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用于I期剂量探索试验的自适应模型切换方法。

An adaptive model switching approach for phase I dose-finding trials.

作者信息

Daimon Takashi, Zohar Sarah

机构信息

Department of Biostatistics, Hyogo College of Medicine, 1-1 Mukogawacho, Nishinomiya City, Hyogo 663-8501, Japan.

出版信息

Pharm Stat. 2013 Jul-Aug;12(4):225-32. doi: 10.1002/pst.1578. Epub 2013 Jun 26.

Abstract

Model-based phase I dose-finding designs rely on a single model throughout the study for estimating the maximum tolerated dose (MTD). Thus, one major concern is about the choice of the most suitable model to be used. This is important because the dose allocation process and the MTD estimation depend on whether or not the model is reliable, or whether or not it gives a better fit to toxicity data. The aim of our work was to propose a method that would remove the need for a model choice prior to the trial onset and then allow it sequentially at each patient's inclusion. In this paper, we described model checking approach based on the posterior predictive check and model comparison approach based on the deviance information criterion, in order to identify a more reliable or better model during the course of a trial and to support clinical decision making. Further, we presented two model switching designs for a phase I cancer trial that were based on the aforementioned approaches, and performed a comparison between designs with or without model switching, through a simulation study. The results showed that the proposed designs had the advantage of decreasing certain risks, such as those of poor dose allocation and failure to find the MTD, which could occur if the model is misspecified.

摘要

基于模型的I期剂量探索设计在整个研究过程中依赖单一模型来估计最大耐受剂量(MTD)。因此,一个主要问题是选择最合适的模型。这很重要,因为剂量分配过程和MTD估计取决于模型是否可靠,或者它是否能更好地拟合毒性数据。我们工作的目的是提出一种方法,该方法在试验开始前无需进行模型选择,然后在每个患者入组时依次进行选择。在本文中,我们描述了基于后验预测检验的模型检验方法和基于偏差信息准则的模型比较方法,以便在试验过程中识别更可靠或更好的模型,并支持临床决策。此外,我们提出了两种基于上述方法的I期癌症试验模型切换设计,并通过模拟研究对有或没有模型切换的设计进行了比较。结果表明,所提出的设计具有降低某些风险的优势,例如如果模型指定错误可能发生的剂量分配不佳和未能找到MTD的风险。

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