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首页> 外文期刊>Journal of biopharmaceutical statistics >A non-parametric statistical test of null treatment effect in sub-populations
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A non-parametric statistical test of null treatment effect in sub-populations

机译:子群中零治疗效果的非参数统计试验

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摘要

Randomized clinical trials are designed to estimate the average treatment effect (ATE). If heterogeneity of treatment effect exists, then it is possible that there may be subjects who derive a treatment effect different from the ATE. We propose a method to test the hypothesis that there exist subjects who derive benefit (or harm) against the null hypothesis that the treatment has no benefit (or harm) on each of the smallest sub-populations defined by discrete baseline covariates. Our approach is nonparametric, which generates the null distribution of the test statistic by the permutation principle. A key innovation of our method is that stochastic simulation is built into the test statistic to detect signals that may not be linearly related to the multiple covariates. This is important because, in many real clinical problems, the treatment effect is not linearly correlated with relevant baseline characteristics. We applied the method to a real randomized study that compared the Implantable Cardioverter Defibrillator (ICD) with conventional medical therapy in reducing total mortality in a low ejection fraction population. Simulations and power calculations were performed to compare the proposed test with existing methods.
机译:随机临床试验旨在估计平均治疗效果(吃)。如果存在治疗效果的异质性,则可能存在可能存在与吃子不同的治疗效果的受试者。我们提出了一种测试方法,以测试存在益处(或伤害)对零假设的受试者的假设,即治疗对由离散基线协变量定义的每一个最小的子人群没有益处(或伤害)。我们的方法是非参数,它通过置换原理生成测试统计的空分布。我们方法的关键创新是,随机仿真内置于测试统计中,以检测可能与多个协变量线性相关的信号。这很重要,因为在许多真正的临床问题中,治疗效果与相关的基线特征没有线性相关。我们将该方法应用于真正的随机研究,将可植入的心肺除颤器(ICD)与常规的医疗疗法进行比较,以降低低射血分数群体的总死亡率。进行仿真和功率计算以将所提出的测试与现有方法进行比较。

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