Breast Cancer Diagnostic System using Hierarchical Learning Vector Quantization

نویسندگان

  • R. R. Janghel
  • Ritu Tiwari
  • Anupam Shukla
چکیده

Breast cancer has become a common mortality factor in the world. Lesser availability of diagnostic facilities along with large time requirements in manual diagnosis emphasize on automatic diagnosis for early diagnosis of the disease. In this paper a computerized breast cancer diagnosis prototype has been developed to reduce the time taken and indirectly reducing the probability of death. The paper presents Hierarchical Learning Vector

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تاریخ انتشار 2013