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Sample size determination for comparing several survival curves with unequal allocations.

机译:确定样本大小,以比较分配不均的几条生存曲线。

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Ahnn and Anderson derived sample size formulae for unstratified and stratified designs assuming equal allocation of subjects to three or more treatment groups. We generalize the sample size formulae to allow for unequal allocation. In addition, we define the overall probability of death to be equal to one minus the censored proportion for the stratified design. This definition also leads to a slightly different definition of the non-centrality parameter than that of Ahnn and Anderson for the stratified case. Assuming proportional hazards, sample sizes are determined for a prespecified power, significance level, hazard ratios, allocation of subjects to several treatment groups, and known censored proportion. In the proportional hazards setting, three cases are considered: (1) exponential failures--exponential censoring, (2) exponential failures--uniform censoring, and (3) Weibull failures (assuming same shape parameter for all groups)--uniform censoring. In all three cases of the unstratified case, it is assumed that the censoring distribution is the same for all of the treatment groups. For the stratified log-rank test, it is assumed the same censoring distribution across the treatment groups and the strata. Further, formulae have been developed to provide approximate powers for the test, based upon the first two or first four-moments of the asymptotic distribution. We observe the following two major findings based on the simulations. First, the simulated power of the log-rank test does not depend on the censoring mechanism. Second, for a significance level of 0.05 and power of 0.80, the required sample size n is independent of the censoring pattern. Moreover, there is very close agreement between the exact (asymptotic) and simulated powers when a sequence of alternatives is close to the null hypothesis. Two-moment and four-moment power series approximations also yield powers in close agreement with the exact (asymptotic) power. With unequal allocations, our simulations show that the empirical powers are consistently above the target value of prespecified power of 0.80 when 50 per cent of the patients are allocated to the treatment group with the smallest hazard.
机译:Ahnn和Anderson推导了未分层和分层设计的样本量公式,并假设将受试者平均分配给三个或更多治疗组。我们归纳了样本量公式,以允许分配不均。此外,我们将整体设计的死亡概率定义为等于一减去分层设计的审查比例。对于分层情况,此定义还导致非中心性参数的定义与Ahnn和Anderson的定义稍有不同。假定比例危害,确定样本量用于预先确定的功效,显着性水平,危害比,受试者分配到几个治疗组以及已知的审查比例。在比例风险设置中,考虑了以下三种情况:(1)指数失败-指数审查,(2)指数失败-一致审查,以及(3)Weibull失败(假设所有组的形状参数相同)-一致审查。在未分层情况的所有三种情况下,假定所有治疗组的检查分布均相同。对于分层对数秩检验,假设在各治疗组和各层中的删失分布相同。此外,基于渐近分布的前两个或前四个矩,已经开发了公式来为测试提供近似功效。基于仿真,我们观察到以下两个主要发现。首先,对数秩检验的模拟能力不取决于检查机制。其次,对于0.05的显着性水平和0.80的功效,所需的样本大小n独立于检查模式。此外,当一系列备选方案接近零假设时,精确(渐近)和模拟功效之间存在非常密切的共识。两矩和四矩幂级数逼近也产生与精确(渐近)幂紧密相关的幂。在分配不均的情况下,我们的模拟显示,当将50%的患者分配给危害最小的治疗组时,经验功效始终高于预定功效0.80的目标值。

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