Key Laboratory of Imaging Processing and Intelligent Control, School of Artificial Intelligence and Automation, Huazhong University of Science and Technology, Wuhan, 430074, China.
Channing Division of Network Medicine, Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, 02115, USA.
Nat Commun. 2020 Nov 27;11(1):6043. doi: 10.1038/s41467-020-19841-3.
Robustness is a prominent feature of most biological systems. Most previous related studies have been focused on homogeneous molecular networks. Here we propose a comprehensive framework for understanding how the interactions between genes, proteins and metabolites contribute to the determinants of robustness in a heterogeneous biological network. We integrate heterogeneous sources of data to construct a multilayer interaction network composed of a gene regulatory layer, a protein-protein interaction layer, and a metabolic layer. We design a simulated perturbation process to characterize the contribution of each gene to the overall system's robustness, and find that influential genes are enriched in essential and cancer genes. We show that the proposed mechanism predicts a higher vulnerability of the metabolic layer to perturbations applied to genes associated with metabolic diseases. Furthermore, we find that the real network is comparably or more robust than expected in multiple random realizations. Finally, we analytically derive the expected robustness of multilayer biological networks starting from the degree distributions within and between layers. These results provide insights into the non-trivial dynamics occurring in the cell after a genetic perturbation is applied, confirming the importance of including the coupling between different layers of interaction in models of complex biological systems.
稳健性是大多数生物系统的突出特征。大多数先前的相关研究都集中在同质分子网络上。在这里,我们提出了一个全面的框架,以了解基因、蛋白质和代谢物之间的相互作用如何影响异质生物网络中的稳健性决定因素。我们整合了异质数据源,构建了一个由基因调控层、蛋白质-蛋白质相互作用层和代谢层组成的多层相互作用网络。我们设计了一个模拟的扰动过程来描述每个基因对整体系统稳健性的贡献,发现有影响力的基因富集了必需基因和癌症基因。我们表明,所提出的机制预测了代谢层对与代谢疾病相关基因的扰动更为脆弱。此外,我们发现,在多个随机实现中,真实网络的稳健性可与之媲美或超过预期。最后,我们从层内和层间的度分布出发,从理论上推导出了多层生物网络的预期稳健性。这些结果深入了解了在遗传扰动后细胞中发生的复杂动态,证实了在复杂生物系统模型中纳入不同相互作用层之间的耦合的重要性。