Li Lang, Brown Morton B, Lee Kyung-Hoon, Gupta Suneel
Division of Biostatistics, Indiana University, Indianapolis 46202, USA.
Biometrics. 2002 Sep;58(3):601-11. doi: 10.1111/j.0006-341x.2002.00601.x.
This article is motivated by an application where subjects were dosed three times with the same drug and the drug concentration profiles appeared to be the lowest after the third dose. One possible explanation is that the pharmacokinetic (PK) parameters vary over time. Therefore, we consider population PK models with time-varying PK parameters. These time-varying PK parameters are modeled by natural cubic spline functions in the ordinary differential equations. Mean parameters, variance components, and smoothing parameters are jointly estimated by maximizing the double penalized log likelihood. Mean functions and their derivatives are obtained by the numerical solution of ordinary differential equations. The interpretation of PK parameters in the model and its flexibility are discussed. The proposed methods are illustrated by application to the data that motivated this article. The model's performance is evaluated through simulation.
本文的动机源于一个应用场景,即受试者接受了三次相同药物的给药,且第三次给药后的药物浓度曲线似乎是最低的。一种可能的解释是药代动力学(PK)参数随时间变化。因此,我们考虑具有时变PK参数的群体PK模型。这些时变PK参数在常微分方程中由自然三次样条函数建模。通过最大化双重惩罚对数似然来联合估计均值参数、方差分量和平滑参数。均值函数及其导数通过常微分方程的数值解获得。讨论了模型中PK参数的解释及其灵活性。通过将所提出的方法应用于激发本文的数据集来说明。通过模拟评估模型的性能。