2014
DOI: 10.1186/1752-0509-8-s4-s11
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cytoHubba: identifying hub objects and sub-networks from complex interactome

Abstract: BackgroundNetwork is a useful way for presenting many types of biological data including protein-protein interactions, gene regulations, cellular pathways, and signal transductions. We can measure nodes by their network features to infer their importance in the network, and it can help us identify central elements of biological networks.ResultsWe introduce a novel Cytoscape plugin cytoHubba for ranking nodes in a network by their network features. CytoHubba provides 11 topological analysis methods including De… Show more

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Cited by 3,948 publications
(3,228 citation statements)
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References 18 publications
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“…GRN complexity was reduced by applying topological metrics (Yu et al 2007;Chin et al 2014). The ultimate reduced GRN was composed of 80 nodes and 626 edges, with a ranking color code (heat map) displaying the hub importance metrics (Supplemental Fig.…”
Section: Dynamic Regulatory Maps and Ra-driven Grn Reconstructionmentioning
confidence: 99%
“…GRN complexity was reduced by applying topological metrics (Yu et al 2007;Chin et al 2014). The ultimate reduced GRN was composed of 80 nodes and 626 edges, with a ranking color code (heat map) displaying the hub importance metrics (Supplemental Fig.…”
Section: Dynamic Regulatory Maps and Ra-driven Grn Reconstructionmentioning
confidence: 99%
“…The minimum required interaction score was 0.4 (medium confidence). Network data were loaded into Cytoscape software (version 3.5.1), and hub genes were calculated by applying Cytohubba (Chin et al 2014) using the MCC algorithm.…”
Section: Protein-protein Interaction (Ppi) Network Constructionmentioning
confidence: 99%
“…The target genes are considered to be connected in the network if they share a common miRNA. To identify the hub miRNAs and target genes associated with vitiligo, among the number of methods available for hub identification, we chose maximum clique centrality (MCC) along with two other topological parameters, namely, betweenness centrality and bottleneck (Chin et al 2014), and normalized the data to identify the top hubs in the network. In our analysis, we found seven hub miRNAs (hsa-miR-99b, hsa-miR-577, hsa-miR-9, hsa-miR-155, hsa-miR-211, hsa-miR-10a, and hsa-miR-145).…”
Section: Identification Of Mirna Target Genes and Construction Of Mirmentioning
confidence: 99%
“…Rather, the protein-protein interaction network generated displayed many interactions between the proteins. For prioritizing proteins as hubs, we chose MCC along with betweenness centrality and bottleneck as topological parameters (Chin et al 2014) and normalized the data to identify the top 15 hubs in the network. These 15 essential (hub) proteins are IL10, IFNG, IL4, CD44, IL1B, CTLA4, GZMB, FOXP3, TNF, IL2RA, CAT, ESR1, TLR2, HLA-A, and GSTP1.…”
Section: Protein-protein Interaction Networkmentioning
confidence: 99%