| Literature DB >> 35023184 |
Kevin Kunzmann1, Michael J Grayling2, Kim May Lee3, David S Robertson1, Kaspar Rufibach4, James M S Wason1,2.
Abstract
Adapting the final sample size of a trial to the evidence accruing during the trial is a natural way to address planning uncertainty. Since the sample size is usually determined by an argument based on the power of the trial, an interim analysis raises the question of how the final sample size should be determined conditional on the accrued information. To this end, we first review and compare common approaches to estimating conditional power, which is often used in heuristic sample size recalculation rules. We then discuss the connection of heuristic sample size recalculation and optimal two-stage designs, demonstrating that the latter is the superior approach in a fully preplanned setting. Hence, unplanned design adaptations should only be conducted as reaction to trial-external new evidence, operational needs to violate the originally chosen design, or post hoc changes in the optimality criterion but not as a reaction to trial-internal data. We are able to show that commonly discussed sample size recalculation rules lead to paradoxical adaptations where an initially planned optimal design is not invariant under the adaptation rule even if the planning assumptions do not change. Finally, we propose two alternative ways of reacting to newly emerging trial-external evidence in ways that are consistent with the originally planned design to avoid such inconsistencies.Entities:
Keywords: adaptive design; conditional power; interim analysis; optimal design; predictive power; sample size recalculation
Mesh:
Year: 2022 PMID: 35023184 PMCID: PMC9303654 DOI: 10.1002/sim.9288
Source DB: PubMed Journal: Stat Med ISSN: 0277-6715 Impact factor: 2.497
FIGURE 1Assumed prior density function. The gray area indicates the null hypothesis, , of no effect
FIGURE 2Properties of , and as estimators of the unknown conditional power at and overall sample size . (A) Estimates as function of the interim data. (B) Histograms of the sampling distributions. (C) Bias, mean absolute error (MAE), and mean squared error (MSE)
FIGURE 3Original single‐stage design; naïvely adapted design with sample size and critical value functions defined by the conditional optimization problem (15) to (19) and , and ; the optimal design is the solution of (20) to (22)
FIGURE 4Left: Sample size (both arms) and predictive power for response‐independent adjustment of the alternative; predictive power is evaluated at the respective changed point alternative. Right: Unconditional (expected) power and expected sample size for the three scenarios when adapting to the respective true (for , the two consistent rules overlap with the original design)
FIGURE 5Left: Predictive power and sample size (both arms) for response‐adaptive modification of the alternative; predictive power is evaluated at the respective changed point alternative. Right: Unconditional (expected) power and expected sample size for three scenarios