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首页> 外文期刊>Statistics in medicine >Controlling the type I error rate in two-stage sequential adaptive designs when testing for average bioequivalence
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Controlling the type I error rate in two-stage sequential adaptive designs when testing for average bioequivalence

机译:在测试平均生物等效的时候控制两级顺序自适应设计中的I型错误率

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In a 2x2 crossover trial for establishing average bioequivalence (ABE) of a generic agent and a currently marketed drug, the recommended approach to hypothesis testing is the two one-sided test (TOST) procedure, which depends, among other things, on the estimated within-subject variability. The power of this procedure, and therefore the sample size required to achieve a minimum power, depends on having a good estimate of this variability. When there is uncertainty, it is advisable to plan the design in two stages, with an interim sample size reestimation after the first stage, using an interim estimate of the within-subject variability. One method and 3 variations of doing this were proposed by Potvin et al. Using simulation, the operating characteristics, including the empirical type I error rate, of the 4 variations (called Methods A, B, C, and D) were assessed by Potvin et al and Methods B and C were recommended. However, none of these 4 variations formally controls the type I error rate of falsely claiming ABE, even though the amount of inflation produced by Method C was considered acceptable. A major disadvantage of assessing type I error rate inflation using simulation is that unless all possible scenarios for the intended design and analysis are investigated, it is impossible to be sure that the type I error rate is controlled. Here, we propose an alternative, principled method of sample size reestimation that is guaranteed to control the type I error rate at any given significance level. This method uses a new version of the inverse-normal combination of p-values test, in conjunction with standard group sequential techniques, that is more robust to large deviations in initial assumptions regarding the variability of the pharmacokinetic endpoints. The sample size reestimation step is based on significance levels and power requirements that are conditional on the first-stage results. This necessitates a discussion and exploitation of the peculiar properties of the power curve of the TOST testing procedure. We illustrate our approach with an example based on a real ABE study and compare the operating characteristics of our proposed method with those of Method B of Povin et al.
机译:在用于建立普通代理人和目前销售药物的平均生物等效性(ABE)的2x2交叉试验中,假设检测的推荐方法是两个单面测试(TOST)程序,其中包括在估计上在主题内变异性。因此,该过程的功率,因此实现了最小功率所需的样本尺寸取决于具有这种可变性的良好估计。当存在不确定性时,建议在两个阶段中规划设计,在第一阶段之后的临时样本大小重新定位,使用内部估计对象内变异性。 Potvin等人提出了一种方法和3种方法的方法。使用模拟,通过Potvin等人评估了4个变型(称为方法A,B,C和D)的经验I型错误率的操作特性,并建议使用B和C.然而,即使通过方法C产生的通货膨胀量被认为是可接受的,这一点中没有任何形式地控制IALCESECLY声称ABE的IS错误率。评估I型错误率通胀使用模拟的主要缺点是,除非研究了预期设计和分析的所有可能场景,否则不可能确保控制I型错误率。在这里,我们提出了一种替代,原则性的样本大小评估方法,该方法是保证在任何给定的重要性水平下控制I错误率。该方法使用新版本的P值测试的逆正常组合,与标准组顺序技术相结合,这对关于药代动力学终点的可变性的初始假设中的初始偏差是更强大的。样本大小评估步骤基于在第一阶段结果上有条件的显着性水平和功率要求。这需要讨论和利用TOST测试程序的功率曲线的特殊特性。我们用基于真实ABE研究的示例来说明我们的方法,并将我们提出方法与Povin等人的方法B的操作特性进行比较。

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