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The perils with the misuse of predictive power

机译:滥用预测能力会带来危险

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In early drug development, especially when studying new mechanisms of action or in new disease areas, little is known about the targeted or anticipated treatment effect or variability estimates. Adaptive designs that allow for early stopping but also use interim data to adapt the sample size have been proposed as a practical way of dealing with these uncertainties. Predictive power and conditional power are two commonly mentioned techniques that allow predictions of what will happen at the end of the trial based on the interim data. Decisions about stopping or continuing the trial can then be based on these predictions. However, unless the user of these statistics has a deep understanding of their characteristics important pitfalls may be encountered, especially with the use of predictive power. The aim of this paper is to highlight these potential pitfalls. It is critical that statisticians understand the fundamental differences between predictive power and conditional power as they can have dramatic effects on decision making at the interim stage, especially if used to re-evaluate the sample size. The use of predictive power can lead to much larger sample sizes than either conditional power or standard sample size calculations. One crucial difference is that predictive power takes account of all uncertainty, parts of which are ignored by standard sample size calculations and conditional power. By comparing the characteristics of each of these statistics we highlight important characteristics of predictive power that experimenters need to be aware of when using this approach.
机译:在早期药物开发中,尤其是在研究新的作用机理或在新的疾病领域时,对靶向或预期的治疗效果或变异性估计知之甚少。作为处理这些不确定性的实用方法,已经提出了允许尽早停止但也使用临时数据来适应样本量的自适应设计。预测能力和条件能力是两种常用的技术,它们可以根据临时数据预测试验结束时将发生的情况。然后,可以基于这些预测来决定是否停止或继续试用。但是,除非使用这些统计信息的用户对它们的特性有深刻的了解,否则可能会遇到严重的陷阱,尤其是在使用预测能力的情况下。本文的目的是强调这些潜在的陷阱。统计人员必须了解预测能力和条件能力之间的根本差异,这一点至关重要,因为它们会对过渡阶段的决策产生重大影响,特别是如果用于重新评估样本量时。与条件功效或标准样本大小计算相比,使用预测能力可能会导致样本量大得多。一个关键的区别是预测能力考虑了所有不确定性,标准样本大小计算和条件能力忽略了部分不确定性。通过比较每个统计数据的特征,我们突出了实验者在使用这种方法时需要意识到的预测能力的重要特征。

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