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通过为细胞内反应实施碳可用性约束来提高通量平衡分析的准确性。

Improving the accuracy of flux balance analysis through the implementation of carbon availability constraints for intracellular reactions.

机构信息

Department of Biochemical Engineering, University College London, London, UK.

Research and Technology, Lonza Biologics PLC, Slough, UK.

出版信息

Biotechnol Bioeng. 2019 Sep;116(9):2339-2352. doi: 10.1002/bit.27025. Epub 2019 Jun 19.

DOI:10.1002/bit.27025
PMID:31112296
Abstract

Constraint-based modeling methods, such as Flux Balance Analysis (FBA), have been extensively used to decipher complex, information rich -omics datasets to elicit system-wide behavioral patterns of cellular metabolism. FBA has been successfully used to gain insight in a wide range of applications, such as range of substrate utilization, product yields and to design metabolic engineering strategies to improve bioprocess performance. A well-known challenge associated with large genome-scale metabolic networks is that they result in underdetermined problem formulations. Consequently, rather than unique solutions, FBA and related methods examine ranges of reaction flux values that are consistent with the studied physiological conditions. The wider the reported flux ranges, the higher the uncertainty in the determination of basic reaction properties, limiting interpretability of and confidence in the results. Herein, we propose a new, computationally efficient approach that refines flux range predictions by constraining reaction fluxes on the basis of the elemental balance of carbon. We compared carbon constraint FBA (ccFBA) against experimentally-measured intracellular fluxes using the latest CHO GEM (iCHO1766) and were able to substantially improve the accuracy of predicted flux values compared with FBA. ccFBA can be used as a stand-alone method but is also compatible with and complimentary to other constraint-based approaches.

摘要

基于约束的建模方法,如通量平衡分析 (FBA),已被广泛用于破译复杂、信息丰富的组学数据集,以揭示细胞代谢的系统行为模式。FBA 已成功用于广泛的应用中,例如基质利用范围、产物产量,并设计代谢工程策略以提高生物工艺性能。与大规模基因组代谢网络相关的一个众所周知的挑战是,它们导致了未确定问题的表述。因此,FBA 和相关方法不是检查与研究的生理条件一致的唯一反应通量值解决方案,而是检查一系列反应通量值。报告的通量范围越宽,基本反应特性的确定不确定性就越高,从而限制了对结果的解释和置信度。在此,我们提出了一种新的、计算效率高的方法,该方法通过基于碳的元素平衡来约束反应通量,从而细化通量范围预测。我们将碳约束 FBA (ccFBA) 与最新的 CHO GEM (iCHO1766) 中的实验测量的细胞内通量进行了比较,并且能够与 FBA 相比,显著提高预测通量值的准确性。ccFBA 可以作为独立的方法使用,但也与其他基于约束的方法兼容并互补。

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