Artificial Intelligence in Medicine
Volume 35, Issue 1 , Pages 1-8 , September 2005

Computational intelligence in solving bioinformatics problems

  • Krzysztof J. Cios

      Affiliations

    • University of Colorado at Denver and Health Sciences Center, Department of Computer Science & Engineering, Campus Box 109, Denver, CO 80217, USA
    • Corresponding Author InformationCorresponding author. Tel.: +1 303 556 6035; fax: +1 303 556 8369.
  • ,
  • Hiroshi Mamitsuka

      Affiliations

    • Kyoto University, Gokasho, Uji 611-0011, Japan
    • Tel.: +81 774 38 3023; fax: +81 774 38 3037.
  • ,
  • Tomomasa Nagashima

      Affiliations

    • Muroran Institute of Technology and Life Software Laboratory, 27-1, Mizumoto, Muroran, Hokkaido 050-8585, Japan
    • Tel.: +81 143 46 5433; fax: +81 143 46 5499.
  • ,
  • Ryszard Tadeusiewicz

      Affiliations

    • AGH University of Science and Technology, Al. Mickiewicza 30, 30-059 Krakow, Poland
    • Tel.: +48 12 617 20 02; fax: +48 12 633 46 72.

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PII: S0933-3657(05)00075-8

doi: 10.1016/j.artmed.2005.07.001

Artificial Intelligence in Medicine
Volume 35, Issue 1 , Pages 1-8 , September 2005