用隐显Rung-Kutta方法对ERK细胞信号通路的模型简化与分析

Hemn M. Rasool, Mardan A. Pirdawood, Younis A. Sabawi, Roshna Mahmood, Prshng Khalil
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引用次数: 0

摘要

许多复杂的细胞信号通路和化学反应网络包含许多变量和参数;这有时是识别关键模型元素和描述模型动力学的一个大问题。因此,模型约简方法可以作为一种数学工具来减少元素数量。在这项研究中,我们使用了一种新的模型还原技术:对简单的线性化学反应网络和复杂的细胞信号通路即细胞外信号调节激酶(ERK)通路的参数进行集总。此外,我们还提出了一种求解刚性非线性常微分方程的高阶精确方法。该方案的简化思想是基于将问题分为刚性项和非刚性项。更具体地说,刚性离散化使用隐式方法,非线性离散化使用显式方法。因此,这导致了方案计算成本的降低。本研究的主要目的是通过提出一种精确的数值近似龙格-库塔方法来简化复杂的细胞信号通路模型。这提高了人们对这些系统的这种行为的理解,并给出了一个准确的近似解。在此基础上,将简单模型的参数从6个减至3个,将复杂模型的参数从11个减至8个。结果表明,原始模型与简化模型吻合较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Reduction and Analysis for ERK Cell Signalling Pathway Using Implicit-Explicit Rung-Kutta Methods
Many complex cell signalling pathways and chemical reaction networks include many variables and parameters; this is sometimes a big issue for identifying critical model elements and describing the model dynamics. Therefore, model reduction approaches can be employed as a mathematical tool to reduce the number of elements. In this study, we use a new technique for model reduction: the Lumping of parameters for the simple linear chemical reaction network and the complex cell signalling pathway that is extracellular-signal-regulated kinase (ERK) pathways. Moreover, we propose a high-order and accurate method for solving stiff nonlinear ordinary differential equations. The curtail idea of this scheme is based on splitting the problem into stiff and non-stiff terms. More specifically, stiff discretization uses the implicit method, and nonlinear discretization uses the explicit method. This is consequently leading to a reduction in the computational cost of the scheme. The main aim of this study is to reduce the complex cell signalling pathway models by proposing an accurate numerical approximation Runge-Kutta method. This improves one's understanding of such behaviour of these systems and gives an accurate approximate solution. Based on the suggested technique, the simple model's parameters are minimized from 6 to 3, and the complex models from 11 to 8. Results show that there is a good agreement between the original models and the simplified models.
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来源期刊
CiteScore
0.50
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发文量
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审稿时长
12 weeks
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