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Incremental parameter estimation of kinetic metabolic network models

机译:动力学代谢网络模型的增量参数估计

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摘要

Abstract Background An efficient and reliable parameter estimation method is essential for the creation of biological models using ordinary differential equation (ODE). Most of the existing estimation methods involve finding the global minimum of data fitting residuals over the entire parameter space simultaneously. Unfortunately, the associated computational requirement often becomes prohibitively high due to the large number of parameters and the lack of complete parameter identifiability (i.e. not all parameters can be uniquely identified). Results In this work, an incremental approach was applied to the parameter estimation of ODE models from concentration time profiles. Particularly, the method was developed to address a commonly encountered circumstance in the modeling of metabolic networks, where the number of metabolic fluxes (reaction rates) exceeds that of metabolites (chemical species). Here, the minimization of model residuals was performed over a subset of the parameter space that is associated with the degrees of freedom in the dynamic flux estimation from the concentration time-slopes. The efficacy of this method was demonstrated using two generalized mass action (GMA) models, where the method significantly outperformed single-step estimations. In addition, an extension of the estimation method to handle missing data is also presented. Conclusions The proposed incremental estimation method is able to tackle the issue on the lack of complete parameter identifiability and to significantly reduce the computational efforts in estimating model parameters, which will facilitate kinetic modeling of genome-scale cellular metabolism in the future.
机译:摘要背景一种有效且可靠的参数估计方法对于使用常微分方程(ODE)创建生物学模型至关重要。大多数现有的估计方法涉及同时找到整个参数空间上数据拟合残差的全局最小值。不幸的是,由于大量的参数和缺乏完整的参数可识别性(即,并非所有参数都可以被唯一地识别),相关的计算要求经常变得过高。结果在这项工作中,采用增量方法从浓缩时间剖面中估算ODE模型的参数。特别是,开发了该方法来解决在代谢网络建模中经常遇到的情况,其中代谢通量(反应速率)超过了代谢物(化学物种)的数量。在这里,模型残差的最小化是在参数空间的一个子集上进行的,该子集与根据浓度时间斜率进行的动态通量估计中的自由度有关。使用两个广义质量作用(GMA)模型证明了该方法的有效性,其中该方法明显优于单步估计。另外,还提出了估计方法的扩展以处理丢失的数据。结论所提出的增量估计方法能够解决缺乏完整的参数可识别性的问题,并显着减少估计模型参数的计算量,这将有助于将来对基因组规模的细胞代谢进行动力学建模。

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