Department of Mathematics and Statistics, Lancaster University, Lancaster LA1 4YF, UK.
MRC Biostatistics Unit, University of Cambridge, Cambridge CB2 0SR, UK.
Int J Environ Res Public Health. 2021 Jan 5;18(1):345. doi: 10.3390/ijerph18010345.
There is growing interest in Phase I dose-finding studies studying several doses of more than one agent simultaneously. A number of combination dose-finding designs were recently proposed to guide escalation/de-escalation decisions during the trials. The majority of these proposals are model-based: a parametric combination-toxicity relationship is fitted as data accumulates. Various parameter shapes were considered but the unifying theme for many of these is that typically between 4 and 6 parameters are to be estimated. While more parameters allow for more flexible modelling of the combination-toxicity relationship, this is a challenging estimation problem given the typically small sample size in Phase I trials of between 20 and 60 patients. These concerns gave raise to an ongoing debate whether including more parameters into combination-toxicity model leads to more accurate combination selection. In this work, we extensively study two variants of a 4-parameter logistic model with reduced number of parameters to investigate the effect of modelling assumptions. A framework to calibrate the prior distributions for a given parametric model is proposed to allow for fair comparisons. Via a comprehensive simulation study, we have found that the inclusion of the interaction parameter between two compounds does not provide any benefit in terms of the accuracy of selection, on average, but is found to result in fewer patients allocated to the target combination during the trial.
目前,人们对同时研究多种药物多个剂量的 I 期剂量发现研究越来越感兴趣。最近提出了许多联合剂量发现设计,以指导试验期间的递增/递减决策。这些建议大多基于模型:随着数据的积累,拟合参数组合毒性关系。考虑了各种参数形状,但这些参数形状的统一主题是通常需要估计 4 到 6 个参数。虽然更多的参数可以更灵活地对组合毒性关系进行建模,但考虑到 I 期试验中通常只有 20 到 60 名患者,这是一个具有挑战性的估计问题。这些问题引发了一个持续的争论,即是否将更多参数纳入组合毒性模型会导致更准确的组合选择。在这项工作中,我们广泛研究了具有较少参数的 4 参数逻辑模型的两种变体,以研究建模假设的影响。提出了一个校准给定参数模型先验分布的框架,以允许进行公平比较。通过全面的模拟研究,我们发现,在选择的准确性方面,纳入两种化合物之间的相互作用参数平均没有任何好处,但发现试验期间分配给目标组合的患者人数减少。