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A Method to Calibrate Metabolic Network Models with Experimental Datasets

机译:一种用实验数据集校准代谢网络模型的方法

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A method to calibrate stoichiometric coefficients values related to uncharacterized or lumped reactions of metabolic network models is presented. The method finds coefficients values that produce a model version that best fits multivariable experimental data. The method was tested with a metabolic network of 44 metabolites and 49 stoichiometric reactions, with four reactions having undetermined stoichiometric coefficients values. A total of 1320 model versions with different combinations of stoichiometric coefficient values were generated. Experimental data was used to produce a calibration curve and different fitness scores were used to evaluate the accuracy of flux balance analysis (FBA) simulations of these model versions to reproduce the experimental data. The model version with highest fitness to the experimental data was found using Mean Relative Error (MRE) scores and auto-scaled transformation of estimated datasets.
机译:提出了一种校准与代谢网络模型的非特征或总体反应相关的化学计量系数值的方法。该方法发现产生最适合多变量实验数据的模型版本的系数值。用44代谢物和49个化学计量反应的代谢网络测试该方法,具有具有未确定化学计量系数值的四种反应。共产生具有不同组合系数值的1320个模型版本。使用实验数据用于产生校准曲线,使用不同的配体分数来评估这些模型版本的磁通平衡分析(FBA)模拟以再现实验数据的精度。使用平均相对误差(MRE)分数和估计数据集的自动缩放变换,找到了具有最高健康状况的模型版本。

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