School of Earth and Space Exploration, Arizona State University, Tempe, AZ, USA.
Earth-Life Science Institute, Tokyo Institute of Technology, Meguro-ku, Tokyo, Japan.
Sci Rep. 2021 Mar 22;11(1):6542. doi: 10.1038/s41598-021-85903-1.
Biochemical reactions underlie the functioning of all life. Like many examples of biology or technology, the complex set of interactions among molecules within cells and ecosystems poses a challenge for quantification within simple mathematical objects. A large body of research has indicated many real-world biological and technological systems, including biochemistry, can be described by power-law relationships between the numbers of nodes and edges, often described as "scale-free". Recently, new statistical analyses have revealed true scale-free networks are rare. We provide a first application of these methods to data sampled from across two distinct levels of biological organization: individuals and ecosystems. We analyze a large ensemble of biochemical networks including networks generated from data of 785 metagenomes and 1082 genomes (sampled from the three domains of life). The results confirm no more than a few biochemical networks are any more than super-weakly scale-free. Additionally, we test the distinguishability of individual and ecosystem-level biochemical networks and show there is no sharp transition in the structure of biochemical networks across these levels of organization moving from individuals to ecosystems. This result holds across different network projections. Our results indicate that while biochemical networks are not scale-free, they nonetheless exhibit common structure across different levels of organization, independent of the projection chosen, suggestive of shared organizing principles across all biochemical networks.
生化反应是所有生命活动的基础。与生物学或技术的许多例子一样,细胞和生态系统中分子之间复杂的相互作用对在简单的数学对象中进行量化提出了挑战。大量研究表明,许多真实的生物和技术系统,包括生物化学,可以用节点和边数之间的幂律关系来描述,通常被描述为“无标度”。最近,新的统计分析表明,真正的无标度网络很少。我们首次将这些方法应用于从两个不同的生物学组织层次(个体和生态系统)中采样的数据。我们分析了大量生化网络,包括从 785 个宏基因组和 1082 个基因组(取自生命的三个领域)的数据生成的网络。结果表明,只有少数生化网络具有超弱无标度性。此外,我们测试了个体和生态系统层次生化网络的可区分性,并表明在从个体到生态系统的组织层次上,生化网络的结构没有明显的转变。这一结果在不同的网络投影中都成立。我们的结果表明,尽管生化网络不是无标度的,但它们在不同的组织层次上表现出共同的结构,与所选择的投影无关,这表明所有生化网络都有共同的组织原则。