ObjectiveTo explore potential biomarkers in stroke based on ego-networks and pathways.ResultsEgoNet method was applied to search for the underlying biomarkers in stroke using transcription profiling of E-GEOD-58294 and protein–protein interaction… Click to show full abstract
ObjectiveTo explore potential biomarkers in stroke based on ego-networks and pathways.ResultsEgoNet method was applied to search for the underlying biomarkers in stroke using transcription profiling of E-GEOD-58294 and protein–protein interaction (PPI) data. Eight ego-genes were identified from PPI network according to the degree characteristics at the criteria of top 5% ranked z-sore and degree >1. Eight candidate ego-networks with classification accuracy ≥0.9 were selected. After performed randomization test, seven significant ego-networks with adjusted p value < 0.05 were identified. Pathway enrichment analysis was then conducted with these ego-networks to search for the significant pathways. Finally, two significant pathways were identified, and six of seven ego-networks were enriched to “3′-UTR-mediated translational regulation” pathway, indicating that this pathway performs an important role in the development of stroke.ConclusionsSeven ego-networks were constructed using EgoNet and two significant enriched by pathways were identified. These may provide new insights into the potential biomarkers for the development of stroke.
               
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