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A simplified method for power-law modelling of metabolic pathways from time-course data and steady-state flux profiles

机译:一种基于时程数据和稳态通量曲线的代谢途径幂律建模的简化方法

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Background In order to improve understanding of metabolic systems there have been attempts to construct S-system models from time courses. Conventionally, non-linear curve-fitting algorithms have been used for modelling, because of the non-linear properties of parameter estimation from time series. However, the huge iterative calculations required have hindered the development of large-scale metabolic pathway models. To solve this problem we propose a novel method involving power-law modelling of metabolic pathways from the Jacobian of the targeted system and the steady-state flux profiles by linearization of S-systems. Results The results of two case studies modelling a straight and a branched pathway, respectively, showed that our method reduced the number of unknown parameters needing to be estimated. The time-courses simulated by conventional kinetic models and those described by our method behaved similarly under a wide range of perturbations of metabolite concentrations. Conclusion The proposed method reduces calculation complexity and facilitates the construction of large-scale S-system models of metabolic pathways, realizing a practical application of reverse engineering of dynamic simulation models from the Jacobian of the targeted system and steady-state flux profiles.
机译:背景技术为了增进对代谢系统的理解,已经尝试从时程构建S系统模型。常规上,由于时间序列参数估计的非线性特性,非线性曲线拟合算法已用于建模。但是,所需的巨大迭代计算阻碍了大规模代谢途径模型的发展。为了解决这个问题,我们提出了一种新颖的方法,该方法涉及从目标系统的雅可比行进的代谢途径的幂律建模以及通过S系统的线性化进行的稳态通量分布。结果两个案例研究的结果分别模拟一条直线路径和一条分支路径,表明我们的方法减少了需要估计的未知参数的数量。在广泛的代谢物浓度扰动下,常规动力学模型模拟的时程和本方法描述的时程表现相似。结论所提出的方法降低了计算复杂度,并简化了代谢途径的大规模S系统模型的构建,实现了从目标系统的Jacobian和稳态通量剖面对动态仿真模型进行逆向工程的实际应用。

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