Tsamandouras Nikolaos, Wendling Thierry, Rostami-Hodjegan Amin, Galetin Aleksandra, Aarons Leon
Centre for Applied Pharmacokinetic Research, Manchester Pharmacy School, University of Manchester, Stopford Building, Oxford Road, Manchester, M13 9PT, UK,
J Pharmacokinet Pharmacodyn. 2015 Aug;42(4):349-73. doi: 10.1007/s10928-015-9418-0. Epub 2015 May 26.
The utilisation of physiologically-based pharmacokinetic models for the analysis of population data is an approach with progressively increasing impact. However, as we move from empirical to complex mechanistic model structures, incorporation of stochastic variability in model parameters can be challenging due to the physiological constraints that may arise. Here, we investigated the most common types of constraints faced in mechanistic pharmacokinetic modelling and explored techniques for handling them during a population data analysis. An efficient way to impose stochastic variability on the parameters of interest without neglecting the underlying physiological constraints is through the assumption that they follow a distribution with support and properties matching the underlying physiology. It was found that two distributions that arise through transformations of the normal, the logit-normal generalisation and the logistic-normal, are excellent for such an application as not only they can satisfy the physiological constraints but also offer high flexibility during characterisation of the parameters' distribution. The statistical properties and practical advantages/disadvantages of these distributions for such an application were clearly displayed in the context of different modelling examples. Finally, a simulation study clearly illustrated the practical gains of the utilisation of the described techniques, as omission of population variability in physiological systems parameters leads to a biased/misplaced stochastic model with mechanistically incorrect variance structure. The current methodological work aims to facilitate the use of mechanistic/physiologically-based models for the analysis of population pharmacokinetic clinical data.
利用基于生理学的药代动力学模型分析群体数据是一种影响力日益增大的方法。然而,随着我们从经验模型结构转向复杂的机制模型结构,由于可能出现的生理限制,在模型参数中纳入随机变异性可能具有挑战性。在此,我们研究了机制药代动力学建模中面临的最常见类型的限制,并探索了在群体数据分析过程中处理这些限制的技术。在不忽视潜在生理限制的情况下,对感兴趣的参数施加随机变异性的一种有效方法是假设它们遵循一种分布,其支持和属性与潜在生理学相匹配。结果发现,通过正态分布变换产生的两种分布,即对数正态广义分布和逻辑正态分布,非常适合这种应用,因为它们不仅可以满足生理限制,而且在表征参数分布时具有很高的灵活性。在不同的建模示例背景下,清楚地展示了这些分布在这种应用中的统计特性和实际优缺点。最后,一项模拟研究清楚地说明了使用所述技术的实际益处,因为忽略生理系统参数中的群体变异性会导致一个具有机械错误方差结构的有偏/错位随机模型。当前的方法学工作旨在促进使用基于机制/生理学的模型来分析群体药代动力学临床数据。