Bayesian;
Go/No-Go;
probability of success;
proof-of-concept;
time-to-event;
GO/NO-GO DECISIONS;
SAMPLE-SIZE;
BAYESIAN-APPROACH;
CLINICAL-TRIAL;
PROBABILITY;
SUCCESS;
D O I:
10.1080/10543406.2018.1489400
中图分类号:
R9 [药学];
学科分类号:
1007 ;
摘要:
One of the most critical decision points in clinical development is Go/No-Go decision-making after a proof-of-concept study. Traditional decision-making relies on a formal hypothesis testing with control of type I and type II error rates, which is limited by assessing the strength of efficacy evidence in a small isolated trial. In this article, we propose a quantitative Bayesian/frequentist decision framework for Go/No-Go criteria and sample size evaluation in Phase II randomized studies with a time-to-event endpoint. By taking the uncertainty of treatment effect into consideration, we propose an integrated quantitative approach for a program when both the Phase II and Phase III trials share a common endpoint while allowing a discount of the observed Phase II data. Our results confirm the argument that an increase in the sample size of a Phase II trial will result in greater increase in the probability of success of a Phase III trial than increasing the Phase III trial sample size by equal amount. We illustrate the steps in quantitative decision-making with a real example of a randomized Phase II study in metastatic pancreatic cancer.