Comparison of Disease Specific Sub-Network Identification Programs

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2018

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Institute of Electrical and Electronics Engineers Inc.

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Green Open Access

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Abstract

Active sub-network search aims to identify a group of interconnected genes in a protein-protein interaction network that contains most of the disease-associated genes. In recent years, to address active sub-network search problem, various algorithms and programs are developed. In this study, performances of disease specific sub-network identification programs are compared. The same input dataset is run in jActiveModules, ActiveSubnetworkGA, CytoHubba, ClusterViz, MCODE, CytoMOBAS, PathFindR, PINBPA and PEWCC programs. Then, functional enrichment analysis is applied on obtained sub-networks. Finally, they are compared according to the results of GO Enrichment Analysis. In addition to these, work performances, features and requirements of programs are compared. © 2019 Elsevier B.V., All rights reserved.

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Keywords

Active Sub-Network Search, Disease Associated Modules, Protein-Protein Interaction Networks, Genes, Functional Enrichment Analysis, Protein-Protein Interaction Networks, Sub-Network, Work Performance, Proteins

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-- 3rd International Conference on Computer Science and Engineering, UBMK 2018 -- Sarajevo -- 143560

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275

End Page

280
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