BMC Medical Research Methodology (May 2020)

Optimal, minimax and admissible two-stage design for phase II oncology clinical trials

  • Fei Qin,
  • Jingwei Wu,
  • Feng Chen,
  • Yongyue Wei,
  • Yang Zhao,
  • Zhiwei Jiang,
  • Jianling Bai,
  • Hao Yu

DOI
https://doi.org/10.1186/s12874-020-01017-8
Journal volume & issue
Vol. 20, no. 1
pp. 1 – 10

Abstract

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Abstract Background The article aims to compare the efficiency of minimax, optimal and admissible criteria in Simon’s and Fleming’s two-stage design. Methods Three parameter settings (p 1-p 0 = 0.25–0.05, 0.30–0.10, 0.50–0.30) are designed to compare the maximum sample size, the critical values and the expected sample size for minimax, optimal and admissible designs. Type I & II error constraints (α, β) vary across (0.10, 0.10), (0.05, 0.20) and (0.05, 0.10), respectively. Results In both Simon’s and Fleming’s two-stage designs, the maximum sample size of admissible design is smaller than optimal design but larger than minimax design. Meanwhile, the expected samples size of admissible design is smaller than minimax design but larger than optimal design. Mostly, the maximum sample size and expected sample size in Fleming’s designs are considerably smaller than that of Simon’s designs. Conclusions Whenever (p 0, p 1) is pre-specified, it is better to explore in the range of probability q, based on relative importance between maximum sample size and expected sample size, and determine which design to choose. When q is unknown, optimal design may be more favorable for drugs with limited efficacy. Contrarily, minimax design is recommended if treatment demonstrates impressive efficacy.

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