additional supportive evidence is needed for a non-significant result to reach Bayesian posterior credibility, or (2) how much additional opposing evidence is needed to render a significant result non-credible. Althou...
Monte Carlo simulation is a useful technique to propagate uncertainty through a quantitative model, ...
Bayesian analysis of a non-inferiority trial is advantageous in allowing direct probability statemen...
This paper presents a simple Bayesian approach to sample size determination in clinical trials. It i...
We examine the concept of Bayesian Additional Evidence (BAE) recently proposed by Sondhi et al. We d...
With the increased use of Bayesian informative hypothesis testing, practical, philosophical and meth...
Abstract Background A priori sample size calculation requires an a priori estimate of the size of th...
Most clinical trials use null hypothesis significance testing with frequentist statistical inference...
Design and analysis of clinical trials imply decisions that often involve multiple parties. We focus...
In frequentist tests, the significance testing framework for null hypothesis permits dichotomous con...
Bayesian inference is usually presented as a method for determining how scientific belief should be ...
This article considers sample size determination methods based on Bayesian credible intervals for th...
This article deals with determination of a sample size that guarantees the success of a trial. We fo...
Bayesian methods have the potential for increasing power in mediation analysis (Koopman, Howe, Holle...
This article considers sample size determination methods based on Bayesian credible intervals for θ,...
This paper considers the problem of choosing the sample size for testing hypotheses on the parameter...
Monte Carlo simulation is a useful technique to propagate uncertainty through a quantitative model, ...
Bayesian analysis of a non-inferiority trial is advantageous in allowing direct probability statemen...
This paper presents a simple Bayesian approach to sample size determination in clinical trials. It i...
We examine the concept of Bayesian Additional Evidence (BAE) recently proposed by Sondhi et al. We d...
With the increased use of Bayesian informative hypothesis testing, practical, philosophical and meth...
Abstract Background A priori sample size calculation requires an a priori estimate of the size of th...
Most clinical trials use null hypothesis significance testing with frequentist statistical inference...
Design and analysis of clinical trials imply decisions that often involve multiple parties. We focus...
In frequentist tests, the significance testing framework for null hypothesis permits dichotomous con...
Bayesian inference is usually presented as a method for determining how scientific belief should be ...
This article considers sample size determination methods based on Bayesian credible intervals for th...
This article deals with determination of a sample size that guarantees the success of a trial. We fo...
Bayesian methods have the potential for increasing power in mediation analysis (Koopman, Howe, Holle...
This article considers sample size determination methods based on Bayesian credible intervals for θ,...
This paper considers the problem of choosing the sample size for testing hypotheses on the parameter...
Monte Carlo simulation is a useful technique to propagate uncertainty through a quantitative model, ...
Bayesian analysis of a non-inferiority trial is advantageous in allowing direct probability statemen...
This paper presents a simple Bayesian approach to sample size determination in clinical trials. It i...