Department of Biotechnology and Food Science, NTNU - Norwegian University of Science and Technology, Trondheim, Norway.
K.G. Jebsen Center for Genetic Epidemiology Department of Public Health and General Practice, NTNU - Norwegian University of Science and Technology, Trondheim, Norway.
PLoS One. 2022 Jan 27;17(1):e0262450. doi: 10.1371/journal.pone.0262450. eCollection 2022.
Genome-scale metabolic models (GEMs) are mathematical representations of metabolism that allow for in silico simulation of metabolic phenotypes and capabilities. A prerequisite for these predictions is an accurate representation of the biomolecular composition of the cell necessary for replication and growth, implemented in GEMs as the so-called biomass objective function (BOF). The BOF contains the metabolic precursors required for synthesis of the cellular macro- and micromolecular constituents (e.g. protein, RNA, DNA), and its composition is highly dependent on the particular organism, strain, and growth condition. Despite its critical role, the BOF is rarely constructed using specific measurements of the modeled organism, drawing the validity of this approach into question. Thus, there is a need to establish robust and reliable protocols for experimental condition-specific biomass determination. Here, we address this challenge by presenting a general pipeline for biomass quantification, evaluating its performance on Escherichia coli K-12 MG1655 sampled during balanced exponential growth under controlled conditions in a batch-fermentor set-up. We significantly improve both the coverage and molecular resolution compared to previously published workflows, quantifying 91.6% of the biomass. Our measurements display great correspondence with previously reported measurements, and we were also able to detect subtle characteristics specific to the particular E. coli strain. Using the modified E. coli GEM iML1515a, we compare the feasible flux ranges of our experimentally determined BOF with the original BOF, finding that the changes in BOF coefficients considerably affect the attainable fluxes at the genome-scale.
基因组规模代谢模型(GEMs)是代谢的数学表示,允许在计算机中模拟代谢表型和功能。这些预测的前提是准确表示细胞的生物分子组成,这是复制和生长所必需的,在 GEMs 中,该组成通过所谓的生物质目标函数(BOF)来实现。BOF 包含合成细胞宏观和微观分子成分(如蛋白质、RNA、DNA)所需的代谢前体,其组成高度依赖于特定的生物体、菌株和生长条件。尽管其作用至关重要,但 BOF 很少使用所建模生物体的具体测量值来构建,这使得这种方法的有效性受到质疑。因此,需要建立用于实验条件特定生物质测定的稳健可靠的协议。在这里,我们通过提出一种用于生物质定量的通用流水线来解决这一挑战,该流水线在控制条件下在分批发酵器中进行平衡指数生长期间对大肠杆菌 K-12 MG1655 进行了评估。与之前发表的工作流程相比,我们大大提高了覆盖率和分子分辨率,定量了 91.6%的生物质。我们的测量结果与之前报道的测量结果非常吻合,我们还能够检测到特定于特定大肠杆菌菌株的细微特征。使用改良的大肠杆菌 GEM iML1515a,我们比较了我们实验确定的 BOF 与原始 BOF 的可行通量范围,发现 BOF 系数的变化会极大地影响基因组规模上的可达到通量。