Publication | Open Access
ellipsoidFN: a tool for identifying a heterogeneous set of cancer biomarkers based on gene expressions
46
Citations
33
References
2012
Year
EngineeringMachine LearningPathologyFeature SelectionGene Expression ProfilingTumor BiologyHeterogeneous SetData SciencePattern RecognitionBiostatisticsBiomarker DiscoveryMolecular DiagnosticsCancer ResearchEffective BiomarkersEllipsoid ConceptMedicineBiomarker TargetOmicsPathway AnalysisFunctional GenomicsBioinformaticsEllipsoid Feature NetComputational BiologyCancer GenomicsSystems BiologyCancer BiomarkersGene Expressions
Computationally identifying effective biomarkers for cancers from gene expression profiles is an important and challenging task. The challenge lies in the complicated pathogenesis of cancers that often involve the dysfunction of many genes and regulatory interactions. Thus, sophisticated classification model is in pressing need. In this study, we proposed an efficient approach, called ellipsoidFN (ellipsoid Feature Net), to model the disease complexity by ellipsoids and seek a set of heterogeneous biomarkers. Our approach achieves a non-linear classification scheme for the mixed samples by the ellipsoid concept, and at the same time uses a linear programming framework to efficiently select biomarkers from high-dimensional space. ellipsoidFN reduces the redundancy and improves the complementariness between the identified biomarkers, thus significantly enhancing the distinctiveness between cancers and normal samples, and even between cancer types. Numerical evaluation on real prostate cancer, breast cancer and leukemia gene expression datasets suggested that ellipsoidFN outperforms the state-of-the-art biomarker identification methods, and it can serve as a useful tool for cancer biomarker identification in the future. The Matlab code of ellipsoidFN is freely available from http://doc.aporc.org/wiki/EllipsoidFN.
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