2021
DOI: 10.3389/fgene.2021.689515
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Overlapping Structures Detection in Protein-Protein Interaction Networks Using Community Detection Algorithm Based on Neighbor Clustering Coefficient

Abstract: With the rapid development of bioinformatics, researchers have applied community detection algorithms to detect functional modules in protein-protein interaction (PPI) networks that can predict the function of unknown proteins at the molecular level and further reveal the regularity of cell activity. Clusters in a PPI network may overlap where a protein is involved in multiple functional modules. To identify overlapping structures in protein functional modules, this paper proposes a novel overlapping community… Show more

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“…It measures structural closeness by counting the number of triangles a node forms with a community to determine the membership of that node to that community. Thereby, it is closely related to the general concept of clustering coefficients and has multiple areas of application, e.g ., the analysis of protein-protein interaction networks ( Omranian, Angeleska & Nikoloski, 2021 ; Wang et al, 2021 ), for systemic risk measure in finance ( Cerqueti, Clemente & Grassi, 2021 ), or in trade networks ( Bartesaghi, Clemente & Grassi, 2023 ). In the ‘Methods’ section, we explain this metric in more detail.…”
Section: Introductionmentioning
confidence: 99%
“…It measures structural closeness by counting the number of triangles a node forms with a community to determine the membership of that node to that community. Thereby, it is closely related to the general concept of clustering coefficients and has multiple areas of application, e.g ., the analysis of protein-protein interaction networks ( Omranian, Angeleska & Nikoloski, 2021 ; Wang et al, 2021 ), for systemic risk measure in finance ( Cerqueti, Clemente & Grassi, 2021 ), or in trade networks ( Bartesaghi, Clemente & Grassi, 2023 ). In the ‘Methods’ section, we explain this metric in more detail.…”
Section: Introductionmentioning
confidence: 99%