Matias Rodrigues João F, Wagner Andreas
Institute of Evolutionary Biology and Environmental Studies Bldg, Y27, University of Zurich, Winterthurerstrasse 190, CH-8057 Zurich, Switzerland.
BMC Syst Biol. 2011 Mar 7;5:39. doi: 10.1186/1752-0509-5-39.
A metabolism is a complex network of chemical reactions. This network synthesizes multiple small precursor molecules of biomass from chemicals that occur in the environment. The metabolic network of any one organism is encoded by a metabolic genotype, defined as the set of enzyme-coding genes whose products catalyze the network's reactions. Each metabolic genotype has a metabolic phenotype. We define this metabolic phenotype as the spectrum of different sources of a chemical element that a metabolism can use to synthesize biomass. We here focus on the element sulfur. We study properties of the space of all possible metabolic genotypes in sulfur metabolism by analyzing random metabolic genotypes that are viable on different numbers of sulfur sources.
We show that metabolic genotypes with the same phenotype form large connected genotype networks--networks of metabolic networks--that extend far through metabolic genotype space. How far they reach through this space depends linearly on the number of super-essential reactions. A super-essential reaction is an essential reaction that occurs in all networks viable in a given environment. Metabolic networks can differ in how robust their phenotype is to the removal of individual reactions. We find that this robustness depends on metabolic network size, and on other variables, such as the size of minimal metabolic networks whose reactions are all essential in a specific environment. We show that different neighborhoods of any genotype network harbor very different novel phenotypes, metabolic innovations that can sustain life on novel sulfur sources. We also analyze the ability of evolving populations of metabolic networks to explore novel metabolic phenotypes. This ability is facilitated by the existence of genotype networks, because different neighborhoods of these networks contain very different novel phenotypes.
We show that the space of metabolic genotypes involved in sulfur metabolism is organized similarly to that of carbon metabolism. We demonstrate that the maximum genotype distance and robustness of metabolic networks can be explained by the number of superessential reactions and by the sizes of minimal metabolic networks viable in an environment. In contrast to the genotype space of macromolecules, where phenotypic robustness may facilitate phenotypic innovation, we show that here the ability to access novel phenotypes does not monotonically increase with robustness.
新陈代谢是一个复杂的化学反应网络。该网络从环境中存在的化学物质合成多种生物量的小前体分子。任何一种生物体的代谢网络都由代谢基因型编码,代谢基因型被定义为其产物催化网络反应的一组酶编码基因。每种代谢基因型都有一种代谢表型。我们将这种代谢表型定义为一种新陈代谢能够用来合成生物量的化学元素的不同来源的谱。我们在此关注元素硫。我们通过分析在不同数量硫源上可行的随机代谢基因型,研究硫代谢中所有可能代谢基因型空间的性质。
我们表明具有相同表型的代谢基因型形成了大型连通基因型网络——代谢网络的网络——其在代谢基因型空间中延伸得很远。它们在这个空间中延伸的距离线性地取决于超必要反应的数量。超必要反应是在给定环境中所有可行网络中都出现的必要反应。代谢网络在其表型对单个反应去除的稳健性方面可能有所不同。我们发现这种稳健性取决于代谢网络的大小以及其他变量,例如其反应在特定环境中都是必要的最小代谢网络的大小。我们表明任何基因型网络的不同邻域具有非常不同的新表型,即能够在新硫源上维持生命的代谢创新。我们还分析了代谢网络进化群体探索新代谢表型的能力。基因型网络的存在促进了这种能力,因为这些网络的不同邻域包含非常不同的新表型。
我们表明参与硫代谢的代谢基因型空间的组织方式与碳代谢的相似。我们证明代谢网络的最大基因型距离和稳健性可以通过超必要反应的数量以及在环境中可行的最小代谢网络的大小来解释。与大分子的基因型空间不同,在大分子基因型空间中表型稳健性可能促进表型创新,我们在此表明,获得新表型的能力并不随稳健性单调增加。