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Inferring topology from clustering coefficients in protein-protein interaction networks

机译:从蛋白质-蛋白质相互作用网络中的聚类系数推断拓扑

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Background Although protein-protein interaction networks determined with high-throughput methods are incomplete, they are commonly used to infer the topology of the complete interactome. These partial networks often show a scale-free behavior with only a few proteins having many and the majority having only a few connections. Recently, the possibility was suggested that this scale-free nature may not actually reflect the topology of the complete interactome but could also be due to the error proneness and incompleteness of large-scale experiments. Results In this paper, we investigate the effect of limited sampling on average clustering coefficients and how this can help to more confidently exclude possible topology models for the complete interactome. Both analytical and simulation results for different network topologies indicate that partial sampling alone lowers the clustering coefficient of all networks tremendously. Furthermore, we extend the original sampling model by also including spurious interactions via a preferential attachment process. Simulations of this extended model show that the effect of wrong interactions on clustering coefficients depends strongly on the skewness of the original topology and on the degree of randomness of clustering coefficients in the corresponding networks. Conclusion Our findings suggest that the complete interactome is either highly skewed such as e.g. in scale-free networks or is at least highly clustered. Although the correct topology of the interactome may not be inferred beyond any reasonable doubt from the interaction networks available, a number of topologies can nevertheless be excluded with high confidence.
机译:背景技术尽管用高通量方法确定的蛋白质-蛋白质相互作用网络不完整,但它们通常用于推断完整相互作用组的拓扑。这些部分网络通常表现出无标度的行为,只有少数具有许多蛋白质,而大多数只有少数连接。最近,有人提出这种无标度的性质可能实际上并不能反映完整的相互作用组的拓扑结构,但也可能是由于大规模实验的错误倾向和不完整性所致。结果在本文中,我们研究了有限采样对平均聚类系数的影响,以及这如何有助于更可靠地排除完整相互作用组的可能拓扑模型。针对不同网络拓扑的分析和仿真结果均表明,仅部分采样会大大降低所有网络的聚类系数。此外,我们还扩展了原始采样模型,其中还包括通过优先连接过程进行的虚假交互。该扩展模型的仿真表明,错误的交互作用对聚类系数的影响在很大程度上取决于原始拓扑的偏度以及相应网络中聚类系数的随机程度。结论我们的发现表明,完整的相互作用组要么高度偏斜,例如在无规模网络中或至少高度集群化。尽管可能无法从可用的相互作用网络中合理推断出相互作用组的正确拓扑,但仍可以高度自信地排除许多拓扑。

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