P.K. Sinha Centre for Bioenergy and Renewables, Indian Institute of Technology, Kharagpur, West Bengal 721302, India.
Chemical Engineering, School for Engineering of Matter, Transport, and Energy, Arizona State University, Tempe, Arizona 85287, United States.
ACS Synth Biol. 2024 Oct 18;13(10):3281-3294. doi: 10.1021/acssynbio.4c00379. Epub 2024 Sep 19.
The ability to convert atmospheric CO and light into biomass and value-added chemicals makes cyanobacteria a promising resource microbial host for biotechnological applications. A newly discovered fastest-growing cyanobacterial strain, sp. PCC 11901, has been reported to have the highest biomass accumulation rate, making it a preferred target host for producing renewable fuels, value-added biochemicals, and natural products. System-level knowledge of an organism is imperative to understand the metabolic potential of the strain, which can be attained by developing genome-scale metabolic models (GEMs). We present the first genome-scale metabolic model of sp. PCC 11901 (iRS840), which contains 840 genes, 1001 reactions, and 944 metabolites. The model has been optimized and validated under different trophic modes, i.e., autotrophic and mixotrophic, by conducting an growth experiment. The robustness of the metabolic network was evaluated by changing the biomass coefficient of the model, which showed a higher sensitivity toward pigments under the photoautotrophic condition, whereas under the heterotrophic condition, amino acids were found to be more influential. Furthermore, it was discovered that PCC 11901 synthesizes succinyl-CoA via succinic semialdehyde due to its imperfect TCA cycle. Subsequent flux balance analysis (FBA) revealed a quantum yield of 0.16 in silico, which is higher compared to that of PCC 6803. Under mixotrophic conditions (with glycerol and carbon dioxide), the flux through the Calvin cycle increased compared to autotrophic conditions. This model will be useful for gaining insights into the metabolic potential of PCC 11901 and developing effective metabolic engineering strategies for product development.
蓝藻将大气 CO 和光转化为生物质和增值化学品的能力使其成为生物技术应用中很有前途的微生物宿主资源。一种新发现的生长最快的蓝藻菌株 sp. PCC 11901 已被报道具有最高的生物量积累率,因此成为生产可再生燃料、增值生化物质和天然产物的首选目标宿主。了解生物体的系统水平知识对于理解该菌株的代谢潜力至关重要,而这可以通过开发基因组尺度代谢模型 (GEM) 来实现。我们提出了 sp. PCC 11901 (iRS840) 的第一个基因组尺度代谢模型,其中包含 840 个基因、1001 个反应和 944 个代谢物。该模型已通过在不同营养模式(自养和混合营养)下进行生长实验进行了优化和验证。通过改变模型的生物质系数评估了代谢网络的稳健性,结果表明在光自养条件下,色素对模型的敏感性更高,而在异养条件下,氨基酸的影响更大。此外,发现由于其不完善的三羧酸 (TCA) 循环,PCC 11901 通过琥珀酰半醛合成琥珀酰辅酶 A。随后的通量平衡分析 (FBA) 显示在计算机模拟中量子产率为 0.16,高于 PCC 6803。在混合营养条件下(有甘油和二氧化碳),与自养条件相比,通过卡尔文循环的通量增加。该模型将有助于深入了解 PCC 11901 的代谢潜力,并为开发有效的代谢工程策略以开发产品。