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Experimental design and sample size determination for testing synergism in drug combination studies based on uniform measures.

机译:实验设计和样本量确定,用于基于统一措施在药物组合研究中测试协同作用。

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摘要

In anticancer drug development, the combined use of two drugs is an important strategy to achieve greater therapeutic success. Often combination studies are performed in animal (mostly mice) models before clinical trials are conducted. These experiments on mice are costly, especially with combination studies. However, experimental designs and sample size derivations for the joint action of drugs are not currently available except for a few cases where strong model assumptions are made. For example, Abdelbasit and Plackett proposed an optimal design assuming that the dose-response relationship follows some specified linear models. Tallarida et al. derived a design by fixing the mixture ratio and used a t-test to detect the simple similar action. The issue is that in reality we usually do not have enough information on the joint action of the two compounds before experiment and to understand their joint action is exactly our study goal. In this paper, we first propose a novel non-parametric model that does not impose such strong assumptions on the joint action. We then propose an experimental design for the joint action using uniform measure in this non-parametric model. This design is optimal in the sense that it reduces the variability in modelling synergy while allocating the doses to minimize the number of experimental units and to extract maximum information on the joint action of the compounds. Based on this design, we propose a robust F-test to detect departures from the simple similar action of two compounds and a method to determine sample sizes that are economically feasible. We illustrate the method with a study of the joint action of two new anticancer agents: temozolomide and irinotecan.
机译:在抗癌药物开发中,两种药物的联合使用是获得更大治疗成功的重要策略。在进行临床试验之前,通常在动物(大多数为小鼠)模型中进行组合研究。这些在小鼠上进行的实验非常昂贵,尤其是进行组合研究时。但是,除少数情况下,除非有强有力的模型假设,否则目前尚无药物联合作用的实验设计和样品量推导。例如,Abdelbasit和Plackett提出了一种最佳设计,假设剂量-响应关系遵循某些特定的线性模型。 Tallarida等。通过固定混合比得出设计,并使用t检验检测简单的相似作用。问题在于,实际上,我们通常在实验之前就没有两种化合物的联合作用的足够信息,而了解它们的联合作用正是我们的研究目标。在本文中,我们首先提出一种新颖的非参数模型,该模型不对联合作用强加如此强的假设。然后,我们在此非参数模型中提出了使用统一度量进行联合动作的实验设计。从减少协同建模的可变性的同时,分配剂量以最小化实验单位数量并提取有关化合物联合作用的最大信息的意义上,这种设计是最佳的。基于此设计,我们提出了一种强大的F检验来检测两种化合物的简单相似作用的偏离,并提供了一种确定经济可行的样本量的方法。我们通过研究两种新型抗癌药:替莫唑胺和伊立替康的联合作用来说明该方法。

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