Bayesian sample size determination for phase IIA clinical trials using historical data and semi ‐parametric prior's elicitation

SummaryThe Simon's two ‐stage design is the most commonly applied among multi‐stage designs in phase IIA clinical trials. It combines the sample sizes at the two stages in order to minimize either the expected or the maximum sample size.When the uncertainty about pre ‐trial beliefs on the expected or desired response rate is high, a Bayesian alternative should be considered since it allows to deal with the entire distribution of the parameter of interest in a more natural way.In this setting, a crucial issue is how to construct a distribution from the available summaries to use as a clinical prior in a Bayesian design.In this work, we explore the Bayesian counterparts of the Simon's two ‐stage design based on the predictive version of the single threshold design. This design requires specifying two prior distributions: the analysis prior, which is used to compute the posterior probabilities, and the design prior, which is employed to obtain the prior predictive distribution. Whil e the usual approach is to build beta priors for carrying out a conjugate analysis, we derived both the analysis and the design distributions through linear combinations of B‐splines.The motivating example is the planning of the phase IIA two ‐stage trial on anti‐HER2 DNA vaccine in breast cancer, where initial beliefs formed from elicited experts' opinions and historical data showed a high level of uncertainty. In a sample size determination problem, the impact of different priors is e...
Source: Pharmaceutical Statistics - Category: Statistics Authors: Tags: MAIN PAPER Source Type: research