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Classification and biomarker identification using gene network modules and support vector machines
Authors:Malik Yousef  Mohamed Ketany  Larry Manevitz  Louise C Showe and Michael K Showe
Institution:(1) The Institute of Applied Research - The Galilee Society, Shefa-Amr, Israel;(2) Al-Qasemi Academic College, Baqa Algharbiya, Israel;(3) Computer Science Department, University of Haifa, Haifa, Israel;(4) Molecular Oncogenesis/Systems Biology Program, The Wistar Institute, Philadelphia, PA 19104, USA
Abstract:

Background  

Classification using microarray datasets is usually based on a small number of samples for which tens of thousands of gene expression measurements have been obtained. The selection of the genes most significant to the classification problem is a challenging issue in high dimension data analysis and interpretation. A previous study with SVM-RCE (Recursive Cluster Elimination), suggested that classification based on groups of correlated genes sometimes exhibits better performance than classification using single genes. Large databases of gene interaction networks provide an important resource for the analysis of genetic phenomena and for classification studies using interacting genes.
Keywords:
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