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The powerful law of the power law and other myths in network biology

机译:幂律的强大定律以及网络生物学中的其他神话

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摘要

For almost 10 years, topological analysis of different large-scale biological networks (metabolic reactions, protein interactions, transcriptional regulation) has been highlighting some recurrent properties: power law distribution of degree, scale-freeness, small world, which have been proposed to confer functional advantages such as robustness to environmental changes and tolerance to random mutations. Stochastic generative models inspired different scenarios to explain the growth of interaction networks during evolution. The power law and the associated properties appeared so ubiquitous in complex networks that they were qualified as "universal laws". However, these properties are no longer observed when the data are subjected to statistical tests: in most cases, the data do not fit the expected theoretical models, and the cases of good fitting merely result from sampling artefacts or improper data representation. The field of network biology seems to be founded on a series of myths, i.e. widely believed but false ideas. The weaknesses of these foundations should however not be considered as a failure for the entire domain. Network analysis provides a powerful frame for understanding the function and evolution of biological processes, provided it is brought to an appropriate level of description, by focussing on smaller functional modules and establishing the link between their topological properties and their dynamical behaviour.
机译:近十年来,对各种大型生物网络(代谢反应,蛋白质相互作用,转录调控)的拓扑分析突出了一些经常出现的特性:幂律分布的程度,无标度,小世界,这些都被提议赋予功能优势,例如对环境变化的鲁棒性和对随机突变的耐受性。随机生成模型启发了不同的情况,以解释进化过程中交互网络的增长。在复杂的网络中,幂定律和相关的属性如此普遍,以至于它们被称为“普遍定律”。但是,当对数据进行统计测试时,不再观察到这些属性:在大多数情况下,数据不符合预期的理论模型,而拟合良好的情况仅是由于采样伪像或数据表示不当造成的。网络生物学领域似乎建立在一系列神话的基础上,即被广泛认为但虚假的想法。但是,不应将这些基础的弱点视为整个领域的失败。通过将分析集中到较小的功能模块并建立其拓扑特性与其动态行为之间的联系,将网络分析引入适当的描述水平,即可为理解生物过程的功能和演变提供强大的框架。

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  • 来源
    《Molecular BioSystems》 |2009年第12期|1482-1493|共12页
  • 作者单位

    Bioinformatique des Genomes et des Reseaux-BiG Re, Universite Libre de Bruxelles, Campus Plaine, CP 263, Boulevard du Triomphe, B-1050 Bruxelles, Belgium;

    Bioinformatique des Genomes et des Reseaux-BiG Re, Universite Libre de Bruxelles, Campus Plaine, CP 263, Boulevard du Triomphe, B-1050 Bruxelles, Belgium;

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