• Title of article

    Evolving connectionist systems for knowledge discovery from gene expression data of cancer tissue

  • Author/Authors

    Futschik، نويسنده , , Matthias E and Reeve، نويسنده , , Anthony and Kasabov، نويسنده , , Nikola، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2003
  • Pages
    25
  • From page
    165
  • To page
    189
  • Abstract
    Microarray techniques have made it possible to observe the expression of thousands of genes simultaneously. They have recently been applied to study gene expression patterns in tissue samples. This may lead to highly desirable improvements in the diagnosis and treatment of human diseases. Statistical and machine learning methods have recently been used to classify cancer tissue based on gene expression data. Although some of these methods have achieved a high degree of accuracy, they generally lack transparency in their classification process. This, however, is crucial for the application in the medical field. In order to overcome this obstacle, we used knowledge-based neurocomputing (KBN), since KBN seeks to gain knowledge that is comprehensible to humans. In particular, we applied evolving fuzzy neural networks (EFuNNs) to classify cancer tissue, which is illustrated on the case studies of leukaemia and colon cancer. EFuNNs belong to the evolving connectionist system paradigm (ECOS) that has been recently introduced. They are well suited for adaptive learning and knowledge discovery. Fuzzy logic rules can be extracted from the trained networks and offer knowledge about the classification process in an easily accessible form. These rules point to genes that are strongly associated with specific types of cancer and may be used for the development of new tests and treatment discoveries.
  • Keywords
    Knowledge-based neural networks , Rule extraction , Gene expression analysis , knowledge discovery , Evolving fuzzy neural networks
  • Journal title
    Artificial Intelligence In Medicine
  • Serial Year
    2003
  • Journal title
    Artificial Intelligence In Medicine
  • Record number

    1836029