Construction and analysis of protein-protein interaction to identify the molecular mechanism in hypertension

Hypertension is a global health problem with high number of incidence and associated to a high mortality rate. However, the molecular mechanism of hypertension has not been further understood. There have been a series of computational approaches proposed to predict related proteins based on network...

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Hauptverfasser: Setiani, Lusi Agus, Saputri, Fadlina Chany, Yanuar, Arry, Mun’im, Abdul
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creator Setiani, Lusi Agus
Saputri, Fadlina Chany
Yanuar, Arry
Mun’im, Abdul
description Hypertension is a global health problem with high number of incidence and associated to a high mortality rate. However, the molecular mechanism of hypertension has not been further understood. There have been a series of computational approaches proposed to predict related proteins based on network topologies. This study was aimed to find related proteins and biological regulatory pathways involved in hypertension and further to explore the molecule connectivity between these pathways by topological analysis of the Protein-protein interaction (PPI) network. Protein involved in hypertension were extracted from OMIM, DrugBank, and UniProt database. PPI network was then integrated and visualized using Cytoscape 3.8.2, DAVID database for the gene ontology (GO) functional analysis, KEGG pathway enrichment analysis mechanism and target of hypertension. The giant component of our constructed PPI network consisted of 1033 nodes with 4089 edges, including 35 proteins with large degree (k) betweenness centrality (BC) and is identified as a backbone network. MAPK3 with the largest k and sixth highest BC was suggested to be central to the PPI network associated with hypertension. The result of the GO analysis showed that the most influential biological process was the positive regulation of transcription from RNA polymerase II promoter, the regulation of vascular endothelium, and vascular vasodilation. KEGG result indicated that the MAPK signaling pathways, including TNF signaling pathway, Wnt signaling pathway, ERK5 pathway, JNK and p38 MAP kinase pathway is related molecular mechanism in hypertension.
doi_str_mv 10.1063/5.0118985
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subjects Biological activity
Computer networks
Endothelium
Functional analysis
Hypertension
Kinases
Network topologies
Proteins
Public health
RNA polymerase
RNA polymerase II
Signaling
Vasodilation
title Construction and analysis of protein-protein interaction to identify the molecular mechanism in hypertension
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