Nag Ambarish, Lunacek Monte, Graf Peter A, Chang Christopher H
Computational Sciences Center, National Renewable Energy Laboratory, 1617 Cole Boulevard, MS 1608, Golden, CO 80401, USA.
BMC Syst Biol. 2011 Jun 18;5:94. doi: 10.1186/1752-0509-5-94.
Higher plants and algae are able to fix atmospheric carbon dioxide through photosynthesis and store this fixed carbon in large quantities as starch, which can be hydrolyzed into sugars serving as feedstock for fermentation to biofuels and precursors. Rational engineering of carbon flow in plant cells requires a greater understanding of how starch breakdown fluxes respond to variations in enzyme concentrations, kinetic parameters, and metabolite concentrations. We have therefore developed and simulated a detailed kinetic ordinary differential equation model of the degradation pathways for starch synthesized in plants and green algae, which to our knowledge is the most complete such model reported to date.
Simulation with 9 internal metabolites and 8 external metabolites, the concentrations of the latter fixed at reasonable biochemical values, leads to a single reference solution showing β-amylase activity to be the rate-limiting step in carbon flow from starch degradation. Additionally, the response coefficients for stromal glucose to the glucose transporter k(cat) and KM are substantial, whereas those for cytosolic glucose are not, consistent with a kinetic bottleneck due to transport. Response coefficient norms show stromal maltopentaose and cytosolic glucosylated arabinogalactan to be the most and least globally sensitive metabolites, respectively, and β-amylase k(cat) and KM for starch to be the kinetic parameters with the largest aggregate effect on metabolite concentrations as a whole. The latter kinetic parameters, together with those for glucose transport, have the greatest effect on stromal glucose, which is a precursor for biofuel synthetic pathways. Exploration of the steady-state solution space with respect to concentrations of 6 external metabolites and 8 dynamic metabolite concentrations show that stromal metabolism is strongly coupled to starch levels, and that transport between compartments serves to lower coupling between metabolic subsystems in different compartments.
We find that in the reference steady state, starch cleavage is the most significant determinant of carbon flux, with turnover of oligosaccharides playing a secondary role. Independence of stationary point with respect to initial dynamic variable values confirms a unique stationary point in the phase space of dynamically varying concentrations of the model network. Stromal maltooligosaccharide metabolism was highly coupled to the available starch concentration. From the most highly converged trajectories, distances between unique fixed points of phase spaces show that cytosolic maltose levels depend on the total concentrations of arabinogalactan and glucose present in the cytosol. In addition, cellular compartmentalization serves to dampen much, but not all, of the effects of one subnetwork on another, such that kinetic modeling of single compartments would likely capture most dynamics that are fast on the timescale of the transport reactions.
高等植物和藻类能够通过光合作用固定大气中的二氧化碳,并将固定的碳大量储存为淀粉,淀粉可水解为糖,作为发酵生产生物燃料和前体的原料。对植物细胞中碳流进行合理工程改造需要更深入了解淀粉分解通量如何响应酶浓度、动力学参数和代谢物浓度的变化。因此,我们开发并模拟了一个详细的动力学常微分方程模型,用于描述植物和绿藻中合成的淀粉降解途径,据我们所知,这是迄今为止报道的最完整的此类模型。
用9种内部代谢物和8种外部代谢物进行模拟,后者的浓度固定在合理的生化值,得到一个单一的参考解,表明β-淀粉酶活性是淀粉降解碳流中的限速步骤。此外,基质葡萄糖对葡萄糖转运蛋白的催化常数(k(cat))和米氏常数(KM)的响应系数很大,而胞质葡萄糖的响应系数则不然,这与转运导致的动力学瓶颈一致。响应系数规范表明,基质麦芽五糖和胞质糖基化阿拉伯半乳聚糖分别是全局敏感性最高和最低的代谢物,淀粉的β-淀粉酶催化常数和米氏常数是对代谢物浓度整体具有最大综合影响的动力学参数。后两个动力学参数,连同葡萄糖转运的参数,对基质葡萄糖的影响最大,基质葡萄糖是生物燃料合成途径的前体。对6种外部代谢物浓度和8种动态代谢物浓度的稳态解空间进行探索表明,基质代谢与淀粉水平密切相关,不同区室之间的转运有助于降低不同区室中代谢子系统之间的耦合。
我们发现,在参考稳态下,淀粉裂解是碳通量的最重要决定因素,寡糖周转起次要作用。平衡点相对于初始动态变量值的独立性证实了模型网络动态变化浓度相空间中的唯一平衡点。基质麦芽寡糖代谢与可用淀粉浓度高度相关。从收敛性最高的轨迹来看,相空间中唯一固定点之间的距离表明,胞质麦芽糖水平取决于胞质中阿拉伯半乳聚糖和葡萄糖的总浓度。此外,细胞区室化有助于减弱但并非全部减弱一个子网络对另一个子网络的影响,因此单区室的动力学建模可能会捕捉到在转运反应时间尺度上较快的大多数动态。