Biology Department, Brookhaven National Laboratory, Bldg 463, Upton, NY 11973, USA.
Plant J. 2011 Aug;67(3):526-41. doi: 10.1111/j.1365-313X.2011.04613.x. Epub 2011 May 27.
Computational simulation of large-scale biochemical networks can be used to analyze and predict the metabolic behavior of an organism, such as a developing seed. Based on the biochemical literature, pathways databases and decision rules defining reaction directionality we reconstructed bna572, a stoichiometric metabolic network model representing Brassica napus seed storage metabolism. In the highly compartmentalized network about 25% of the 572 reactions are transport reactions interconnecting nine subcellular compartments and the environment. According to known physiological capabilities of developing B. napus embryos, four nutritional conditions were defined to simulate heterotrophy or photoheterotrophy, each in combination with the availability of inorganic nitrogen (ammonia, nitrate) or amino acids as nitrogen sources. Based on mathematical linear optimization the optimal solution space was comprehensively explored by flux variability analysis, thereby identifying for each reaction the range of flux values allowable under optimality. The range and variability of flux values was then categorized into flux variability types. Across the four nutritional conditions, approximately 13% of the reactions have variable flux values and 10-11% are substitutable (can be inactive), both indicating metabolic redundancy given, for example, by isoenzymes, subcellular compartmentalization or the presence of alternative pathways. About one-third of the reactions are never used and are associated with pathways that are suboptimal for storage synthesis. Fifty-seven reactions change flux variability type among the different nutritional conditions, indicating their function in metabolic adjustments. This predictive modeling framework allows analysis and quantitative exploration of storage metabolism of a developing B. napus oilseed.
大规模生化网络的计算模拟可用于分析和预测生物体(如发育中的种子)的代谢行为。基于生化文献、途径数据库和定义反应方向性的决策规则,我们重建了 bna572,这是一个代表油菜种子储存代谢的计量代谢网络模型。在高度分隔的网络中,约 25%的 572 个反应是连接九个亚细胞区室和环境的运输反应。根据发育中的油菜胚胎的已知生理能力,定义了四种营养条件来模拟异养或光异养,每种条件都与无机氮(氨、硝酸盐)或氨基酸作为氮源的可用性相结合。基于数学线性优化,通量可变性分析全面探索了最优解空间,从而确定了每个反应在最优条件下允许的通量值范围。然后将通量值的范围和可变性分类为通量可变性类型。在这四种营养条件下,大约 13%的反应具有可变的通量值,10-11%的反应是可替代的(可以不活跃),这都表明代谢具有冗余性,例如由同工酶、亚细胞区室化或替代途径引起的。约三分之一的反应从未使用过,与不适合储存合成的途径有关。在不同的营养条件下,有 57 个反应的通量可变性类型发生变化,表明它们在代谢调节中的作用。这个预测建模框架允许对发育中的油菜种子油的储存代谢进行分析和定量探索。