| Literature DB >> 35184731 |
Elja Arjas1,2, Dario Gasbarra3.
Abstract
BACKGROUND: Adaptive designs offer added flexibility in the execution of clinical trials, including the possibilities of allocating more patients to the treatments that turned out more successful, and early stopping due to either declared success or futility. Commonly applied adaptive designs, such as group sequential methods, are based on the frequentist paradigm and on ideas from statistical significance testing. Interim checks during the trial will have the effect of inflating the Type 1 error rate, or, if this rate is controlled and kept fixed, lowering the power.Entities:
Keywords: Adaptive design; Binary data; Decision rule; Frequentist performance; Likelihood principle; Phase II; Phase III; Posterior inference; Superiority trial; Time-to-event data; Vaccine efficacy trial
Mesh:
Year: 2022 PMID: 35184731 PMCID: PMC8858379 DOI: 10.1186/s12874-022-01526-8
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Fig. 1Effect of the choice of the design parameters ε and δ in BARTA on the number of patients allocated to the experimental treatment and on the total number of treatment successes. Cumulative distribution functions of N1(200) (top) and S(200) (bottom) are shown, based on 5000 simulated data sets, under with true parameter values θ0=θ1=0.3 and with values θ0=0.3,θ1=0.5. Three combinations of the design parameters were used: (a) ε=0.1,δ=0.1, (b) ε=0.05,δ=0.1, (c) ε=0.2,δ=0.05. In addition, (d) represents a completely symmetric treatment allocation. For comparison we also plot the corresponding CDF under the alternative hypothesis obtained by using fractional Thompson’s rule with respective parameters κ=0.25,0.5,0.75 and 1
Fig. 2Posterior density of based on Moderna, Inc. COVID-19 primary efficacy data, with posterior mode at 0.0595 and 95% HPD interval (0.030,0.105)