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KERNEL-BASED ADAPTIVE RANDOMIZATION TOWARD BALANCE IN CONTINUOUS AND DISCRETE COVARIATES

机译:基于内核的适应随机化对连续和离散协变的平衡

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Covariate balance among different treatment arms is critical in clinical trials, as confounding effects can be effectively eliminated when patients in different arms are alike. To balance the prognostic factors across different arms, we propose a new dynamic scheme for patient allocation. Our approach does not require discretizing continuous covariates to multiple categories, and can handle both continuous and discrete covariates naturally. This is achieved through devising a statistical measure to characterize the similarity between a new patient and all the existing patients in the trial. Under the similarity weighting scheme, we develop a covariate-adaptive biased coin design and establish its theoretical properties, thus improving the original Pocock-Simon design. We conduct extensive simulation studies to examine the design operating characteristics and we illustrate our method with a data example. The new approach is thereby demonstrated to be superior to existing methods in terms of performance.
机译:不同治疗臂之间的协变量平衡对临床试验至关重要,因为当不同臂的患者相似时,可以有效地消除混淆效果。为了平衡不同武器的预后因素,我们提出了一种新的患者分配动态方案。我们的方法不需要将连续协变量分开到多个类别,并且可以自然地处理连续和离散的协变量。这是通过设计统计措施来表征新患者与审判中所有现有患者之间的相似性的统计措施来实现的。在相似性加权方案下,我们开发了协变量 - 自适应偏置的硬币设计并建立了理论性质,从而改善了原始的Pocock-Simon设计。我们进行广泛的仿真研究,以检查设计操作特性,并通过数据示例说明我们的方法。因此,新的方法证明了在性能方面优于现有方法。

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