Abdou-Arbi Oumarou, Lemosquet Sophie, Van Milgen Jaap, Siegel Anne, Bourdon Jérémie
INRIA, Campus de Beaulieu, 35042 Rennes Cedex, France.
BMC Syst Biol. 2014 Jan 23;8:8. doi: 10.1186/1752-0509-8-8.
When studying metabolism at the organ level, a major challenge is to understand the matter exchanges between the input and output components of the system. For example, in nutrition, biochemical models have been developed to study the metabolism of the mammary gland in relation to the synthesis of milk components. These models were designed to account for the quantitative constraints observed on inputs and outputs of the system. In these models, a compatible flux distribution is first selected. Alternatively, an infinite family of compatible set of flux rates may have to be studied when the constraints raised by observations are insufficient to identify a single flux distribution. The precursors of output nutrients are traced back with analyses similar to the computation of yield rates. However, the computation of the quantitative contributions of precursors may lack precision, mainly because some precursors are involved in the composition of several nutrients and because some metabolites are cycled in loops.
We formally modeled the quantitative allocation of input nutrients among the branches of the metabolic network (AIO). It corresponds to yield information which, if standardized across all the outputs of the system, allows a precise quantitative understanding of their precursors. By solving nonlinear optimization problems, we introduced a method to study the variability of AIO coefficients when parsing the space of flux distributions that are compatible with both model stoichiometry and experimental data. Applied to a model of the metabolism of the mammary gland, our method made it possible to distinguish the effects of different nutritional treatments, although it cannot be proved that the mammary gland optimizes a specific linear combination of flux variables, including those based on energy. Altogether, our study indicated that the mammary gland possesses considerable metabolic flexibility.
Our method enables to study the variability of a metabolic network with respect to efficiency (i.e. yield rates). It allows a quantitative comparison of the respective contributions of precursors to the production of a set of nutrients by a metabolic network, regardless of the choice of the flux distribution within the different branches of the network.
在器官水平研究新陈代谢时,一个主要挑战是理解系统输入和输出组件之间的物质交换。例如,在营养学中,已经开发了生化模型来研究乳腺与乳汁成分合成相关的新陈代谢。这些模型旨在考虑系统输入和输出上观察到的定量限制。在这些模型中,首先选择一个兼容的通量分布。或者,当观测提出的限制不足以确定单一通量分布时,可能必须研究无限多个兼容的通量率集。输出营养素的前体通过类似于产率计算的分析进行追溯。然而,前体定量贡献的计算可能缺乏精度,主要是因为一些前体参与了几种营养素的组成,并且因为一些代谢物在循环中循环。
我们正式对代谢网络分支(AIO)之间输入营养素的定量分配进行了建模。它对应于产率信息,如果在系统的所有输出中进行标准化,就可以对其前体进行精确的定量理解。通过解决非线性优化问题,我们引入了一种方法来研究在解析与模型化学计量学和实验数据都兼容的通量分布空间时AIO系数的变异性。应用于乳腺代谢模型,我们的方法能够区分不同营养处理的效果,尽管无法证明乳腺优化了通量变量的特定线性组合,包括基于能量的那些。总之,我们的研究表明乳腺具有相当大的代谢灵活性。
我们的方法能够研究代谢网络在效率(即产率)方面的变异性。它允许对代谢网络中前体对一组营养素产生的各自贡献进行定量比较,而不管网络不同分支内通量分布的选择如何。