Case Western Reserve University, Department of Mathematics and Cognitive Science, 10900 Euclid Ave., Cleveland, 44106 OH, USA.
J Theor Biol. 2011 Apr 7;274(1):12-29. doi: 10.1016/j.jtbi.2010.12.007. Epub 2010 Dec 19.
This article considers a dynamic spatially lumped model for brain energy metabolism and proposes to use the results of a Markov chain Monte Carlo (MCMC) based flux balance analysis to estimate the kinetic model parameters. By treating steady state reaction fluxes and transport rates as random variables we are able to propagate the uncertainty in the steady state configurations to the predictions of the dynamic model, whose responses are no longer individual but ensembles of time courses. The kinetic model consists of five compartments and is governed by kinetic mass balance equations with Michaelis-Menten type expressions for reaction rates and transports between the compartments. The neuronal activation is implemented in terms of the effect of neuronal activity on parameters controlling the blood flow and neurotransmitter transport, and a feedback mechanism coupling the glutamate concentration in the synaptic cleft and the ATP hydrolysis, thus accounting for the energetic cost of the membrane potential restoration in the postsynaptic neurons. The changes in capillary volume follow the balloon model developed for BOLD MRI. The model follows the time course of the saturation levels of the blood hemoglobin, which link metabolism and BOLD FMRI signal. Analysis of the model predictions suggest that stoichiometry alone is not enough to determine glucose partitioning between neuron and astrocyte. Lactate exchange between neuron and astrocyte is supported by the model predictions, but the uncertainty on the direction and rate is rather elevated. By and large, the model suggests that astrocyte produces and effluxes lactate, while neuron may switch from using to producing lactate. The level of ATP hydrolysis in astrocyte is substantially higher than strictly required for neurotransmitter cycling, in agreement with the literature.
本文考虑了一种大脑能量代谢的动态空间集中模型,并提出使用基于马尔可夫链蒙特卡罗 (MCMC) 的通量平衡分析的结果来估计动力学模型参数。通过将稳态反应通量和运输速率视为随机变量,我们能够将稳态构型中的不确定性传播到动态模型的预测中,其响应不再是单个的,而是时间历程的集合。动力学模型由五个隔室组成,由动力学质量平衡方程控制,其中反应速率和隔室之间的运输采用米氏-门捷列夫型表达式。神经元激活是通过神经元活动对控制血流和神经递质运输的参数的影响来实现的,并且存在一个反馈机制,将突触间隙中的谷氨酸浓度与 ATP 水解耦合起来,从而解释了突触后神经元膜电位恢复的能量成本。毛细血管体积的变化遵循为 BOLD MRI 开发的气球模型。该模型遵循血液血红蛋白饱和度水平的时间历程,将代谢与 BOLD fMRI 信号联系起来。模型预测的分析表明,化学计量学本身不足以确定神经元和星形胶质细胞之间的葡萄糖分配。模型预测支持神经元和星形胶质细胞之间的乳酸交换,但方向和速率的不确定性相当高。总的来说,该模型表明星形胶质细胞产生并排出乳酸,而神经元可能会从使用乳酸转变为产生乳酸。星形胶质细胞中 ATP 水解的水平大大高于神经递质循环所需的水平,这与文献一致。