Choi Yoon-Mi, Choi Dong-Hyuk, Lee Yi Qing, Koduru Lokanand, Lewis Nathan E, Lakshmanan Meiyappan, Lee Dong-Yup
School of Chemical Engineering, Sungkyunkwan University, Suwon-si, Gyeonggi-do, Republic of Korea.
Bioprocessing Technology Institute (BTI), Agency for Science, Technology and Research (A⁎STAR), Singapore.
Comput Struct Biotechnol J. 2023 Jul 23;21:3736-3745. doi: 10.1016/j.csbj.2023.07.025. eCollection 2023.
The biomass equation is a critical component in genome-scale metabolic models (GEMs): it is used as the objective function in flux balance analysis (FBA). This equation accounts for the quantities of all known biomass precursors that are required for cell growth based on the macromolecular and monomer compositions measured at certain conditions. However, it is often reported that the macromolecular composition of cells could change across different environmental conditions and thus the use of the same single biomass equation in FBA, under multiple conditions, is questionable. Herein, we first investigated the qualitative and quantitative variations of macromolecular compositions of three representative host organisms, , and , across different environmental/genetic variations. While macromolecular building blocks such as RNA, protein, and lipid composition vary notably, changes in fundamental biomass monomer units such as nucleotides and amino acids are not appreciable. We also observed that flux predictions through FBA is quite sensitive to macromolecular compositions but not the monomer compositions. Based on these observations, we propose ensemble representations of biomass equation in FBA to account for the natural variation of cellular constituents. Such ensemble representations of biomass better predicted the flux through anabolic reactions as it allows for the flexibility in the biosynthetic demands of the cells. The current study clearly highlights that certain component of the biomass equation indeed vary across different conditions, and the ensemble representation of biomass equation in FBA by accounting for such natural variations could avoid inaccuracies that may arise from simulations.
生物质方程是基因组规模代谢模型(GEMs)的关键组成部分:它在通量平衡分析(FBA)中用作目标函数。该方程根据在特定条件下测量的大分子和单体组成,计算细胞生长所需的所有已知生物质前体的数量。然而,经常有报道称,细胞的大分子组成可能会因不同的环境条件而发生变化,因此在多种条件下在FBA中使用相同的单一生物质方程是值得怀疑的。在此,我们首先研究了三种代表性宿主生物(大肠杆菌、酿酒酵母和嗜热栖热菌)在不同环境/遗传变异下大分子组成的定性和定量变化。虽然RNA、蛋白质和脂质组成等大分子构建块有显著差异,但核苷酸和氨基酸等基本生物质单体单元的变化并不明显。我们还观察到,通过FBA的通量预测对大分子组成相当敏感,但对单体组成不敏感。基于这些观察结果,我们提出在FBA中对生物质方程进行整体表示,以考虑细胞成分的自然变异。这种生物质的整体表示能更好地预测合成代谢反应的通量,因为它允许细胞在生物合成需求方面具有灵活性。当前的研究清楚地表明,生物质方程的某些组成部分确实会因不同条件而有所不同,并且通过考虑这种自然变异在FBA中对生物质方程进行整体表示可以避免模拟中可能出现的不准确情况。