Department of Computer Science, Technion, Haifa, Israel.
PLoS Comput Biol. 2012;8(7):e1002575. doi: 10.1371/journal.pcbi.1002575. Epub 2012 Jul 5.
Identifying the factors that determine microbial growth rate under various environmental and genetic conditions is a major challenge of systems biology. While current genome-scale metabolic modeling approaches enable us to successfully predict a variety of metabolic phenotypes, including maximal biomass yield, the prediction of actual growth rate is a long standing goal. This gap stems from strictly relying on data regarding reaction stoichiometry and directionality, without accounting for enzyme kinetic considerations. Here we present a novel metabolic network-based approach, MetabOlic Modeling with ENzyme kineTics (MOMENT), which predicts metabolic flux rate and growth rate by utilizing prior data on enzyme turnover rates and enzyme molecular weights, without requiring measurements of nutrient uptake rates. The method is based on an identified design principle of metabolism in which enzymes catalyzing high flux reactions across different media tend to be more efficient in terms of having higher turnover numbers. Extending upon previous attempts to utilize kinetic data in genome-scale metabolic modeling, our approach takes into account the requirement for specific enzyme concentrations for catalyzing predicted metabolic flux rates, considering isozymes, protein complexes, and multi-functional enzymes. MOMENT is shown to significantly improve the prediction accuracy of various metabolic phenotypes in E. coli, including intracellular flux rates and changes in gene expression levels under different growth rates. Most importantly, MOMENT is shown to predict growth rates of E. coli under a diverse set of media that are correlated with experimental measurements, markedly improving upon existing state-of-the art stoichiometric modeling approaches. These results support the view that a physiological bound on cellular enzyme concentrations is a key factor that determines microbial growth rate.
确定各种环境和遗传条件下微生物生长率的决定因素是系统生物学的主要挑战。虽然当前基于基因组规模的代谢建模方法使我们能够成功预测各种代谢表型,包括最大生物量产量,但实际生长率的预测是一个长期存在的目标。这种差距源于严格依赖于关于反应化学计量和方向性的数据,而不考虑酶动力学因素。在这里,我们提出了一种新的基于代谢网络的方法,即代谢动力学建模(MOMENT),该方法利用酶周转率和酶分子量的先前数据来预测代谢通量率和生长率,而不需要测量营养物质摄取率。该方法基于代谢的一个已确定的设计原则,即跨不同介质催化高通量反应的酶在具有更高周转率数方面往往更有效。在利用动力学数据扩展先前在基因组规模代谢建模中的尝试的基础上,我们的方法考虑了预测代谢通量率所需的特定酶浓度,同时考虑同工酶、蛋白质复合物和多功能酶。MOMENT 显著提高了大肠杆菌中各种代谢表型的预测准确性,包括不同生长速率下的细胞内通量率和基因表达水平的变化。最重要的是,MOMENT 被证明可以预测大肠杆菌在与实验测量相关的多种培养基中的生长速率,明显优于现有的基于化学计量学的最先进建模方法。这些结果支持这样一种观点,即细胞内酶浓度的生理限制是决定微生物生长率的关键因素。