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基于根轨迹的生物系统稳定性分析。

Root locus-based stability analysis for biological systems.

机构信息

Department of Electrical Engineering, Da-Yeh University, 168 University Rd., Dacun, Changhua 51591, Taiwan, R.O.C.

出版信息

J Bioinform Comput Biol. 2021 Oct;19(5):2150023. doi: 10.1142/S0219720021500232. Epub 2021 Sep 9.

DOI:10.1142/S0219720021500232
PMID:34514968
Abstract

The first objective for realizing and handling biological systems is to choose a suitable model prototype and then perform structure and parameter identification. Afterwards, a theoretical analysis is needed to understand the characteristics, abilities, and limitations of the underlying systems. Generalized Michaelis-Menten kinetics (MM) and S-systems are two well-known biochemical system theory-based models. Research on steady-state estimation of generalized MM systems is difficult because of their complex structure. Further, theoretical analysis of S-systems is still difficult because of the power-law structure, and even the estimation of steady states can be easily achieved via algebraic equations. We focus on how to flexibly use control technologies to perform deeper biological system analysis. For generalized MM systems, the root locus method (proposed by Walter R. Evans) is used to predict the direction and rate (flux) limitations of the reaction and to estimate the steady states and stability margins (relative stability). Mode analysis is additionally introduced to discuss the transient behavior and the setting time. For S-systems, the concept of root locus, mode analysis, and the converse theorem are used to predict the dynamic behavior, to estimate the setting time and to analyze the relative stability of systems. Theoretical results were examined via simulation in a Simulink/MATLAB environment. Four kinds of small functional modules (a system with reversible MM kinetics, a system with a singular or nearly singular system matrix and systems with cascade or branch pathways) are used to describe the proposed strategies clearly. For the reversible MM kinetics system, we successfully predict the direction and the rate (flux) limitations of reactions and obtain the values of steady state and net flux. We observe that theoretically derived results are consistent with simulation results. Good prediction is observed ([Formula: see text]% accuracy). For the system with a (nearly) singular matrix, we demonstrate that the system is neither globally exponentially stable nor globally asymptotically stable but globally semistable. The system possesses an infinite gain margin (GM denoting how much the gain can increase before the system becomes unstable) regardless of how large or how small the values of independent variables are, but the setting time decreases and then increases or always decreases as the values of independent variables increase. For S-systems, we first demonstrate that the stability of S-systems can be determined by linearized systems via root loci, mode analysis, and block diagram-based simulation. The relevant S-systems possess infinite GM for the values of independent variables varying from zero to infinity, and the setting time increases as the values of independent variables increase. Furthermore, the branch pathway maintains oscillation until a steady state is reached, but the oscillation phenomenon does not exist in the cascade pathway because in this system, all of the root loci are located on real lines. The theoretical predictions of dynamic behavior for these two systems are consistent with the simulation results. This study provides a guideline describing how to choose suitable independent variables such that systems possess satisfactory performance for stability margins, setting time and dynamic behavior. The proposed root locus-based analysis can be applied to any kind of differential equation-based biological system. This research initiates a method to examine system dynamic behavior and to discuss operating principles.

摘要

实现和处理生物系统的首要目标是选择合适的模型原型,然后进行结构和参数识别。之后,需要进行理论分析,以了解基础系统的特性、能力和局限性。广义米氏-门坦动力学(MM)和 S-系统是两种基于生化系统理论的知名模型。由于其复杂的结构,对广义 MM 系统的稳态估计研究具有挑战性。此外,由于幂律结构,S-系统的理论分析仍然具有挑战性,甚至可以通过代数方程轻松估计稳态。我们专注于如何灵活运用控制技术对更深层次的生物系统进行分析。对于广义 MM 系统,我们使用根轨迹法(由 Walter R. Evans 提出)来预测反应的方向和速率(通量)限制,并估计稳态和稳定性裕度(相对稳定性)。此外,还引入模态分析来讨论瞬态行为和设定时间。对于 S-系统,我们使用根轨迹、模态分析和逆定理的概念来预测动态行为、估计设定时间,并分析系统的相对稳定性。理论结果在 Simulink/MATLAB 环境中通过仿真进行了检验。我们使用四种小型功能模块(具有可逆 MM 动力学的系统、具有奇异或近乎奇异系统矩阵的系统以及具有级联或分支途径的系统)来清楚地描述所提出的策略。对于具有可逆 MM 动力学的系统,我们成功地预测了反应的方向和速率(通量)限制,并获得了稳态和净通量的值。我们观察到理论推导的结果与仿真结果一致。预测效果良好([Formula: see text]%准确率)。对于具有奇异矩阵的系统,我们证明该系统既不是全局指数稳定的,也不是全局渐近稳定的,而是全局半稳定的。无论独立变量的大小如何,系统都具有无限的增益裕度(GM 表示在系统变得不稳定之前增益可以增加多少),但设定时间会先减小然后增大,或者随着独立变量的增大而一直减小。对于 S-系统,我们首先证明通过根轨迹、模态分析和基于方块图的仿真,可以通过线性化系统来确定 S-系统的稳定性。对于独立变量从 0 到无穷大变化的相关 S-系统,GM 是无限的,设定时间随着独立变量的增大而增大。此外,分支途径保持振荡,直到达到稳态,但在级联途径中不存在振荡现象,因为在该系统中,所有的根轨迹都位于实线上。这两个系统的动态行为的理论预测与仿真结果一致。本研究提供了一个指南,描述了如何选择合适的独立变量,使系统在稳定性裕度、设定时间和动态行为方面具有令人满意的性能。基于根轨迹的分析可应用于任何基于微分方程的生物系统。本研究开创了一种检查系统动态行为和讨论操作原理的方法。

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