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Iterative Linear Least Squares Method of Parameter Estimation for Linear-Fractional Models of Molecular Biological Systems

机译:分子生物系统线性分数模型的参数估计迭代线性最小二乘法

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Based on statistical thermodynamics principle or Michaelis-Menten kinetics equation, the models for biological systems contain linear fractional functions as reaction rates which are nonlinear in both parameters and states. Generally it is challenging to estimate parameters nonlinear in a model although there have been many traditional nonlinear parameter estimation methods such as Gauss-Newton iteration method and its variants. However, in a linear fractional model both the denominator and numerator are linear in the parameters. Based on this observation, we develop an iterative linear least squares method for estimating parameters in biological system modeled by linear fractional function. The basic idea is to transfer optimizing a nonlinear least squares objective function into iteratively solving a sequence of linear least squares problems. The developed method is applied to a linear fractional function and an auto-regulatory gene network. The simulation results show the superior performance of the proposed method over some existing algorithms.
机译:基于统计热力学原理或Michaelis-Menten动力学方程,生物系统模型包含线性分数函数作为反应速率,在参数和状态方面均为非线性。尽管存在许多传统的非线性参数估计方法,例如高斯-牛顿迭代方法及其变体,但通常很难估计模型中的参数非线性。但是,在线性分数模型中,分母和分子在参数上都是线性的。基于此观察,我们开发了一种迭代线性最小二乘法,用于估计由线性分数函数建模的生物系统中的参数。基本思想是将优化非线性最小二乘目标函数转换为迭代求解一系列线性最小二乘问题。所开发的方法应用于线性分数函数和自动调节基因网络。仿真结果表明,该方法具有优于现有算法的性能。

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