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Unbiased estimation of selected treatment means in two-stage trials.

机译:在两阶段试验中对所选治疗手段的无偏估计。

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摘要

Straightforward estimation of a treatment's effect in an adaptive clinical trial can be severely hindered when it has been chosen from a larger group of potential candidates. This is because selection mechanisms that condition on the rank order of treatment statistics introduce bias. Nevertheless, designs of this sort are seen as a practical and efficient way to fast track the most promising compounds in drug development. In this paper we extend the method of Cohen and Sackrowitz (1989) who proposed a two-stage unbiased estimate for the best performing treatment at interim. This enables their estimate to work for unequal stage one and two sample sizes, and also when the quantity of interest is the best, second best, or j -th best treatment out of k. The implications of this new flexibility are explored via simulation.
机译:如果从较大的潜在候选人中选择一种治疗方案,那么在适应性临床试验中直接估计治疗效果可能会受到严重阻碍。这是因为以治疗统计的等级顺序为条件的选择机制会引入偏差。然而,这种设计被视为快速追踪药物开发中最有前途的化合物的实用而有效的方法。在本文中,我们扩展了Cohen和Sackrowitz(1989)的方法,他们提出了一个两阶段的无偏估计,以期获得最佳的治疗效果。这使他们的估计适用于不相等的第一阶段和第二阶段样本量,以及当感兴趣的数量是k中的最佳,第二最佳或第j最佳处理时。通过仿真探索了这种新灵活性的含义。

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