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Parameter estimation of kinetic models from metabolic profiles: two-phase dynamic decoupling method.

机译:从代谢曲线动力学模型的参数估计:两阶段动态解耦方法。

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Motivation: Time-series measurements of metabolite concentration have become increasingly more common, providing data for building kinetic models of metabolic networks using ordinary differential equations (ODEs). In practice, however, such time-course data are usually incomplete and noisy, and the estimation of kinetic parameters from these data is challenging. Practical limitations due to data and computational aspects, such as solving stiff ODEs and finding global optimal solution to the estimation problem, give motivations to develop a new estimation procedure that can circumvent some of these constraints. Results: In this work, an incremental and iterative parameter estimation method is proposed that combines and iterates between two estimation phases. One phase involves a decoupling method, in which a subset of model parameters that are associated with measured metabolites, are estimated using the minimization of slope errors. Another phase follows, in which the ODE model is solved one equation at a time and the remaining model parameters are obtained by minimizing concentration errors. The performance of this two-phase method was tested on a generic branched metabolic pathway and the glycolytic pathway of Lactococcus lactis. The results showed that the method is efficient in getting accurate parameter estimates, even when some information is missing.
机译:动机:代谢物浓度的时间序列测量变得越来越普遍,为使用常微分方程(ODE)建立代谢网络的动力学模型提供了数据。然而,实际上,这样的时间过程数据通常是不完整且嘈杂的,并且从这些数据估计动力学参数是具有挑战性的。由于数据和计算方面的实际限制,例如解决严格的ODE并找到估计问题的全局最优解决方案,这为开发新的估计程序提供了动力,该程序可以规避其中的一些约束。结果:在这项工作中,提出了一种增量迭代参数估计方法,该方法在两个估计阶段之间进行组合和迭代。一个阶段涉及一种去耦方法,其中使用最小化的斜率误差来估算与测量的代谢物相关的模型参数的子集。接下来是另一个阶段,其中ODE模型一次被一个方程式求解,其余模型参数通过最小化浓度误差获得。在乳酸乳球菌的通用分支代谢途径和糖酵解途径上测试了这种两阶段方法的性能。结果表明,即使缺少某些信息,该方法也能有效获得准确的参数估计值。

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