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Parameter Estimation for Nonlinear Biological System Model Based on Global Sensitivity Analysis

机译:基于全局灵敏度分析的非线性生物系统模型参数估计

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Mathematical models of cell signal transduction networks are normally highly nonlinear and complex, which consist of a large number of reaction species and kinetics parameters. An important problem of systems biology is to develop mathematical models of nonlinear biological systems, and to effectively estimate the unknown parameters. In this work, a novel algorithm to estimate parameters based on global sensitivity analysis is proposed, and extended Kalman filter is applied to estimate the unknown sensitive parameters of signaling transduction networks model. Taking an IκBα-NF-κB signaling pathway model as an example, simulation analysis demonstrates that the algorithm can well estimate the unknown parameters under the disturbs of the noise, and it provides an efficient method for solving the parametersˇ uncertainty effects of biological pathways.
机译:细胞信号转导网络的数学模型通常是高度非线性和复杂的,它由大量的反应物种和动力学参数组成。系统生物学的一个重要问题是开发非线性生物学系统的数学模型,并有效地估计未知参数。在这项工作中,提出了一种基于全局灵敏度分析的参数估计新算法,并将扩展的卡尔曼滤波器应用于信号转导网络模型的未知敏感参数估计。仿真分析以IκBα-NF-κB信号通路模型为例,表明该算法能够很好地估计噪声干扰下的未知参数,为解决生物通路参数不确定性问题提供了一种有效的方法。

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