The characterization of the interacting behaviors of complex biological systems is a primary objective in protein–protein network analysis and computational biology. In this paper we present FunMod, an innovative Cytoscape version 2.8 plugin that is able to mine undirected protein–protein networks and to infer sub-networks of interacting proteins intimately correlated with relevant biological pathways. This plugin may enable the discovery of new pathways involved in diseases. In order to describe the role of each protein within the relevant biological pathways, FunMod computes and scores three topological features of the identified sub-networks. By integrating the results from biological pathway clustering and topological network analysis, FunMod proved to be useful for the data interpretation and the generation of new hypotheses in two case studies.
FunMod: A Cytoscape Plugin for Identifying Functional Modules in Undirected Protein–Protein Networks / Natale, M.; Benso, Alfredo; DI CARLO, Stefano; Ficarra, Elisa. - In: GENOMICS, PROTEOMICS & BIOINFORMATICS. - ISSN 1672-0229. - 12:4(2014), pp. 178-186. [10.1016/j.gpb.2014.05.002]
FunMod: A Cytoscape Plugin for Identifying Functional Modules in Undirected Protein–Protein Networks
FICARRA, ELISA
2014
Abstract
The characterization of the interacting behaviors of complex biological systems is a primary objective in protein–protein network analysis and computational biology. In this paper we present FunMod, an innovative Cytoscape version 2.8 plugin that is able to mine undirected protein–protein networks and to infer sub-networks of interacting proteins intimately correlated with relevant biological pathways. This plugin may enable the discovery of new pathways involved in diseases. In order to describe the role of each protein within the relevant biological pathways, FunMod computes and scores three topological features of the identified sub-networks. By integrating the results from biological pathway clustering and topological network analysis, FunMod proved to be useful for the data interpretation and the generation of new hypotheses in two case studies.File | Dimensione | Formato | |
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