Department of Mathematics, Rose-Hulman Institute of Technology, Terre Haute, IN, USA.
Department of Biotechnology, NTNU - Norwegian University of Science and Technology, Trondheim, Norway.
Sci Rep. 2017 Mar 21;7(1):268. doi: 10.1038/s41598-017-00170-3.
Constraint-based optimization, such as flux balance analysis (FBA), has become a standard systems-biology computational method to study cellular metabolisms that are assumed to be in a steady state of optimal growth. The methods are based on optimization while assuming (i) equilibrium of a linear system of ordinary differential equations, and (ii) deterministic data. However, the steady-state assumption is biologically imperfect, and several key stoichiometric coefficients are experimentally inferred from situations of inherent variation. We propose an approach that explicitly acknowledges heterogeneity and conducts a robust analysis of metabolic pathways (RAMP). The basic assumption of steady state is relaxed, and we model the innate heterogeneity of cells probabilistically. Our mathematical study of the stochastic problem shows that FBA is a limiting case of our RAMP method. Moreover, RAMP has the properties that: A) metabolic states are (Lipschitz) continuous with regards to the probabilistic modeling parameters, B) convergent metabolic states are solutions to the deterministic FBA paradigm as the stochastic elements dissipate, and C) RAMP can identify biologically tolerable diversity of a metabolic network in an optimized culture. We benchmark RAMP against traditional FBA on genome-scale metabolic reconstructed models of E. coli, calculating essential genes and comparing with experimental flux data.
基于约束的优化,如通量平衡分析(FBA),已成为研究细胞代谢的标准系统生物学计算方法,这些代谢被假设处于最佳生长的稳态。这些方法基于优化,同时假设(i)线性常微分方程组的平衡,和(ii)确定性数据。然而,稳态假设在生物学上并不完美,并且几个关键的计量系数是从固有变化的情况下从实验中推断出来的。我们提出了一种方法,该方法明确承认异质性,并对代谢途径进行稳健分析(RAMP)。放松了稳态的基本假设,并对细胞的固有异质性进行概率建模。我们对随机问题的数学研究表明,FBA 是我们的 RAMP 方法的一个极限情况。此外,RAMP 具有以下性质:A)代谢状态与概率建模参数有关,是(Lipschitz)连续的,B)收敛的代谢状态是确定性 FBA 范式的解,随着随机元素的耗散,C)RAMP 可以识别优化培养中代谢网络的生物学可容忍多样性。我们在大肠杆菌的基因组规模代谢重建模型上对 RAMP 与传统 FBA 进行了基准测试,计算必需基因并与实验通量数据进行比较。