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. 2021 Jun 23;40(24):5131–5151. doi: 10.1002/sim.9115

TABLE A4.

Proportion of times (out of 2000) the stopping trigger was met under Bayesian and frequentist monitoring approach. The frequentist looks are happening less frequently that the Bayesian looks to limit αspending. The stopping rules are Bayesian: P(ORco<1)0.95 and P(ORco<0.8)0.50 and P(ORl<1)0.95 and P(ORl<0.8)0.50 Frequentist: O'Brian‐Fleming approach with 5 data looks preserving overall α=0.05, with the respective α values at each look shown under the % information available

Bayesian approach O'Brian‐Fleming approach
Information % of simulation trigger met Information % of simulations P<α
Effect
(δ0,δ1,δ2)=(0,0,0)
20% 0.64 20%, α=0.000005 0
33% 0.2
40% 0.2 40%, α=0.0013 0
50% 0.39
60% 0.54 60%, α=0.0085 0.2
67% 0.39
80% 0.34 80%, α=0.0228 0.25
90% 0.25
100% 0.15 100%, α=0.0417 1.23
Type I error Total 3.1 Total 1.68
Effect
(δ0,δ1,δ2)=(0.1,0.2,0.3)
20% 2.18 20%, α=0.000005 0
33% 3.77
40% 3.33 40%, α=0.0013 0.2
50% 2.73
60% 3.72 60%, α=0.0085 2.28
67% 2.58
80% 3.97 80%, α=0.0228 5.36
90% 2.98
100% 2.83 100%, α=0.0417 8.24
Power Total 28.09 Total 16.08
Effect
(δ0,δ1,δ2)=(0.4,0.5,0.6)
20% 15.81 20%, α=0.000005 0.1
33% 22.13
40% 12.58 40%, α=0.0013 7.88
50% 12.68
60% 9.97 60%, α=0.0085 29.91
67% 4.91
80% 6.78 80%, α=0.0228 28.13
90% 4.28
100% 2.51 100%, α=0.0417 17.85
Power Total 91.65 Total 83.87