PPOS can be used to design futility interim for a big confirmatory trials or pilot trials.
Pilot trial design using PPOS Traditional pilot trial design is typically done by controlling
type I error rate and power for detecting a specific parameter value. The goal of a pilot trials such as a phase II trial is usually not to support registration. Therefore, it doesn't make sense to control type I error rate especially a big type I error as typically done in a phase II trial. A pilot trial usually provides evidence to support a Go/No Go decision for a confirmatory trial. Therefore, it makes more sense to design a trial based on PPOS. To support a No/Go decision, traditional methods require the PPOS to be small. However the PPOS can be small just due to chance. To solve this issue, we can require the PPOS credible interval to be tight such that the PPOS calculation is supported by sufficient information and hence PPOS is not small just due to chance. Finding an optimal design is equivalent to find the solution to the following 2 equations. • PPOS=PPOS1 • upper bound of PPOS credible interval=PPOS2 where PPOS1 and PPOS2 are some user-defined cutoff values. The first equation ensures that the PPOS is small such that not too many trials will be prevented entering next stage to guard against
false negative. The first equation also ensures that the PPOS is not too small such that not too many trials will enter the next stage to guard against
false positive. The second equation ensures that the PPOS
credible interval is tight such that the PPOS calculation is supported by sufficient information. The second equation also ensures that the PPOS
credible interval is not too tight such that it won't demand too much resource.
Futility interim design using PPOS PPOS can also be used in
Interim analysis to determine whether a clinical trial should be continued. PPOS can be used for this purpose because its value can be used to indicate if there is enough convincing evidence to either reject or fail to reject the
null hypothesis with the presently available data. Traditional futility interim is designed based on beta spending. However beta spending doesn't have intuitive interpretation. Therefore, it is difficult to communicate with non-statistician colleagues. Since PPOS has intuitive interpretation, it makes more sense to design futility interim using PPOS. To declare futility, we mandate the PPOS to be small and PPOS calculation is supported by sufficient information. Finding the optimal design is equivalent to solving the following 2 equations. • PPOS=PPOS1 • upper bound of PPOS credible interval=PPOS2 == Calculating PPOS using simulations ==