6533b7d4fe1ef96bd12633e4

RESEARCH PRODUCT

Performance of adaptive sample size adjustment with respect to stopping criteria and time of interim analysis

Antje Jahn-eimermacherGerhard Hommel

subject

Statistics and ProbabilityResearch designClinical Trials as TopicEpidemiologyComputer scienceInterim analysisClinical trialNormal-inverse Gaussian distributionSequential methodResearch DesignSample size determinationSample SizeInterimStatisticsEconometricsHumansOptimal stopping

description

The benefit of adjusting the sample size in clinical trials on the basis of treatment effects observed in interim analysis has been the subject of several recent papers. Different conclusions were drawn about the usefulness of this approach for gaining power or saving sample size, because of differences in trial design and setting. We examined the benefit of sample size adjustment in relation to trial design parameters such as 'time of interim analysis' and 'choice of stopping criteria'. We compared the adaptive weighted inverse normal method with classical group sequential methods for the most common and for optimal stopping criteria in early, half-time and late interim analyses. We found that reacting to interim data might significantly reduce average sample size in some situations, while classical approaches can out-perform the adaptive designs under other circumstances. We characterized these situations with respect to time of interim analysis and choice of stopping criteria.

https://doi.org/10.1002/sim.2652