Inria & Ecole Polytechnique, Université Paris-Saclay, Paris, France.
J Pharmacokinet Pharmacodyn. 2018 Feb;45(1):91-105. doi: 10.1007/s10928-017-9541-1. Epub 2017 Aug 31.
The aim of this paper is to provide an overview of pharmacometric models that involve some latent process with Markovian dynamics. Such models include hidden Markov models which may be useful for describing the dynamics of a disease state that jumps from one state to another at discrete times. On the contrary, diffusion models are continuous-time and continuous-state Markov models that are relevant for modelling non observed phenomena that fluctuate continuously and randomly over time. We show that an extension of these models to mixed effects models is straightforward in a population context. We then show how the forward-backward algorithm used for inference in hidden Markov models and the extended Kalman filter used for inference in diffusion models can be combined with standard inference algorithms in mixed effects models for estimating the parameters of the model. The use of these models is illustrated with two applications: a hidden Markov model for describing the epileptic activity of a large number of patients and a stochastic differential equation based model for describing the pharmacokinetics of theophyllin.
本文旨在概述涉及马尔可夫动力学的一些潜在过程的药物代谢动力学模型。这些模型包括隐马尔可夫模型,对于描述在离散时间从一个状态跃迁至另一个状态的疾病状态的动态可能很有用。相反,扩散模型是连续时间和连续状态的马尔可夫模型,与建模随时间连续随机波动的不可观测现象相关。我们表明,在群体背景下,将这些模型扩展到混合效应模型是直接的。然后,我们展示如何将用于隐马尔可夫模型推断的前向-后向算法和用于扩散模型推断的扩展卡尔曼滤波器与混合效应模型中的标准推断算法结合起来,以估计模型的参数。使用这两个应用来说明这些模型:一个用于描述大量患者癫痫活动的隐马尔可夫模型和一个基于随机微分方程的用于描述茶碱药代动力学的模型。