Estimating parameters of nonlinear dynamic systems in pharmacology using chaos synchronization and grid search

被引:0
作者
Nikhil Pillai
Sorell L. Schwartz
Thang Ho
Aris Dokoumetzidis
Robert Bies
Immanuel Freedman
机构
[1] University at Buffalo,Computational and Data
[2] Georgetown University Medical Center,Enabled Science
[3] Vertex Pharmaceuticals,Department of Pharmacology and Physiology
[4] University of Athens,Department of Pharmaceutical Technology
[5] University at Buffalo,Pharmaceutical Science
[6] Freedman Patent,undefined
来源
Journal of Pharmacokinetics and Pharmacodynamics | 2019年 / 46卷
关键词
Chaos synchronization; Parameter estimation; Chaotic system; Delay differential equation; Least squares;
D O I
暂无
中图分类号
学科分类号
摘要
Bridging fundamental approaches to model optimization for pharmacometricians, systems pharmacologists and statisticians is a critical issue. These fields rely primarily on Maximum Likelihood and Extended Least Squares metrics with iterative estimation of parameters. Our research combines adaptive chaos synchronization and grid search to estimate physiological and pharmacological systems with emergent properties by exploring deterministic methods that are more appropriate and have potentially superior performance than classical numerical approaches, which minimize the sum of squares or maximize the likelihood. We illustrate these issues with an established model of cortisol in human with nonlinear dynamics. The model describes cortisol kinetics over time, including its chaotic oscillations, by a delay differential equation. We demonstrate that chaos synchronization helps to avoid the tendency of the gradient-based optimization algorithms to end up in a local minimum. The subsequent analysis illustrates that the hybrid adaptive chaos synchronization for estimation of linear parameters with coarse-to-fine grid search for optimal values of non-linear parameters can be applied iteratively to accurately estimate parameters and effectively track trajectories for a wide class of noisy chaotic systems.
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页码:193 / 210
页数:17
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