Publication | Open Access
Predicting Candidate Genes Based on Combined Network Topological Features: A Case Study in Coronary Artery Disease
39
Citations
35
References
2012
Year
EngineeringGeneticsNetwork AnalysisGene RecognitionCoronary Artery DiseaseNetwork Topological FeaturesData ScienceData MiningBiological NetworkBiostatisticsBiological Network VisualizationKnowledge DiscoveryStatistical GeneticsOmicsPathway AnalysisFunctional GenomicsBioinformaticsCandidate GenesNovel Candidate GenesComputational BiologyCase StudyRegulatory Network ModellingSystems BiologyMedicine
Predicting candidate genes using gene expression profiles and unbiased protein-protein interactions (PPI) contributes a lot in deciphering the pathogenesis of complex diseases. Recent studies showed that there are significant disparities in network topological features between non-disease and disease genes in protein-protein interaction settings. Integrated methods could consider their characteristics comprehensively in a biological network. In this study, we introduce a novel computational method, based on combined network topological features, to construct a combined classifier and then use it to predict candidate genes for coronary artery diseases (CAD). As a result, 276 novel candidate genes were predicted and were found to share similar functions to known disease genes. The majority of the candidate genes were cross-validated by other three methods. Our method will be useful in the search for candidate genes of other diseases.
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