School of Life Sciences, Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei 230026, China.
Biodesign Center, Tianjin Institute of Industrial Biotechnology, Chinese Academy of Sciences, Tianjin 300308, China.
Biomolecules. 2022 Oct 17;12(10):1499. doi: 10.3390/biom12101499.
The genome-scale metabolic model (GEM) is a powerful tool for interpreting and predicting cellular phenotypes under various environmental and genetic perturbations. However, GEM only considers stoichiometric constraints, and the simulated growth and product yield values will show a monotonic linear increase with increasing substrate uptake rate, which deviates from the experimentally measured values. Recently, the integration of enzymatic constraints into stoichiometry-based GEMs was proven to be effective in making novel discoveries and predicting new engineering targets. Here, we present the first genome-scale enzyme-constrained model (ecCGL1) for reconstructed by integrating enzyme kinetic data from various sources using a ECMpy workflow based on the high-quality GEM of (obtained by modifying the iCW773 model). The enzyme-constrained model improved the prediction of phenotypes and simulated overflow metabolism, while also recapitulating the trade-off between biomass yield and enzyme usage efficiency. Finally, we used the ecCGL1 to identify several gene modification targets for l-lysine production, most of which agree with previously reported genes. This study shows that incorporating enzyme kinetic information into the GEM enhances the cellular phenotypes prediction of , which can help identify key enzymes and thus provide reliable guidance for metabolic engineering.
基因组尺度代谢模型(GEM)是一种强大的工具,可用于解释和预测各种环境和遗传扰动下的细胞表型。然而,GEM 仅考虑了计量约束,并且模拟的生长和产物产率值将随着底物摄取率的增加呈现单调线性增加,这与实验测量值不符。最近,将酶约束整合到基于计量的 GEM 中被证明在进行新的发现和预测新的工程目标方面非常有效。在这里,我们提出了第一个基于基因组尺度的酶约束模型(ecCGL1),该模型是通过使用基于 ECMpy 工作流程的各种来源的酶动力学数据进行整合而构建的,该工作流程基于高质量的 GEM (通过修改 iCW773 模型获得)。酶约束模型提高了表型和模拟溢出代谢的预测能力,同时还再现了生物量产量和酶使用效率之间的权衡。最后,我们使用 ecCGL1 来确定 l-赖氨酸生产的几个基因修饰靶标,其中大多数与先前报道的基因一致。这项研究表明,将酶动力学信息纳入 GEM 可以增强对 的细胞表型预测,这有助于确定关键酶,从而为代谢工程提供可靠的指导。