• Title of article

    Developing a toolbox for clinical preliminary breast cancer detection in diffierent views of thermogram images using a set of optimal supervised classifiers

  • Author/Authors

    Lashkari, A.E Department of Bio-Medical Engineering - Institute of Electrical Engineering & Information Technology - Iranian Research Organization for Science and Technology (IROST) - Tehran, Iran , Firouzmand, M Department of Bio-Medical Engineering - Institute of Electrical Engineering & Information Technology - Iranian Research Organization for Science and Technology (IROST) - Tehran, Iran

  • Pages
    16
  • From page
    1545
  • To page
    1560
  • Abstract
    A full automatic technique and a user-friendly toolbox are developed to assist physicians in early clinical detection of breast cancer. The database contains diffierent degrees of thermal images obtained from normal or cancerous mammary tissues of patients with mean age of 42.3 years (SD:+10:50), whose sympathetic nervous systems were activated with a cold stimulus on hands. First, ROI was determined using full automatic operation and the quality of image was improved. Then, some features, including statistical, morphological, frequency-domain, histogram, and GLCM, were extracted from segmented right and left breasts. Subsequently, to achieve the best feature space for decreasing complexity and increasing accuracy, feature selectors such as mRMR, SFS, SBS, SFFS, SFBS, and GA were used. Finally, for classication and TH labeling, supervised learning techniques such as AdaBoost, SVM, kNN, NB, and PNN, were applied and compared with each other to nd the most suitable one. The experimental results obtained on native database showed the mean accuracy of 88.03% for 0-degree images using combination of mRMR and AdaBoost and for combined 3 degrees using combination of GA and AdaBoost. The maximum accuracy obtained from all degrees and their combinations before and after ice test was nearly 100%.
  • Keywords
    Breast cancer detection , Thermography , Clinical applications , Ice test , Feature selection
  • Journal title
    Scientia Iranica(Transactions D: Computer Science and Electrical Engineering)
  • Serial Year
    2018
  • Record number

    2673175