进化与涌现:生命之树中蛋白质相互作用组的高阶信息结构。

IF 1.4
Brennan Klein, Erik Hoel, Anshuman Swain, Ross Griebenow, Michael Levin
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引用次数: 8

摘要

众所周知,生物系统的内部运作是难以理解的。由于进化系统中噪声和退化的普遍存在,在许多情况下,从基因调控网络到蛋白质-蛋白质相互作用组网络的所有工作都仍然是黑盒子。这种黑箱性质的一个后果是,人们不清楚在哪个尺度上分析生物系统才能最好地理解它们的功能。我们分析了1800多个物种在不同尺度上的蛋白质相互作用组,共包含8 782 166个蛋白质相互作用。我们展示了在这些相互作用组中出现的高阶“宏观尺度”,并且这些生物宏观尺度与较低的噪声和退化有关,因此降低了不确定性。此外,组成宏观尺度的相互作用组中的节点比不参与宏观尺度的节点更具弹性。与原核生物相比,这些作用在真核生物的相互作用组中更为明显;即使在敏感性测试之后,我们重新计算网络模拟下的紧急宏观尺度,我们在相互作用组中添加不同的边缘权重,这些结果仍然成立。这指向了宏观尺度上的合理进化适应:生物网络进化出信息丰富的宏观尺度,以获得在较低尺度上的不确定性以增强其弹性,以及在较高尺度上的“确定性”以提高其信息传递的有效性的好处。我们的工作解释了理解生物网络工作的一些困难,因为它们通常在隐藏的更高尺度上信息量最大,并展示了使这些信息量更大的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolution and emergence: higher order information structure in protein interactomes across the tree of life.

The internal workings of biological systems are notoriously difficult to understand. Due to the prevalence of noise and degeneracy in evolved systems, in many cases the workings of everything from gene regulatory networks to protein-protein interactome networks remain black boxes. One consequence of this black-box nature is that it is unclear at which scale to analyze biological systems to best understand their function. We analyzed the protein interactomes of over 1800 species, containing in total 8 782 166 protein-protein interactions, at different scales. We show the emergence of higher order 'macroscales' in these interactomes and that these biological macroscales are associated with lower noise and degeneracy and therefore lower uncertainty. Moreover, the nodes in the interactomes that make up the macroscale are more resilient compared with nodes that do not participate in the macroscale. These effects are more pronounced in interactomes of eukaryota, as compared with prokaryota; these results hold even after sensitivity tests where we recalculate the emergent macroscales under network simulations where we add different edge weights to the interactomes. This points to plausible evolutionary adaptation for macroscales: biological networks evolve informative macroscales to gain benefits of both being uncertain at lower scales to boost their resilience, and also being 'certain' at higher scales to increase their effectiveness at information transmission. Our work explains some of the difficulty in understanding the workings of biological networks, since they are often most informative at a hidden higher scale, and demonstrates the tools to make these informative higher scales explicit.

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