Gunawan Rudiyanto, Hutter Sandro
Institute for Chemical and Bioengineering, Department of Chemistry and Applied Biosciences, ETH Zurich, 8093 Zurich, Switzerland.
Swiss Institute of Bioinformatics, 1015 Lausanne, Switzerland.
Bioengineering (Basel). 2017 May 24;4(2):48. doi: 10.3390/bioengineering4020048.
Metabolic flux analysis (MFA) is an indispensable tool in metabolic engineering. The simplest variant of MFA relies on an overdetermined stoichiometric model of the cell's metabolism under the pseudo-steady state assumption to evaluate the intracellular flux distribution. Despite its long history, the issue of model error in overdetermined MFA, particularly misspecifications of the stoichiometric matrix, has not received much attention. We evaluated the performance of statistical tests from linear least square regressions, namely Ramsey's Regression Equation Specification Error Test (RESET), the F-test, and the Lagrange multiplier test, in detecting model misspecifications in the overdetermined MFA, particularly missing reactions. We further proposed an iterative procedure using the F-test to correct such an issue. Using Chinese hamster ovary and random metabolic networks, we demonstrated that: (1) a statistically significant regression does not guarantee high accuracy of the flux estimates; (2) the removal of a reaction with a low flux magnitude can cause disproportionately large biases in the flux estimates; (3) the F-test could efficiently detect missing reactions; and (4) the proposed iterative procedure could robustly resolve the omission of reactions. Our work demonstrated that statistical analysis and tests could be used to systematically assess, detect, and resolve model misspecifications in the overdetermined MFA.
代谢通量分析(MFA)是代谢工程中不可或缺的工具。MFA最简单的变体依赖于在伪稳态假设下细胞代谢的超定化学计量模型,以评估细胞内通量分布。尽管其历史悠久,但超定MFA中的模型误差问题,特别是化学计量矩阵的错误设定,并未受到太多关注。我们评估了线性最小二乘回归中的统计检验,即拉姆齐回归方程设定误差检验(RESET)、F检验和拉格朗日乘数检验,在检测超定MFA中模型错误设定,特别是遗漏反应方面的性能。我们进一步提出了一种使用F检验的迭代程序来纠正此类问题。使用中国仓鼠卵巢细胞和随机代谢网络,我们证明了:(1)具有统计学意义的回归并不能保证通量估计的高精度;(2)去除低通量大小的反应可能会在通量估计中导致不成比例的大偏差;(3)F检验可以有效地检测遗漏反应;(4)所提出的迭代程序可以稳健地解决反应遗漏问题。我们的工作表明,统计分析和检验可用于系统地评估、检测和解决超定MFA中的模型错误设定。