混合营养体
普通小球藻
生物
异养
自养
模式生物
代谢途径
有机体
焊剂(冶金)
通量平衡分析
基因组大小
绿藻门
基因组
生物化学
新陈代谢
基因
植物
遗传学
藻类
化学
细菌
有机化学
作者
Cristal Zúñiga,Chien‐Ting Li,Tyler Huelsman,Jennifer Levering,Daniel C. Zielinski,Brian O. McConnell,Christopher P. Long,Eric P. Knoshaug,Michael T. Guarnieri,Maciek R. Antoniewicz,Michael J. Betenbaugh,Karsten Zengler
出处
期刊:Plant Physiology
[Oxford University Press]
日期:2016-07-02
卷期号:172 (1): 589-602
被引量:127
摘要
The green microalga Chlorella vulgaris has been widely recognized as a promising candidate for biofuel production due to its ability to store high lipid content and its natural metabolic versatility. Compartmentalized genome-scale metabolic models constructed from genome sequences enable quantitative insight into the transport and metabolism of compounds within a target organism. These metabolic models have long been utilized to generate optimized design strategies for an improved production process. Here, we describe the reconstruction, validation, and application of a genome-scale metabolic model for C. vulgaris UTEX 395, iCZ843. The reconstruction represents the most comprehensive model for any eukaryotic photosynthetic organism to date, based on the genome size and number of genes in the reconstruction. The highly curated model accurately predicts phenotypes under photoautotrophic, heterotrophic, and mixotrophic conditions. The model was validated against experimental data and lays the foundation for model-driven strain design and medium alteration to improve yield. Calculated flux distributions under different trophic conditions show that a number of key pathways are affected by nitrogen starvation conditions, including central carbon metabolism and amino acid, nucleotide, and pigment biosynthetic pathways. Furthermore, model prediction of growth rates under various medium compositions and subsequent experimental validation showed an increased growth rate with the addition of tryptophan and methionine.
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