School of Engineering and Science, Jacobs University, Bremen, Germany.
J R Soc Interface. 2012 Dec 7;9(77):3426-35. doi: 10.1098/rsif.2012.0490. Epub 2012 Aug 15.
Few-node subgraphs are the smallest collective units in a network that can be investigated. They are beyond the scale of individual nodes but more local than, for example, communities. When statistically over- or under-represented, they are called network motifs. Network motifs have been interpreted as building blocks that shape the dynamic behaviour of networks. It is this promise of potentially explaining emergent properties of complex systems with relatively simple structures that led to an interest in network motifs in an ever-growing number of studies and across disciplines. Here, we discuss artefacts in the analysis of network motifs arising from discrepancies between the network under investigation and the pool of random graphs serving as a null model. Our aim was to provide a clear and accessible catalogue of such incongruities and their effect on the motif signature. As a case study, we explore the metabolic network of Escherichia coli and show that only by excluding ever more artefacts from the motif signature a strong and plausible correlation with the essentiality profile of metabolic reactions emerges.
少数节点子图是网络中可以研究的最小集体单元。它们比单个节点的规模更大,但比社区等更局部。当它们在统计上被过度或不足代表时,它们被称为网络基元。网络基元被解释为形成网络动态行为的构建块。正是这种用相对简单的结构解释复杂系统涌现性质的潜力,导致越来越多的研究和跨学科领域对网络基元产生了兴趣。在这里,我们讨论了由于所研究的网络与作为零模型的随机图库之间的差异而在网络基元分析中出现的人为因素。我们的目的是提供一个清晰和易于理解的此类不一致性及其对基元特征的影响的目录。作为一个案例研究,我们探索了大肠杆菌的代谢网络,并表明,只有通过从基元特征中排除越来越多的人为因素,才能与代谢反应的必需性特征之间出现强烈而合理的相关性。