• Title of article

    Cancer Classification in Microarray Data using a Hybrid Selective Independent Component Analysis and υ‑Support Vector Machine Algorithm

  • Author/Authors

    Saberkari، Hamidreza نويسنده Department of Electrical Engineering, Genomic Signal Processing Laboratory, Sahand University of Technology, Tabriz, Iran , , Shamsi، Mousa نويسنده Department of Electrical Engineering , , Joroughi، Mahsa نويسنده Department of Electrical Engineering, Genomic Signal Processing Laboratory, Sahand University of Technology, Tabriz, Iran , , Golabi، Faegheh نويسنده Department of Electrical Engineering, Genomic Signal Processing Laboratory, Sahand University of Technology, Tabriz, Iran , , Sedaaghi، Mohammad Hossein نويسنده Department of Electrical Engineering, Genomic Signal Processing Laboratory, Sahand University of Technology, Tabriz, Iran ,

  • Issue Information
    فصلنامه با شماره پیاپی سال 2014
  • Pages
    9
  • From page
    291
  • To page
    299
  • Abstract
    Microarray data have an important role in identification and classification of the cancer tissues. Having a few samples of microarrays in cancer researches is always one of the most concerns which lead to some problems in designing the classifiers. For this matter, preprocessing gene selection techniques should be utilized before classification to remove the noninformative genes from the microarray data. An appropriate gene selection method can significantly improve the performance of cancer classification. In this paper, we use selective independent component analysis (SICA) for decreasing the dimension of microarray data. Using this selective algorithm, we can solve the instability problem occurred in the case of employing conventional independent component analysis (ICA) methods. First, the reconstruction error and selective set are analyzed as independent components of each gene, which have a small part in making error in order to reconstruct new sample. Then, some of the modified support vector machine algorithm sub classifiers are trained, simultaneously. Eventually, the best sub classifier with the highest recognition rate is selected. The proposed algorithm is applied on three cancer datasets (leukemia, breast cancer and lung cancer datasets), and its results are compared with other existing methods. The results illustrate that the proposed algorithm has higher accuracy and validity in order to increase the classification accuracy.
  • Journal title
    Journal of Medical Signals and Sensors (JMSS)
  • Serial Year
    2014
  • Journal title
    Journal of Medical Signals and Sensors (JMSS)
  • Record number

    2038049