Klasifikasi Kanker Payudara pada Citra Mammogram dengan Metode Ekstraksi Fitur Compound Local Binary Pattern
Abstract
Breast cancer is a serious disease that can be life-threatening if not
diagnosed and treated in a timely manner. Therefore, early detection through
mammography screening is crucial for detecting abnormalities in the breasts
before the onset of noticeable symptoms. However, mammogram images have
inherent limitations in quality, which can pose challenges for doctors or
radiologists in analyzing them. To address this issue, computer vision techniques
are employed using the local binary pattern (LBP) and compound local binary
pattern (CLBP) feature extraction methods, along with support vector machine
(SVM) classification. The CLBP method is an extension of the LBP method, where
instead of using P-bits to encode the difference between the grayscale value of a
central pixel and its neighbors, CLBP utilizes 2P-bits. This additional bit is
expected to enhance the robustness of the feature descriptor by incorporating
additional local information that is discarded by the LBP operator. The
Mammographic Image Analysis Society (MIAS) dataset consisting of 322 images,
with 207 normal breast images and 115 abnormal breast images, is utilized for
this study. Testing is performed with various data training and testing splits, and
the performance of the model is evaluated using a confusion matrix. The results
show that the CLBP-SVM model with a 90:10 data split ratio achieves the best
performance, with an accuracy of 96.97%, precision of 98.00%, and recall of
94.44%.