Department of Chemical and Biological Engineering, University of Wisconsin-Madison, 1415 Engineering Dr, Madison, WI 53706, USA.
BMC Bioinformatics. 2013 Jan 30;14:32. doi: 10.1186/1471-2105-14-32.
Constraint-based modeling uses mass balances, flux capacity, and reaction directionality constraints to predict fluxes through metabolism. Although transcriptional regulation and thermodynamic constraints have been integrated into constraint-based modeling, kinetic rate laws have not been extensively used.
In this study, an in vivo kinetic parameter estimation problem was formulated and solved using multi-omic data sets for Escherichia coli. To narrow the confidence intervals for kinetic parameters, a series of kinetic model simplifications were made, resulting in fewer kinetic parameters than the full kinetic model. These new parameter values are able to account for flux and concentration data from 20 different experimental conditions used in our training dataset. Concentration estimates from the simplified kinetic model were within one standard deviation for 92.7% of the 790 experimental measurements in the training set. Gibbs free energy changes of reaction were calculated to identify reactions that were often operating close to or far from equilibrium. In addition, enzymes whose activities were positively or negatively influenced by metabolite concentrations were also identified. The kinetic model was then used to calculate the maximum and minimum possible flux values for individual reactions from independent metabolite and enzyme concentration data that were not used to estimate parameter values. Incorporating these kinetically-derived flux limits into the constraint-based metabolic model improved predictions for uptake and secretion rates and intracellular fluxes in constraint-based models of central metabolism.
This study has produced a method for in vivo kinetic parameter estimation and identified strategies and outcomes of kinetic model simplification. We also have illustrated how kinetic constraints can be used to improve constraint-based model predictions for intracellular fluxes and biomass yield and identify potential metabolic limitations through the integrated analysis of multi-omics datasets.
基于约束的建模使用质量平衡、通量容量和反应方向性约束来预测代谢途径中的通量。尽管转录调控和热力学约束已被整合到基于约束的建模中,但动力学速率法则尚未得到广泛应用。
本研究通过大肠杆菌的多组学数据集,提出并解决了一个体内动力学参数估计问题。为了缩小动力学参数的置信区间,对动力学模型进行了一系列简化,得到的动力学参数比全动力学模型少。这些新的参数值能够解释来自我们训练数据集的 20 种不同实验条件的通量和浓度数据。简化动力学模型的浓度估计值在训练集中 790 个实验测量值的 92.7%范围内,误差在一个标准差以内。通过计算反应的吉布斯自由能变化,确定了经常接近或远离平衡的反应。此外,还确定了酶的活性受到代谢物浓度正或负影响的酶。然后,使用动力学模型从独立的代谢物和酶浓度数据中计算单个反应的最大和最小可能通量值,这些数据未用于估计参数值。将这些动力学衍生的通量限制纳入基于约束的代谢模型中,提高了基于约束的中心代谢模型中摄取和分泌速率以及细胞内通量的预测。
本研究提出了一种体内动力学参数估计方法,并确定了动力学模型简化的策略和结果。我们还通过多组学数据集的综合分析,说明了如何使用动力学约束来提高基于约束的模型对细胞内通量和生物量产量的预测,并通过识别潜在的代谢限制来识别。