Department of Chemical Engineering, Indian Institute of Technology Bombay, Mumbai, 400076, India.
Photosynth Res. 2013 Nov;118(1-2):155-65. doi: 10.1007/s11120-013-9935-x. Epub 2013 Nov 5.
Cyanobacteria have potential to produce drop-in bio-fuels such as ethanol via photoautotrophic metabolism. Although model cyanobacterial strains have been engineered to produce such products, systematic metabolic engineering studies to identify optimal strains for the same have not been performed. In this work, we identify optimal ethanol producing mutants corresponding to appropriate gene deletions that result in a suitable redirection in the carbon flux. In particular, we systematically simulate exhaustive single and double gene deletions considering a genome scale metabolic model of a mutant strain of the unicellular cyanobacterium Synechocystis species strain PCC 6803. Various optimization based metabolic modeling techniques, such as flux balance analysis (FBA), method of minimization of metabolic adjustment (MOMA) and regulatory on/off minimization (ROOM) were used for this analysis. For single gene deletion MOMA simulations, the Pareto front with biomass and ethanol fluxes as the two objectives to be maximized was obtained and analyzed. Points on the Pareto front represent maximal utilization of resources constrained by substrate uptake thereby representing an optimal trade-off between the two fluxes. Pareto analysis was also performed for double gene deletion MOMA and single and double gene deletion ROOM simulations. Based on these analyses, two mutants, with combined gene deletions in ethanol and purine metabolism pathways, were identified as promising candidates for ethanol production. The relevant genes were adk, pta and ackA. An ethanol productivity of approximately 0.15 mmol/(gDW h) was predicted for these mutants which appears to be reasonable based on experimentally reported values in literature for other strains.
蓝藻具有通过光自养代谢生产类似于乙醇的替代生物燃料的潜力。尽管已经对模式蓝藻菌株进行了工程改造以生产此类产品,但尚未进行系统的代谢工程研究来确定用于生产的最佳菌株。在这项工作中,我们鉴定了与适当基因缺失对应的最佳乙醇产生突变体,这些缺失导致碳通量的适当重定向。特别是,我们系统地模拟了单基因和双基因缺失,同时考虑了单细胞蓝藻 Synechocystis 物种 PCC 6803 突变株的基因组规模代谢模型。各种基于优化的代谢建模技术,例如通量平衡分析 (FBA)、代谢调整最小化方法 (MOMA) 和调控开关最小化 (ROOM),都用于该分析。对于单基因缺失的 MOMA 模拟,获得了以生物量和乙醇通量为两个目标最大化的 Pareto 前沿,并对其进行了分析。Pareto 前沿上的点表示在底物摄取的约束下最大限度地利用资源,从而代表两个通量之间的最佳权衡。还对双基因缺失的 MOMA 和单基因和双基因缺失的 ROOM 模拟进行了 Pareto 分析。基于这些分析,确定了两个在乙醇和嘌呤代谢途径中具有组合基因缺失的突变体作为乙醇生产的有前途的候选者。相关基因是 adk、pta 和 ackA。这些突变体的乙醇生产率约为 0.15 mmol/(gDW h),这似乎是合理的,因为在文献中已经报道了其他菌株的实验值。