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Gene selection for cancer classification

    1. [1] Warsaw University of Life Sciences

      Warsaw University of Life Sciences

      Warszawa, Polonia

  • Localización: Compel: International journal for computation and mathematics in electrical and electronic engineering, ISSN 0332-1649, Vol. 28, Nº Extra 1 (Special Issue: Selected Papers from ISTET 2007), 2009, págs. 231-241
  • Idioma: inglés
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  • Resumen
    • Purpose – The purpose of this paper is to discover the most important genes generated by the gene expression arrays, responsible for the recognition of particular types of cancer.

      Design/methodology/approach – The paper presents the analysis of different techniques of gene selection, including correlation, statistical hypothesis, clusterization and linear support vector machine (SVM).

      Findings – The correctness of the gene selection is proved by mapping the distribution of selected genes on the two‐coordinate system formed by two most important principal components of the PCA transformation. Final confirmation of this approach are the classification results of recognition of several types of cancer, performed using Gaussian kernel SVM.

      Originality/value – The results of selection of the most significant genes used for the SVM recognition of seven types of cancer have confirmed good accuracy of results. The presented methodology is of potential use in practical application in bioinformatics.


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