• Title of article

    Evaluating switching neural networks through artificial and real gene expression data

  • Author/Authors

    Muselli، نويسنده , , Marco and Costacurta، نويسنده , , Massimiliano and Ruffino، نويسنده , , Francesca، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2009
  • Pages
    9
  • From page
    163
  • To page
    171
  • Abstract
    SummaryObjective croarrays offer the possibility of analyzing the expression level for thousands of genes concerning a specific tissue. An important target of this analysis is to derive the subset of genes involved in a biological process of interest. Here, a new promising method for gene selection is proposed, which presents a good level of accuracy and reliability. s and materials oposed technique adopts switching neural networks (SNN), a particular kind of connectionist models, to assign a relevance value to each gene, thus employing recursive feature addition (RFA) to derive the final list of relevant genes. To fairly evaluate the quality of the new approach, called SNN-RFA, its application on three real and three artificial gene expression datasets, generated according to a proper mathematical model that possesses biological and statistical plausibility, has been considered. In particular, a comparison with other two widely used gene selection methods, namely the signal to noise ratio (S2N) and support vector machines with recursive feature elimination (SVM-RFE), has been performed. s the considered cases SNN-RFA achieves the best performances, arriving to determine the whole collection of relevant genes in one of the three artificial datasets. The S2N method exhibits a quality similar to that of SNN-RFA, whereas SVM-RFE shows the worst behavior. sion ality of the proposed method SNN-RFA has been established together with the usefulness of the mathematical model adopted to generate the artificial datasets of gene expression levels.
  • Keywords
    Switching neural networks , Gene selection , Machine Learning , Recursive feature addition , Shadow clustering
  • Journal title
    Artificial Intelligence In Medicine
  • Serial Year
    2009
  • Journal title
    Artificial Intelligence In Medicine
  • Record number

    1835108