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揭示酶水平变化所追求的代谢目标。

Uncovering metabolic objectives pursued by changes of enzyme levels.

作者信息

Hoffmann Sabrina, Holzhütter Hermann-Georg

机构信息

Institute of Biochemistry, Charité Universitätsmedizin Berlin, Berlin, Germany.

出版信息

Ann N Y Acad Sci. 2009 Mar;1158:57-70. doi: 10.1111/j.1749-6632.2008.03753.x.

Abstract

Expression profiling and proteomic techniques reveal significant variations in the levels of thousands of mRNAs and proteins in response to environmental changes such as substrate depletion, oxidative stress, and hormonal stimulation. However, in most cases the functional implications of these variations remain elusive. One crucial problem complicating the functional interpretation of high-throughput data is that changes of protein levels do not simply translate into equivalent changes in the rate of the associated chemical processes due to various modes of enzyme regulation and the instantaneous effect of changed metabolite concentrations on adjacent flux rates. Here, we outline a theoretical concept to exploit information on (relative) changes in the level of metabolic enzymes for the prediction of (relative) flux changes in the underlying metabolic network. Our approach rests on the assumption that size and direction of fluxes (flux distribution) in the network are determined by an optimization principle in that the production of the physiologically relevant output metabolites is accomplished with minimal total flux. The prediction method comprises two main steps. First, we approximate (unknown) flux changes by a linear combination of so-called minimal flux modes, each representing a specific flux distribution minimally required to accomplish the production of only one of the numerous functionally relevant output metabolites. Second, the unknown coefficients of this decomposition are chosen such that a maximal correlation with observed differential expression data is obtained. Based on simulated enzyme expression scenarios in a metabolic model of the human red blood cell, we demonstrate the predictive capacity of our method.

摘要

表达谱分析和蛋白质组学技术揭示了数千种mRNA和蛋白质水平在响应环境变化(如底物耗尽、氧化应激和激素刺激)时的显著差异。然而,在大多数情况下,这些差异的功能意义仍然难以捉摸。使高通量数据功能解释复杂化的一个关键问题是,由于酶调节的各种模式以及代谢物浓度变化对相邻通量率的即时影响,蛋白质水平的变化并不简单地转化为相关化学过程速率的等效变化。在这里,我们概述了一个理论概念,利用代谢酶水平(相对)变化的信息来预测基础代谢网络中的(相对)通量变化。我们的方法基于这样一个假设,即网络中通量的大小和方向(通量分布)由一个优化原则决定,即生理相关输出代谢物的产生是以最小的总通量完成的。该预测方法包括两个主要步骤。首先,我们通过所谓的最小通量模式的线性组合来近似(未知的)通量变化,每个最小通量模式代表仅产生众多功能相关输出代谢物之一所需的最小特定通量分布。其次,选择该分解的未知系数,以便与观察到的差异表达数据获得最大相关性。基于人类红细胞代谢模型中的模拟酶表达情况,我们证明了我们方法的预测能力。

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