The reproducibility crisis has led to an increasing number of replication studies being conducted. Sample sizes for replication studies are often calculated using conditional power based on the effect estimate from the original study. However, this approach is not well suited as it ignores the uncertainty of the original result. Bayesian methods are used in clinical trials to incorporate prior information into power calculations. We propose to adapt this methodology to the replication framework and promote the use of predictive instead of conditional power in the design of replication studies. Moreover, we describe how extensions of the methodology to sequential clinical trials can be tailored to replication studies. Conditional and predictive power calculated at an interim analysis are compared and we argue that predictive power is a useful tool to decide whether to stop a replication study prematurely. A recent project on the replicability of social sciences is used to illustrate the properties of the different methods.
翻译:复制危机导致越来越多的复制研究正在进行,复制研究的抽样规模往往根据原始研究的估计结果,以有条件的能力计算,但这种方法并不十分合适,因为它忽视了原始结果的不确定性。在临床试验中使用了贝叶斯方法,将先前的信息纳入电力计算中。我们提议根据复制框架调整这一方法,促进在设计复制研究时使用预测能力而不是有条件能力。此外,我们描述了如何根据复制研究量身定制将方法推广到连续临床试验的方法。对临时分析中计算的条件性和预测力进行比较,我们认为预测力是决定是否提前停止复制研究的有用工具。最近的一个社会科学可复制性项目被用来说明不同方法的特性。