Shape-Based Tumor Retrieval in Mammograms Using Relevance-Feedback Techniques

نویسندگان

  • Stylianos D. Tzikopoulos
  • Harris V. Georgiou
  • Michael E. Mavroforakis
  • Sergios Theodoridis
چکیده

This paper presents an experimental ”morphological analysis” retrieval system for mammograms, using Relevance-Feedback techniques. The features adopted are first-order statistics of the Normalized Radial Distance, extracted from the annotated mass boundary. The system is evaluated on an extensive dataset of 2274 masses of the DDSM database, which involves 7 distinct classes. The experiments verify that the involvement of the radiologist as part of the retrieval process improves the results, even for such a hard classification task, reaching the precision rate of almost 90%. Therefore, Relevance-Feedback can be employed as a very useful complementary tool to a Computer Aided Diagnosis system.

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تاریخ انتشار 2010