Litcius/Paper detail

Bayesian optimal phase <scp>II</scp> designs with dual‐criterion decision making

Yujie Zhao, Daniel Li, Rong Liu, Ying Yuan

2023Pharmaceutical Statistics17 citationsDOI

Abstract

The conventional phase II trial design paradigm is to make the go/no-go decision based on the hypothesis testing framework. Statistical significance itself alone, however, may not be sufficient to establish that the drug is clinically effective enough to warrant confirmatory phase III trials. We propose the Bayesian optimal phase II trial design with dual-criterion decision making (BOP2-DC), which incorporates both statistical significance and clinical relevance into decision making. Based on the posterior probability that the treatment effect reaches the lower reference value (statistical significance) and the clinically meaningful value (clinical significance), BOP2-DC allows for go/consider/no-go decisions, rather than a binary go/no-go decision. BOP2-DC is highly flexible and accommodates various types of endpoints, including binary, continuous, time-to-event, multiple, and coprimary endpoints, in single-arm and randomized trials. The decision rule of BOP2-DC is optimized to maximize the probability of a go decision when the treatment is effective or minimize the expected sample size when the treatment is futile. Simulation studies show that the BOP2-DC design yields desirable operating characteristics. The software to implement BOP2-DC is freely available at www.trialdesign.org.

Topics & Concepts

Bayesian probabilityComputer scienceSample size determinationStatistical hypothesis testingStatistical powerPosterior probabilitySequential analysisRelevance (law)StatisticsData miningArtificial intelligenceMathematicsLawPolitical scienceStatistical Methods in Clinical TrialsOptimal Experimental Design MethodsStatistical Methods and Bayesian Inference