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Influence of degree correlations on network structure and stability in protein-protein interaction networks

机译:程度相关性对蛋白质-蛋白质相互作用网络中网络结构和稳定性的影响

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Background The existence of negative correlations between degrees of interacting proteins is being discussed since such negative degree correlations were found for the large-scale yeast protein-protein interaction (PPI) network of Ito et al. More recent studies observed no such negative correlations for high-confidence interaction sets. In this article, we analyzed a range of experimentally derived interaction networks to understand the role and prevalence of degree correlations in PPI networks. We investigated how degree correlations influence the structure of networks and their tolerance against perturbations such as the targeted deletion of hubs. Results For each PPI network, we simulated uncorrelated, positively and negatively correlated reference networks. Here, a simple model was developed which can create different types of degree correlations in a network without changing the degree distribution. Differences in static properties associated with degree correlations were compared by analyzing the network characteristics of the original PPI and reference networks. Dynamics were compared by simulating the effect of a selective deletion of hubs in all networks. Conclusion Considerable differences between the network types were found for the number of components in the original networks. Negatively correlated networks are fragmented into significantly less components than observed for positively correlated networks. On the other hand, the selective deletion of hubs showed an increased structural tolerance to these deletions for the positively correlated networks. This results in a lower rate of interaction loss in these networks compared to the negatively correlated networks and a decreased disintegration rate. Interestingly, real PPI networks are most similar to the randomly correlated references with respect to all properties analyzed. Thus, although structural properties of networks can be modified considerably by degree correlations, biological PPI networks do not actually seem to make use of this possibility.
机译:背景技术由于Ito等人的大规模酵母蛋白质-蛋白质相互作用(PPI)网络被发现,这种相互作用程度之间存在负相关关系。最近的研究发现,高可信度交互作用集没有这种负相关性。在本文中,我们分析了一系列实验得出的交互网络,以了解PPI网络中度相关性的作用和普遍性。我们研究了度相关如何影响网络的结构及其对扰动(例如集线器的有针对性删除)的容忍度。结果对于每个PPI网络,我们模拟了不相关,正相关和负相关的参考网络。在这里,开发了一个简单的模型,它可以在网络中创建不同类型的度数相关性,而无需更改度数分布。通过分析原始PPI和参考网络的网络特性,比较了与度相关性相关的静态属性差异。通过模拟在所有网络中选择性删除集线器的效果来比较动力学。结论对于原始网络中的组件数量,发现网络类型之间存在相当大的差异。与正相关网络相比,负相关网络被分解为更少的组件。另一方面,对于正相关网络,集线器的选择性缺失显示出对这些缺失的增强的结构耐受性。与负相关网络相比,这导致这些网络中的交互损失率较低,并且分解速度降低。有趣的是,就所有分析的属性而言,实际的PPI网络与随机相关的参考最相似。因此,尽管网络的结构特性可以通过程度相关性进行相当大的修改,但是生物PPI网络实际上似乎并未利用这种可能性。

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