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Classification of mammograms based on features extraction techniques using support vector machine
Author(s) -
Enas Mohammed Hussein Saeed,
Hayder Adnan Saleh,
Enam Azez Khalel
Publication year - 2020
Publication title -
computer science and information technologies
Language(s) - English
Resource type - Journals
eISSN - 2722-323X
pISSN - 2722-3221
DOI - 10.11591/csit.v2i3.p121-131
Subject(s) - artificial intelligence , support vector machine , computer science , mammography , pattern recognition (psychology) , segmentation , local binary patterns , minimum bounding box , median filter , computer vision , breast cancer , image processing , image (mathematics) , histogram , cancer , medicine
Now mammography can be defined as the most reliable method for early breast cancer detection. The main goal of this study is to design a classifier model to help radiologists to provide a second view to diagnose mammograms. In the proposed system medium filter and binary image with a global threshold have been applied for removing the noise and small artifacts in the pre-processing stage. Secondly, in the segmentation phase, a Hybrid Bounding Box and Region Growing (HBBRG) algorithm are utilizing to remove pectoral muscles, and then a geometric method has been applied to cut the largest possible square that can be obtained from a mammogram which represents the ROI. In the features extraction phase three method was used to prepare texture features to be a suitable introduction to the classification process are first Order (statistical features), Local Binary Patterns (LBP), and Gray-Level Co-Occurrence Matrix (GLCM), Finally, SVM has been applied in two-level to classify mammogram images in the first level to normal or abnormal, and then the classification of abnormal once in the second level to the benign or malignant image. The system was tested on the MAIS the Mammogram image analysis Society (MIAS) database, in addition to the image from the Teaching Oncology Hospital, Medical City in Baghdad, where the results showed achieving an accuracy of 95.454% for the first level and 97.260% for the second level, also, the results of applying the proposed system to the MIAS database alone were achieving an accuracy of 93.105% for the first level and 94.59 for the second level.

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