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Sample Size Calculation: Inaccurate A Priori Assumptions for Nuisance Parameters Can Greatly Affect the Power of a Randomized Controlled Trial

机译:样本量计算:干扰参数的先验假设不正确会极大影响随机对照试验的功效

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摘要

We aimed to examine the extent to which inaccurate assumptions for nuisance parameters used to calculate sample size can affect the power of a randomized controlled trial (RCT). In a simulation study, we separately considered an RCT with continuous, dichotomous or time-to-event outcomes, with associated nuisance parameters of standard deviation, success rate in the control group and survival rate in the control group at some time point, respectively. For each type of outcome, we calculated a required sample size N for a hypothesized treatment effect, an assumed nuisance parameter and a nominal power of 80%. We then assumed a nuisance parameter associated with a relative error at the design stage. For each type of outcome, we randomly drew 10,000 relative errors of the associated nuisance parameter (from empirical distributions derived from a previously published review). Then, retro-fitting the sample size formula, we derived, for the pre-calculated sample size N, the real power of the RCT, taking into account the relative error for the nuisance parameter. In total, 23%, 0% and 18% of RCTs with continuous, binary and time-to-event outcomes, respectively, were underpowered (i.e., the real power was < 60%, as compared with the 80% nominal power); 41%, 16% and 6%, respectively, were overpowered (i.e., with real power > 90%). Even with proper calculation of sample size, a substantial number of trials are underpowered or overpowered because of imprecise knowledge of nuisance parameters. Such findings raise questions about how sample size for RCTs should be determined.
机译:我们旨在检查用于计算样本量的扰动参数的不正确假设会在多大程度上影响随机对照试验(RCT)的功效。在模拟研究中,我们分别考虑了具有连续,二分或事件发生时间结局的RCT,并分别带有标准偏差,对照组的成功率和对照组在某个时间点的存活率的相关干扰参数。对于每种结局类型,我们计算了假设的治疗效果所需的样本量N,假定的干扰参数和80%的标称功效。然后,我们在设计阶段就假定了一个与相对误差相关的讨厌参数。对于每种类型的结果,我们从相关干扰参数中随机抽取10,000个相对误差(来自先前发布的综述得出的经验分布)。然后,对样本量公式进行重新拟合,考虑到讨厌参数的相对误差,我们为预先计算的样本量N得出了RCT的有功功率。总的来说,分别具有连续,二进制和事件发生时间的RCT的功率不足23%,0%和18%(即实际功率<60%,而标称功率为80%);超功率分别为41%,16%和6%(即有功功率> 90%)。即使对样本量进行了适当的计算,由于对扰动参数的不精确了解,很多试验的能力不足或过大。这些发现提出了有关如何确定随机对照试验的样本量的疑问。

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  • 年(卷),期 -1(10),7
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  • 页码 e0132578
  • 总页数 8
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