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Texture Based Classification of Mass Abnormalities in Mammograms
Houston, Texas June 23-June 24
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/CBMS.2000.85689413th IEEE Symposium on Computer-Based ...
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S. Baeg, Texas A&M University
N. Kehtarnavaz, Texas A&M University
This paper presents a scheme for the classification of mass abnormalities in digitized or digital mammograms based on two novel images texture features. The first texture feature provides a measure of smoothness/denseness and is obtained by applying a morphological operator to maxima/minima image points. The second texture feature reflects a measure of architectural distortion and is derived from image gradients. A three-layer back propagation neural network is used as the classifier. The performance of the classification scheme is evaluated by carrying out a receiver operating characteristic (ROC) analysis. Classification of 150 biopsy proven masses into benign and malignant classes resulted in a ROC area of 0.91. The results obtained demonstrate the potential of using this scheme as an electronic second opinion to lower the number of unnecessary biopsies.
Index Terms:
Breast cancer; mass abnormalities in mammograms; classification of benign and malignant masses; texture feature extraction; neural network classifier; electronic second opinion.
Citation:
S. Baeg, N. Kehtarnavaz, "Texture Based Classification of Mass Abnormalities in Mammograms," cbms, pp.163, 13th IEEE Symposium on Computer-Based Medical Systems (CBMS'00), 2000
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