生物化学途径的确定性建模和随机仿真。

M Ullah, H Schmidt, K H Cho, O Wolkenhauer
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引用次数: 41

摘要

复杂生化网络的分析是在两种流行的概念框架进行建模。确定性方法要求解以浓度为连续状态变量的常微分方程(ode,反应速率方程)。随机方法涉及以概率为变量的微分-差分方程(化学主方程,CMEs)的模拟。这是为了生成化学物种的分子计数,作为从cme描述的概率分布中提取的随机变量的实现。尽管有许多可用的工具,其中许多是免费的,但建模和仿真环境MATLAB在物理和工程科学中被广泛使用。我们描述了一组MATLAB函数,用于构建和求解用于确定性模拟的ode,并使用高级MATLAB编码实现用于随机模拟的cme实现(Release 14)。该程序成功地应用于两种情况下的文献路径模型。结果与使用动态建模和生化网络仿真替代工具的实现进行了比较。目的是提供一组简明的MATLAB函数,鼓励系统生物学模型的实验。所有脚本文件可从www.sbi.uni-rostock.de/ publications_matlab-paper.html获取。
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Deterministic modelling and stochastic simulation of biochemical pathways using MATLAB.

The analysis of complex biochemical networks is conducted in two popular conceptual frameworks for modelling. The deterministic approach requires the solution of ordinary differential equations (ODEs, reaction rate equations) with concentrations as continuous state variables. The stochastic approach involves the simulation of differential-difference equations (chemical master equations, CMEs) with probabilities as variables. This is to generate counts of molecules for chemical species as realisations of random variables drawn from the probability distribution described by the CMEs. Although there are numerous tools available, many of them free, the modelling and simulation environment MATLAB is widely used in the physical and engineering sciences. We describe a collection of MATLAB functions to construct and solve ODEs for deterministic simulation and to implement realisations of CMEs for stochastic simulation using advanced MATLAB coding (Release 14). The program was successfully applied to pathway models from the literature for both cases. The results were compared to implementations using alternative tools for dynamic modelling and simulation of biochemical networks. The aim is to provide a concise set of MATLAB functions that encourage the experimentation with systems biology models. All the script files are available from www.sbi.uni-rostock.de/ publications_matlab-paper.html.

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