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Mammogram Analysis Tumor classification - Geethapriya Raghavan. Background. Mammogram ... Mammograms obtained from MIAS database. Methods. ... – PowerPoint PPT presentation

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Title: Mammogram%20Analysis%20


1
Mammogram Analysis Tumor classification
  • - Geethapriya Raghavan

2
Background
  • Mammogram
  • X-Ray image (of gray levels) of inner breast
    tissue to detect cancer
  • Shows the levels of contrast characterizing
    normal tissue and vessels
  • Issues
  • Detect abnormalities (tumors)
  • Diagnosis - Classify as benign or malignant
  • Remove noise

3
Microcalcifications
Mammograms obtained from MIAS database
4
Methods ..
  • Non-linear classifiers preferred over linear
    classifiers given the randomness in occurrence of
    tumor cells
  • Contemporary methods - supervised learning
    problem (Wei et al., 2005)
  • Support Vector Machines (SVM) (Vapnik et al.,
    1997)
  • Kernel Fisher Discriminant (KFD)
  • Relevance Vector Machines (RVM)

5
Method I - SVM
  • SVM was used by Chang et al., on US images
  • Texture feature microcalcification area,
    contrast.
  • Software SVM Light ((http//svmlight.joachims.or
    g/)
  • The best fitting hyperplane f(x) wT . x b
    forms the boundary
  • For non-linear SVM, the x in the above equation
    is replaced by a nonlinear function of x.

6
Method II
  • Use of wavelet transform to decorrelate data
    (image) (Borges et al., 2001)
  • Obtain wavelet coefficients as features
  • Normalize coefficients and feed into Nearest
    Neighborhood classifier
  • Wavelet decomposition - Low frequency
    coefficients extracted at two levels and NNR run
    with euclidean distance as metric.

7
Results
Classifier Microcalcification Contrast Microcalcification Area
Non-linear SVM 67.7 78
Linear SVM 42.8 70.4
NNR 72 76.2
8
Results - ROC
  • Sensitivity Number of True Positive
    Classifications
  • Number of
    Malignant Lesions
  • Specificity Number of True Negative
    Classifications
  • Number
    of Benign Lesions
  • Sensitivity (y) vs. Specificity (x)
  • Dotted lower bound
  • Red line Wavelets NNR
  • Black curve linear SVM

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