Koch Ina, Ackermann Jörg
Molecular Bioinformatics group, Cluster of Excellence "Macromolecular Complexes", Johann Wolfgang Goethe-University Frankfurt (Main), Institute of Computer Science, Robert-Mayer-Strasse 11-15, Frankfurt (Main) 60325, Germany.
Metabolites. 2013 Aug 12;3(3):673-700. doi: 10.3390/metabo3030673.
Functional modules of metabolic networks are essential for understanding the metabolism of an organism as a whole. With the vast amount of experimental data and the construction of complex and large-scale, often genome-wide, models, the computer-aided identification of functional modules becomes more and more important. Since steady states play a key role in biology, many methods have been developed in that context, for example, elementary flux modes, extreme pathways, transition invariants and place invariants. Metabolic networks can be studied also from the point of view of graph theory, and algorithms for graph decomposition have been applied for the identification of functional modules. A prominent and currently intensively discussed field of methods in graph theory addresses the Q-modularity. In this paper, we recall known concepts of module detection based on the steady-state assumption, focusing on transition-invariants (elementary modes) and their computation as minimal solutions of systems of Diophantine equations. We present the Fourier-Motzkin algorithm in detail. Afterwards, we introduce the Q-modularity as an example for a useful non-steady-state method and its application to metabolic networks. To illustrate and discuss the concepts of invariants and Q-modularity, we apply a part of the central carbon metabolism in potato tubers (Solanum tuberosum) as running example. The intention of the paper is to give a compact presentation of known steady-state concepts from a graph-theoretical viewpoint in the context of network decomposition and reduction and to introduce the application of Q-modularity to metabolic Petri net models.
代谢网络的功能模块对于从整体上理解生物体的新陈代谢至关重要。随着大量实验数据的积累以及复杂的大规模(通常是全基因组范围)模型的构建,计算机辅助识别功能模块变得越来越重要。由于稳态在生物学中起着关键作用,因此在这一背景下已经开发了许多方法,例如基本通量模式、极端途径、转移不变量和位置不变量。代谢网络也可以从图论的角度进行研究,并且图分解算法已被应用于功能模块的识别。图论中一个突出且目前正在深入讨论的方法领域涉及Q-模块化。在本文中,我们回顾基于稳态假设的模块检测的已知概念,重点关注转移不变量(基本模式)及其作为丢番图方程组最小解的计算。我们详细介绍傅里叶 - 莫兹金算法。之后,我们引入Q-模块化作为一种有用的非稳态方法及其在代谢网络中的应用示例。为了说明和讨论不变量和Q-模块化的概念,我们以马铃薯块茎(Solanum tuberosum)中的部分中心碳代谢作为实例进行应用。本文的目的是从网络分解和简化的背景下,以图论观点对已知的稳态概念进行简洁介绍,并介绍Q-模块化在代谢Petri网模型中的应用。