School of Pharmacy, University of Otago, Dunedin, New Zealand.
Translational Medicine Center, Ono Pharmaceutical Co., Ltd., Osaka, Japan.
J Pharmacokinet Pharmacodyn. 2018 Feb;45(1):35-47. doi: 10.1007/s10928-017-9527-z. Epub 2017 May 26.
Pharmacokinetic-pharmacodynamic systems are often expressed with nonlinear ordinary differential equations (ODEs). While there are numerous methods to solve such ODEs these methods generally rely on time-stepping solutions (e.g. Runge-Kutta) which need to be matched to the characteristics of the problem at hand. The primary aim of this study was to explore the performance of an inductive approximation which iteratively converts nonlinear ODEs to linear time-varying systems which can then be solved algebraically or numerically. The inductive approximation is applied to three examples, a simple nonlinear pharmacokinetic model with Michaelis-Menten elimination (E1), an integrated glucose-insulin model and an HIV viral load model with recursive feedback systems (E2 and E3, respectively). The secondary aim of this study was to explore the potential advantages of analytically solving linearized ODEs with two examples, again E3 with stiff differential equations and a turnover model of luteinizing hormone with a surge function (E4). The inductive linearization coupled with a matrix exponential solution provided accurate predictions for all examples with comparable solution time to the matched time-stepping solutions for nonlinear ODEs. The time-stepping solutions however did not perform well for E4, particularly when the surge was approximated by a square wave. In circumstances when either a linear ODE is particularly desirable or the uncertainty in matching the integrator to the ODE system is of potential risk, then the inductive approximation method coupled with an analytical integration method would be an appropriate alternative.
药代动力学-药效动力学系统通常用非线性常微分方程(ODE)表示。虽然有许多方法可以求解这些 ODE,但这些方法通常依赖于时间步长解(例如龙格库塔),需要与手头问题的特征相匹配。本研究的主要目的是探索一种归纳逼近的性能,该逼近方法迭代地将非线性 ODE 转换为线性时变系统,然后可以通过代数或数值方法求解。归纳逼近应用于三个示例,一个具有米氏消除(E1)的简单非线性药代动力学模型、一个整合的葡萄糖-胰岛素模型和一个具有递归反馈系统的 HIV 病毒载量模型(E2 和 E3)。本研究的次要目的是通过两个示例探索解析求解线性化 ODE 的潜在优势,再次是具有刚性微分方程的 E3 和黄体生成激素的周转模型与突增功能(E4)。归纳线性化与矩阵指数解相结合,为所有示例提供了准确的预测,与非线性 ODE 的匹配时间步长解相比,求解时间相当。然而,时间步长解在 E4 中表现不佳,特别是当突增用方波近似时。在特别需要线性 ODE 的情况下,或者匹配积分器到 ODE 系统的不确定性存在潜在风险的情况下,那么归纳逼近方法与解析积分方法相结合将是一种合适的替代方法。