Functional classification of genome-scale metabolic networks.

Oliver Ebenhöh, Thomas Handorf
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引用次数: 15

Abstract

We propose two strategies to characterize organisms with respect to their metabolic capabilities. The first, investigative, strategy describes metabolic networks in terms of their capability to utilize different carbon sources, resulting in the concept of carbon utilization spectra. In the second, predictive, approach minimal nutrient combinations are predicted from the structure of the metabolic networks, resulting in a characteristic nutrient profile. Both strategies allow for a quantification of functional properties of metabolic networks, allowing to identify groups of organisms with similar functions. We investigate whether the functional description reflects the typical environments of the corresponding organisms by dividing all species into disjoint groups based on whether they are aerotolerant and/or photosynthetic. Despite differences in the underlying concepts, both measures display some common features. Closely related organisms often display a similar functional behavior and in both cases the functional measures appear to correlate with the considered classes of environments. Carbon utilization spectra and nutrient profiles are complementary approaches toward a functional classification of organism-wide metabolic networks. Both approaches contain different information and thus yield different clusterings, which are both different from the classical taxonomy of organisms. Our results indicate that a sophisticated combination of our approaches will allow for a quantitative description reflecting the lifestyles of organisms.

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基因组尺度代谢网络的功能分类。
我们提出了两种策略来表征生物体的代谢能力。首先,调查性策略描述代谢网络利用不同碳源的能力,从而产生碳利用谱的概念。在第二种预测方法中,根据代谢网络的结构预测最小的营养组合,从而产生特征营养概况。这两种策略都可以量化代谢网络的功能特性,从而识别具有相似功能的生物体群。我们研究了功能描述是否反映了相应生物的典型环境,通过根据它们是否耐氧和/或光合作用将所有物种划分为不相关的组。尽管在基本概念上存在差异,但这两种测量方法显示出一些共同特征。密切相关的生物经常表现出相似的功能行为,在这两种情况下,功能测量似乎与所考虑的环境类别有关。碳利用光谱和营养剖面是对全生物代谢网络功能分类的互补方法。这两种方法包含不同的信息,因此产生不同的聚类,这两种方法都不同于经典的生物分类。我们的结果表明,我们的方法的一个复杂的组合将允许定量描述反映生物体的生活方式。
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