Department of Chemical and Biomolecular Engineering, University of Tennessee, Knoxville, TN 37920, USA.
Biotechnol J. 2013 May;8(5):605-18. doi: 10.1002/biot.201200233. Epub 2013 Apr 24.
Identifying multiple enzyme targets for metabolic engineering is very critical for redirecting cellular metabolism to achieve desirable phenotypes, e.g., overproduction of a target chemical. The challenge is to determine which enzymes and how much of these enzymes should be manipulated by adding, deleting, under-, and/or over-expressing associated genes. In this study, we report the development of a systematic multiple enzyme targeting method (SMET), to rationally design optimal strains for target chemical overproduction. The SMET method combines both elementary mode analysis and ensemble metabolic modeling to derive SMET metrics including l-values and c-values that can identify rate-limiting reaction steps and suggest which enzymes and how much of these enzymes to manipulate to enhance product yields, titers, and productivities. We illustrated, tested, and validated the SMET method by analyzing two networks, a simple network for concept demonstration and an Escherichia coli metabolic network for aromatic amino acid overproduction. The SMET method could systematically predict simultaneous multiple enzyme targets and their optimized expression levels, consistent with experimental data from the literature, without performing an iterative sequence of single-enzyme perturbation. The SMET method was much more efficient and effective than single-enzyme perturbation in terms of computation time and finding improved solutions.
确定多个代谢工程的酶靶标对于重新定向细胞代谢以实现理想表型非常重要,例如目标化学物质的过量生产。挑战在于确定应该通过添加、删除、下调和/或过表达相关基因来操纵哪些酶以及这些酶的多少。在这项研究中,我们报告了一种系统的多酶靶向方法 (SMET) 的开发,以合理设计用于目标化学物质过量生产的最佳菌株。SMET 方法结合了基本模式分析和总体代谢建模,得出了包括 l 值和 c 值的 SMET 指标,这些指标可以识别限速反应步骤,并提出应操纵哪些酶以及操纵多少酶以提高产物产量、滴度和生产力。我们通过分析两个网络(一个用于概念演示的简单网络和一个用于芳香族氨基酸过量生产的大肠杆菌代谢网络)来验证和验证了 SMET 方法。SMET 方法可以系统地预测同时的多个酶靶标及其优化的表达水平,与文献中的实验数据一致,而无需进行单酶扰动的迭代序列。在计算时间和寻找改进的解决方案方面,SMET 方法比单酶扰动更有效率和有效。