The organisational structure of protein networks: revisiting the centrality-lethality hypothesis.

Systems and Synthetic Biology Pub Date : 2014-03-01 Epub Date: 2013-08-27 DOI:10.1007/s11693-013-9123-5
Karthik Raman, Nandita Damaraju, Govind Krishna Joshi
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引用次数: 88

Abstract

Protein networks, describing physical interactions as well as functional associations between proteins, have been unravelled for many organisms in the recent past. Databases such as the STRING provide excellent resources for the analysis of such networks. In this contribution, we revisit the organisation of protein networks, particularly the centrality-lethality hypothesis, which hypothesises that nodes with higher centrality in a network are more likely to produce lethal phenotypes on removal, compared to nodes with lower centrality. We consider the protein networks of a diverse set of 20 organisms, with essentiality information available in the Database of Essential Genes and assess the relationship between centrality measures and lethality. For each of these organisms, we obtained networks of high-confidence interactions from the STRING database, and computed network parameters such as degree, betweenness centrality, closeness centrality and pairwise disconnectivity indices. We observe that the networks considered here are predominantly disassortative. Further, we observe that essential nodes in a network have a significantly higher average degree and betweenness centrality, compared to the network average. Most previous studies have evaluated the centrality-lethality hypothesis for Saccharomyces cerevisiae and Escherichia coli; we here observe that the centrality-lethality hypothesis hold goods for a large number of organisms, with certain limitations. Betweenness centrality may also be a useful measure to identify essential nodes, but measures like closeness centrality and pairwise disconnectivity are not significantly higher for essential nodes.

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蛋白质网络的组织结构:重新审视中心性-致命性假说。
描述蛋白质之间的物理相互作用和功能关联的蛋白质网络,在最近的过去已经为许多生物体揭开了面纱。STRING等数据库为分析此类网络提供了极好的资源。在这篇文章中,我们重新审视了蛋白质网络的组织,特别是中心性-致死率假说,该假说认为,与中心性较低的节点相比,网络中中心性较高的节点在移除时更有可能产生致死表型。我们考虑了20种不同生物的蛋白质网络,并在必要基因数据库中提供了必要信息,并评估了中心性措施与致死率之间的关系。对于这些生物,我们从STRING数据库中获得了高置信度的相互作用网络,并计算了网络参数,如度、中间中心性、亲密中心性和成对不连通性指数。我们观察到,这里考虑的网络主要是非分类的。此外,我们观察到,与网络平均值相比,网络中的基本节点具有显着更高的平均度和中间度中心性。大多数先前的研究都评估了酿酒酵母和大肠杆菌的中心性-致死率假说;我们在这里观察到,中心性-致死率假设对大多数生物体都成立,但有一定的局限性。中间中心性也可能是识别基本节点的有用度量,但基本节点的接近中心性和成对不连通性等度量并没有显著提高。
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