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Graphlet-based measures are suitable for biological network comparison

机译:基于图谱的度量适用于生物网络比较

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Motivation: Large amounts of biological network data exist for many species. Analogous to sequence comparison, network comparison aims to provide biological insight. Graphlet-based methods are proving to be useful in this respect. Recently some doubt has arisen concerning the applicability of graphlet-based measures to low edge density networks-in particular that the methods are 'unstable'-and further that no existing network model matches the structure found in real biological networks. Results: We demonstrate that it is the model networks themselves that are 'unstable' at low edge density and that graphlet-based measures correctly reflect this instability. Furthermore, while model network topology is unstable at low edge density, biological network topology is stable. In particular, one must distinguish between average density and local density. While model networks of low average edge densities also have low local edge density, that is not the case with protein-protein interaction (PPI) networks: real PPI networks have low average edge density, but high local edge densities, and hence, they (and thus graphlet-based measures) are stable on these networks. Finally, we use a recently devised non-parametric statistical test to demonstrate that PPI networks of many species are well-fit by several models not previously tested. In addition, we model several viral PPI networks for the first time and demonstrate an exceptionally good fit between the data and theoretical models.
机译:动机:许多物种都有大量的生物网络数据。与序列比较类似,网络比较旨在提供生物学见解。在这方面,基于Graphlet的方法被证明是有用的。最近,关于基于图谱的度量在低边沿密度网络中的适用性引起了一些怀疑,特别是该方法“不稳定”,并且还没有现有的网络模型与实际生物网络中发现的结构相匹配。结果:我们证明了模型网络本身在低边沿密度下“不稳定”,并且基于图集的度量正确地反映了这种不稳定性。此外,虽然模型网络拓扑在低边缘密度下不稳定,但生物网络拓扑是稳定的。特别是,必须区分平均密度和局部密度。虽然平均边缘密度低的模型网络也具有较低的局部边缘密度,但蛋白质-蛋白质相互作用(PPI)网络却并非如此:真正的PPI网络的平均边缘密度低,但是局部边缘密度高,因此它们(因此基于图谱的度量)在这些网络上是稳定的。最后,我们使用最近设计的非参数统计测试来证明许多物种的PPI网络可以通过之前未测试的几种模型很好地拟合。此外,我们首次为多个病毒PPI网络建模,并展示了数据与理论模型之间的极佳拟合。

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