DISAT, Politecnico di Torino, 10129 Torino, Italy.
Human Genetics Foundation-Torino, 10126 Torino, Italy.
Nat Commun. 2017 Apr 6;8:14915. doi: 10.1038/ncomms14915.
Assuming a steady-state condition within a cell, metabolic fluxes satisfy an underdetermined linear system of stoichiometric equations. Characterizing the space of fluxes that satisfy such equations along with given bounds (and possibly additional relevant constraints) is considered of utmost importance for the understanding of cellular metabolism. Extreme values for each individual flux can be computed with linear programming (as flux balance analysis), and their marginal distributions can be approximately computed with Monte Carlo sampling. Here we present an approximate analytic method for the latter task based on expectation propagation equations that does not involve sampling and can achieve much better predictions than other existing analytic methods. The method is iterative, and its computation time is dominated by one matrix inversion per iteration. With respect to sampling, we show through extensive simulation that it has some advantages including computation time, and the ability to efficiently fix empirically estimated distributions of fluxes.
假设细胞内处于稳态条件下,代谢通量满足化学计量线性方程组的欠定系统。沿着给定的边界(可能还有其他相关约束)来描述满足这些方程的通量空间,对于理解细胞代谢至关重要。可以使用线性规划(如通量平衡分析)计算每个单独通量的极值,并且可以使用蒙特卡罗抽样近似计算其边际分布。在这里,我们提出了一种基于期望传播方程的后一种任务的近似分析方法,该方法不涉及采样,并且可以比其他现有的分析方法实现更好的预测。该方法是迭代的,其计算时间主要由每次迭代中的一次矩阵求逆决定。与采样相比,我们通过广泛的模拟表明,它具有一些优势,包括计算时间和有效地固定经验估计通量分布的能力。