The increasing interest in subpopulation analysis has led to the development of various new trial designs and analysis methods in the fields of personalized medicine and targeted therapies. In this paper, subpopulations are defined in terms of an accumulation of disjoint population subsets and will therefore be called composite populations. The proposed trial design is applicable to any set of composite populations, considering normally distributed endpoints and random baseline covariates. Treatment effects for composite populations are tested by combining $p$-values, calculated on the subset levels, using the inverse normal combination function to generate test statistics for those composite populations. The family-wise type I error rate for simultaneous testing is controlled in the strong sense by the application of the closed testing procedure. Critical values for intersection hypothesis tests are derived using multivariate normal distributions, reflecting the joint distribution of composite population test statistics under the null hypothesis. For sample size calculation and sample size re-calculation multivariate normal distributions are derived which describe the joint distribution of composite population test statistics under an assumed alternative hypothesis. Simulations demonstrate the strong control of the family-wise type I error rate in fixed designs and re-calculation designs with blinded sample size re-calculation. The target power after sample size re-calculation is typically met or close to being met.
翻译:由于对亚人口分析的兴趣日益浓厚,在个性化医学和定向疗法领域制定了各种新的试验设计和分析方法。在本文件中,亚人口的定义是混合人口子集的累积,因此称为复合人口。拟议的试验设计适用于任何一组复合人口,考虑到通常分布的端点和随机基线共变体。复合人口的治疗效果通过结合按子数水平计算的美元值进行测试,使用反常组合功能为这些合成人口编制测试统计数据。采用封闭测试程序,对家庭一级同时测试的误差率进行强烈控制。交叉假设测试的关键值是使用多变正常分布,反映完全假设下综合人口测试统计数据的联合分布情况。对于抽样规模的计算和抽样规模的重新计算,则根据假定的假设,用反常态的组合组合组合功能来计算综合人口测试统计数据的联合分布情况。模拟表明在固定设计和再校准电压中,对家庭一级误差率的严格控制。在常规设计和再校准标定型后,通常采用盲标定的抽样比例,以近标度方式重新标定。