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CLEI Electronic Journal

On-line version ISSN 0717-5000

Abstract

RANGEL, Carlos R.; ALTAMIRANDA, Junior  and  AGUILAR, Jose. Semantic Mining based on graph theory and ontologies. Case Study: Cell Signaling Pathways. CLEIej [online]. 2016, vol.19, n.2, pp.7-7. ISSN 0717-5000.

In this paper we use concepts from graph theory and cellular biology represented as ontologies, to carry out semantic mining tasks on signaling pathway networks. Specifically, the paper describes the semantic enrichment of signaling pathway networks. A cell signaling network describes the basic cellular activities and their interactions. The main contribution of this paper is in the signaling pathway research area, it proposes a new technique to analyze and understand how changes in these networks may affect the transmission and flow of information, which produce diseases such as cancer and diabetes. Our approach is based on three concepts from graph theory (modularity, clustering and centrality) frequently used on social networks analysis. Our approach consists into two phases: the first uses the graph theory concepts to determine the cellular groups in the network, which we will call them communities; the second uses ontologies for the semantic enrichment of the cellular communities. The measures used from the graph theory allow us to determine the set of cells that are close (for example, in a disease), and the main cells in each community. We analyze our approach in two cases: TGF-β and the Alzheimer Disease.

Keywords : Bioinformatics; semantic mining; clustering; semantic enrichment; TGF-β; Alzheimer disease.

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