Occhipinti R, Puchowicz M A, LaManna J C, Somersalo E, Calvetti D
Department of Mathematics and Center for Modeling Integrated Metabolic Systems, Case Western Reserve University, Cleveland, OH 44106, USA.
Ann Biomed Eng. 2007 Jun;35(6):886-902. doi: 10.1007/s10439-007-9270-5. Epub 2007 Mar 24.
The estimation of metabolic fluxes for brain metabolism is important, among other things, to test the validity of different hypotheses which have been proposed in the literature. The metabolic model that we propose considers, in addition to the blood compartment, the cytosol, and mitochondria of both astrocyte and neuron, including detailed metabolic pathways. In this work we use a recently developed methodology to perform a statistical Flux Balance Analysis (FBA) for this model. The methodology recasts the problem in the form of Bayesian statistical inference and therefore can take advantage of qualitative information about brain metabolism for the simultaneous estimation of all reaction fluxes and transport rates at steady state. By a Markov Chain Monte Carlo (MCMC) sampling method, we are able to provide for each reaction flux and transport rate a distribution of possible values. The analysis of the histograms of the reaction fluxes and transport rates provides a very useful tool for assessing the validity of different hypotheses about brain energetics proposed in the literature, and facilitates the design of the pathways network that is in accordance with what is understood of the functioning of the brain. In this work, we focus on the analysis of biochemical pathways within each cell type (astrocyte and neuron) at different levels of neural activity, and we demonstrate how statistical tools can help implement various bounds suggested by experimental data.
估算脑代谢的代谢通量很重要,除其他方面外,这对于检验文献中提出的不同假设的有效性至关重要。我们提出的代谢模型除了考虑血液隔室之外,还考虑了星形胶质细胞和神经元的胞质溶胶及线粒体,包括详细的代谢途径。在这项工作中,我们使用一种最近开发的方法对该模型进行统计通量平衡分析(FBA)。该方法将问题重塑为贝叶斯统计推断的形式,因此可以利用有关脑代谢的定性信息来同时估算稳态下的所有反应通量和转运速率。通过马尔可夫链蒙特卡罗(MCMC)采样方法,可以为每个反应通量和转运速率提供可能值的分布。对反应通量和转运速率直方图的分析为评估文献中提出的关于脑能量学的不同假设的有效性提供了非常有用的工具,并有助于设计符合对脑功能理解的途径网络。在这项工作中,我们专注于分析不同神经活动水平下每种细胞类型(星形胶质细胞和神经元)内的生化途径,并展示统计工具如何帮助实施实验数据提出的各种边界条件。