Publication | Open Access
Prediction of MicroRNA-Disease Associations Based on Social Network Analysis Methods
164
Citations
55
References
2015
Year
EngineeringMachine LearningGenetic EpidemiologyInteraction NetworkLink PredictionData ScienceData MiningBiological NetworkLong Non-coding RnaBiostatisticsPublic HealthSocial Network AnalysisMicrorna-microrna AssociationsKnowledge DiscoveryMicrorna-disease AssociationsMicrorna DetectionFunctional GenomicsBioinformaticsEpidemiologyComputational BiologyRegulatory Network ModellingSmall RnaSystems BiologyMicrorna-disease AssociationNon-coding Rna
MicroRNAs constitute an important class of noncoding, single-stranded, ~22 nucleotide long RNA molecules encoded by endogenous genes. They play an important role in regulating gene transcription and the regulation of normal development. MicroRNAs can be associated with disease; however, only a few microRNA-disease associations have been confirmed by traditional experimental approaches. We introduce two methods to predict microRNA-disease association. The first method, KATZ, focuses on integrating the social network analysis method with machine learning and is based on networks derived from known microRNA-disease associations, disease-disease associations, and microRNA-microRNA associations. The other method, CATAPULT, is a supervised machine learning method. We applied the two methods to 242 known microRNA-disease associations and evaluated their performance using leave-one-out cross-validation and 3-fold cross-validation. Experiments proved that our methods outperformed the state-of-the-art methods.
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