ARC Centre of Excellence, Plant Success in Nature and Agriculture, School of Mathematics and Physics, The University of Queensland, Brisbane, Queensland, Australia.
PLoS One. 2024 Oct 3;19(10):e0311433. doi: 10.1371/journal.pone.0311433. eCollection 2024.
The use of graph centrality measures applied to biological networks, such as protein interaction networks, underpins much research into identifying key players within biological processes. This approach however is restricted to dyadic interactions and it is well-known that in many instances interactions are polyadic. In this study we illustrate the merit of using hypergraph centrality applied to a hypernetwork as an alternative. Specifically, we review and propose an extension to a recently introduced node and edge nonlinear hypergraph centrality model which provides mutually dependent node and edge centralities. A Saccharomyces Cerevisiae protein complex hypernetwork is used as an example application with nodes representing proteins and hyperedges representing protein complexes. The resulting rankings of the nodes and edges are considered to see if they provide insight into the essentiality of the proteins and complexes. We find that certain variations of the model predict essentiality more accurately and that the degree-based variation illustrates that the centrality-lethality rule extends to a hypergraph setting. In particular, through exploitation of the models flexibility, we identify small sets of proteins densely populated with essential proteins. One of the key advantages of applying this model to a protein complex hypernetwork is that it also provides a classification method for protein complexes, unlike previous approaches which are only concerned with classifying proteins.
将图中心度度量应用于生物网络(如蛋白质相互作用网络)的方法是识别生物过程中关键参与者的重要研究基础。然而,这种方法仅限于二项相互作用,众所周知,在许多情况下相互作用是多对多的。在本研究中,我们展示了使用超图中心度来替代的优点。具体来说,我们回顾并提出了一种最近引入的节点和边非线性超图中心度模型的扩展,该模型提供了相互依赖的节点和边中心度。以酿酒酵母蛋白复合物超网络为例,节点代表蛋白质,超边代表蛋白质复合物。考虑节点和边的排序,以了解它们是否为蛋白质和复合物的重要性提供了深入的见解。我们发现,该模型的某些变体可以更准确地预测重要性,并且基于度的变体表明中心度致死规则扩展到了超图环境。特别是,通过利用模型的灵活性,我们确定了由富含必需蛋白质的小蛋白质组组成的集合。将该模型应用于蛋白质复合物超网络的一个关键优势是,它还为蛋白质复合物提供了一种分类方法,而不同于仅关注于蛋白质分类的先前方法。