A Bayesian decision approach for sample size determination in phase II trials Journal Article


Authors: Leung, D. H. Y.; Wang, Y. G.
Article Title: A Bayesian decision approach for sample size determination in phase II trials
Abstract: Stallard (1998, Biometrics 54, 279-294) recently used Bayesian decision theory for sample-size determination in phase II trials. His design maximizes the expected financial gains in the development of a new treatment. However, it results in a very high probability (0.65) of recommending an ineffective treatment for phase III testing. On the other hand, the expected gain using his design is more than 10 times that of a design that tightly controls the false positive error (Thall and Simon, 1994, Biometrics 50, 337-349). Stallard's design maximizes the expected gain per phase II trial, but it does not maximize the rate of gain or total gain for a fixed length of time because the rate of gain depends on the proportion of treatments forwarding to the phase III study. We suggest maximizing the rate of gain, and the resulting optimal one-stage design becomes twice as efficient as Stallard's one-stage design. Furthermore, the new design has a probability of only 0.12 of passing an ineffective treatment to phase III study.
Keywords: review; bayes theorem; statistical analysis; biometry; sampling; sample size; mathematical analysis; decision theory; bayesian; clinical trials, phase ii; humans; human; gain function; gittins index; sequential design
Journal Title: Biometrics
Volume: 57
Issue: 1
ISSN: 0006-341X
Publisher: Wiley Blackwell  
Date Published: 2001-03-01
Start Page: 309
End Page: 312
Language: English
PUBMED: 11252615
PROVIDER: scopus
DOI/URL:
Notes: Export Date: 21 May 2015 -- Source: Scopus
Citation Impact
MSK Authors
  1. Denis Heng Yan Leung
    114 Leung