Wadsworth Ian, Hampson Lisa V, Bornkamp Björn, Jaki Thomas
Department of Mathematics & Statistics, Fylde College, Lancaster University, Lancaster, UK.
Phastar, Macclesfield, UK.
Stat Methods Med Res. 2020 Sep;29(9):2583-2602. doi: 10.1177/0962280220903751. Epub 2020 Feb 13.
Within paediatric populations, there may be distinct age groups characterised by different exposure-response relationships. Several regulatory guidance documents have suggested general age groupings. However, it is not clear whether these categorisations will be suitable for all new medicines and in all disease areas. We consider two model-based approaches to quantify how exposure-response model parameters vary over a continuum of ages: Bayesian penalised B-splines and model-based recursive partitioning. We propose an approach for deriving an optimal dosing rule given an estimate of how exposure-response model parameters vary with age. Methods are initially developed for a linear exposure-response model. We perform a simulation study to systematically evaluate how well the various approaches estimate linear exposure-response model parameters and the accuracy of recommended dosing rules. Simulation scenarios are motivated by an application to epilepsy drug development. Results suggest that both bootstrapped model-based recursive partitioning and Bayesian penalised B-splines can estimate underlying changes in linear exposure-response model parameters as well as (and in many scenarios, better than) a comparator linear model adjusting for a categorical age covariate with levels following International Conference on Harmonisation E11 groupings. Furthermore, the Bayesian penalised B-splines approach consistently estimates the intercept and slope more accurately than the bootstrapped model-based recursive partitioning. Finally, approaches are extended to estimate Emax exposure-response models and are illustrated with an example motivated by an in vitro study of cyclosporine.
在儿科人群中,可能存在以不同暴露-反应关系为特征的不同年龄组。一些监管指导文件提出了一般的年龄分组。然而,尚不清楚这些分类是否适用于所有新药和所有疾病领域。我们考虑两种基于模型的方法来量化暴露-反应模型参数在连续年龄范围内的变化:贝叶斯惩罚B样条和基于模型的递归划分。我们提出了一种方法,在估计暴露-反应模型参数如何随年龄变化的情况下推导最优给药规则。方法最初是针对线性暴露-反应模型开发的。我们进行了一项模拟研究,以系统地评估各种方法对线性暴露-反应模型参数的估计效果以及推荐给药规则的准确性。模拟场景是受癫痫药物开发应用的启发。结果表明,自举法基于模型的递归划分和贝叶斯惩罚B样条都可以估计线性暴露-反应模型参数的潜在变化,并且在许多情况下,比一个根据国际协调会议E11分组水平调整分类年龄协变量的比较线性模型更好。此外,贝叶斯惩罚B样条方法始终比自举法基于模型的递归划分更准确地估计截距和斜率。最后,方法被扩展以估计Emax暴露-反应模型,并通过环孢素体外研究的一个例子进行说明。