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DIAGNOSING SKIN MELANOMA: CURRENT VERSUS FUTURE DIRECTIONS

Abstract

A new database containing 410 cases of nevi pigmentosi, in four categories: benign nevus, blue nevus, suspicious nevus and melanoma malignant, carefully verified by histopathology, is described. The database is entirely different from the base presented previously, and can be readily used for research based on the socalled constructive induction in machine learning. To achieve this, the database features a different set of thirteen descriptive attributes, with a fourteenth additional attribute computed by applying values of the remaining thirteen attributes. In addition, a new program environment for the validation of computer-assisted diagnosis of melanoma, is briefly discussed. Finally, results are presented on determining optimal coefficients for the well-known ABCD formula, useful for melanoma diagnosis.

Keywords:

melanoma, TDS, machine learning in diagnosis of melanoma

Details

Issue
Vol. 7 No. 2 (2003)
Section
Research article
Published
2003-06-30
Licencja:
Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

Authors

  • ZDZISŁAW S. HIPPE

    Department of Expert Systems and Artificial Intelligence, University of Information Technology and Management, Sucharskiego 2, 35-225 Rzeszow, Poland
  • STANISŁAW BAJCAR

    Regional Dermatology Center, Warzywna 3, 35-310 Rzeszow, Poland
  • PIOTR BLAJDO

    Department of Expert Systems and Artificial Intelligence, University of Information Technology and Management, Sucharskiego 2, 35-225 Rzeszow, Poland
  • JAN P. GRZYMAŁA-BUSSE

    Department of Electrical Engineering and Computer Science, University of Kansas Lawrence, KS 66045, USA
  • JERZY W. GRZYMAŁA-BUSSE

    Department of Electrical Engineering and Computer Science, University of Kansas Lawrence, KS 66045, USA
  • MAKSYMILIAN KNAP

    Department of Expert Systems and Artificial Intelligence, University of Information Technology and Management, Sucharskiego 2, 35-225 Rzeszow, Poland
  • WIESŁAW PAJA

    Department of Expert Systems and Artificial Intelligence, University of Information Technology and Management, Sucharskiego 2, 35-225 Rzeszow, Poland
  • MARIUSZ WRZESIEŃ

    Department of Expert Systems and Artificial Intelligence, University of Information Technology and Management, Sucharskiego 2, 35-225 Rzeszow, Poland

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