• Title of article

    Detection and Classification of Breast Cancer in Mammography Images Using Pattern Recognition Methods

  • Author/Authors

    Safdarian ، Naser - Islamic Azad University, Tabriz Branch , Hediyehzadeh ، Mohammad Reza - Islamic Azad University, Dezful Branch

  • Pages
    12
  • From page
    13
  • To page
    24
  • Abstract
    Introduction: In this paper, a method is presented to classify the breast cancer masses according to new geometric features. Methods: After obtaining digital breast mammogram images from the digital database for screening mammography (DDSM), image preprocessing was performed. Then, by using image processing methods, an algorithm was developed for automatic extracting of masses from other normal parts of the breast image. In this study, 19 final different features of each image were extracted to generate the feature vector for classifier input. The proposed method not only determined the boundary of masses but also classified the type of masses such as benign and malignant ones. The neural network classification methods such as the radial basis function (RBF), probabilistic neural network (PNN), and multi-layer perceptron (MLP) as well as the Takagi-Sugeno-Kang (TSK) fuzzy classification, the binary statistic classifier, and the k-nearest neighbors (KNN) clustering algorithm were used for the final decision of mass class. Results: The best results of the proposed method for accuracy, sensitivity, and specificity metrics were obtained 97%±4.36, 100%±0 and 96%±5.81, respectively for support vector machine (SVM) classifier. Conclusions: By comparing the results of the proposed method with the results of the other previous methods, the efficiency of the proposed algorithm was reported.
  • Keywords
    Classification , Breast Neoplasms , Electronic Data Processing , Image Processing , Computer Assisted , Pattern Recognition , Autom ated
  • Journal title
    Multidisciplinary Cancer Investigation
  • Serial Year
    2019
  • Journal title
    Multidisciplinary Cancer Investigation
  • Record number

    2469730