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All Times EDT

Friday, September 25
Fri, Sep 25, 2:00 PM - 3:15 PM
Virtual
Best Practice in the Design and Implementation of Interim Analysis

On Efficient Sample Size Adjustment for Two-Stage Adaptive Designs (301235)

*Qing Liu, Quantitative and Regulatory Medical Science 

Keywords: Adaptation rule, cumulative conditional power, group sequential designs, median unbiased estimates, minimum variance unbiased estimates, sample size adjustment, sequential confidence intervals, sequential p-values, two-stage adaptive designs.

Group sequential designs are rarely used for clinical trials with substantial over running due to fast enrollment or long duration of treatment and follow-up. Traditionally, such trials rely on fixed sample size designs. Recently, various two-stage adaptive designs have been introduced to allow sample size adjustment to increase statistical power or avoid unnecessarily large trials. However, these adaptive designs can be seriously inefficient. To address this infamous problem, we propose a likelihood-based two-stage adaptive design where sample size adjustment is derived from a pseudo group sequential design using cumulative conditional power. We show through numerical examples that this design cannot be improved by group sequential designs. In addition, the approach may uniformly improve any existing two-stage adaptive designs with sample size adjustment. For statistical inference, we provide methods for sequential p-values and confidence intervals, as well as median unbiased and minimum variance unbiased estimates. We demonstrate the proposed design is much more efficient than the promising zone scheme.