Basak Gopal K, Biswas Atanu, Volkov Stanislav
Statistics and Mathematics Unit, Indian Statistical Institute, Kolkata, India.
J Biopharm Stat. 2009 Sep;19(5):838-56. doi: 10.1080/10543400903105331.
Adaptive data-dependent allocation designs are used in phase III clinical trials having two or more competing treatments with sequential entrance of patients, in order to allocate a larger number of patients to the better treatment. The odds ratio is a popular concept for biomedical practitioners; hence, odds-ratio-based adaptive designs could be very useful in practice. Rosenberger et al. (2001) introduced an odds-ratio-based two-treatment response-adaptive design; however, they did not study the properties in details. In this article, we describe these designs by means of urn models and provide limiting results for them. Some properties of the design are also studied numerically. We compare the performance of the proposed design with some possible competitors with respect to a few criteria. A real dataset is used to illustrate the applicability of the proposed design. Thus, we provide a base for using odds-ratio-based response-adaptive designs in practice. We extend our design for covariates and also for more than two treatments. In particular, we study the three-treatment design in this article.
适应性数据依赖分配设计用于有两种或更多竞争性治疗且患者依次入组的III期临床试验,以便将更多患者分配到更好的治疗组。优势比是生物医学从业者常用的概念;因此,基于优势比的适应性设计在实践中可能非常有用。罗森伯格等人(2001年)引入了一种基于优势比的双治疗反应适应性设计;然而,他们没有详细研究其性质。在本文中,我们通过瓮模型描述这些设计,并给出它们的极限结果。还对该设计的一些性质进行了数值研究。我们根据一些标准将所提出设计的性能与一些可能的竞争设计进行比较。使用一个真实数据集来说明所提出设计的适用性。因此,我们为在实践中使用基于优势比的反应适应性设计提供了一个基础。我们将设计扩展到协变量以及两种以上治疗的情况。特别是,我们在本文中研究了三治疗设计。