Parameter estimation in models combining signal transduction and metabolic pathways: the dependent input approach.

N A W van Riel, E D Sontag
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引用次数: 55

Abstract

Biological complexity and limited quantitative measurements pose severe challenges to standard engineering methodologies for modelling and simulation of genes and gene products integrated in a functional network. In particular, parameter quantification is a bottleneck, and therefore parameter estimation, identifiability, and optimal experiment design are important research topics in systems biology. An approach is presented in which unmodelled dynamics are replaced by fictitious 'dependent inputs'. The dependent input approach is particularly useful in validation experiments, because it allows one to fit model parameters to experimental data generated by a reference cell type ('wild-type') and then test this model on data generated by a variation ('mutant'), so long as the mutations only affect the unmodelled dynamics that produce the dependent inputs. Another novel feature of the approach is in the inclusion of a priori information in a multi-objective identification criterion, making it possible to obtain estimates of parameter values and their variances from a relatively limited experimental data set. The pathways that control the nitrogen uptake fluxes in baker's yeast (Saccharomyces cerevisiae) have been studied. Well-defined perturbation experiments were performed on cells growing in steady-state. Time-series data of extracellular and intracellular metabolites were obtained, as well as mRNA levels. A nonlinear model was proposed and was shown to be structurally identifiable given data of its inputs and outputs. The identified model is a reliable representation of the metabolic system, as it could correctly describe the responses of mutant cells and different perturbations.

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结合信号转导和代谢途径的模型参数估计:依赖输入法。
生物复杂性和有限的定量测量对在功能网络中集成的基因和基因产物的建模和模拟的标准工程方法提出了严峻的挑战。特别是参数量化是一个瓶颈,因此参数估计、可辨识性和最优实验设计是系统生物学中重要的研究课题。提出了一种方法,其中未建模的动力学被虚构的“依赖输入”所取代。依赖输入方法在验证实验中特别有用,因为它允许人们将模型参数拟合到由参考细胞类型(“野生型”)生成的实验数据中,然后在由变异(“突变”)生成的数据上测试该模型,只要突变只影响产生依赖输入的未建模动态。该方法的另一个新特点是在多目标识别标准中包含先验信息,从而可以从相对有限的实验数据集中获得参数值及其方差的估计。研究了面包酵母(Saccharomyces cerevisiae)氮吸收通量的控制途径。对稳态生长的细胞进行了定义明确的扰动实验。获得细胞外和细胞内代谢物的时间序列数据,以及mRNA水平。提出了一种非线性模型,在给定输入和输出数据的情况下,该模型具有结构可识别性。所确定的模型是代谢系统的可靠代表,因为它可以正确地描述突变细胞和不同扰动的反应。
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