پديد آورندگان :
Khuzi A Mohd. نويسنده , Ahmad NN نويسنده , Besar R نويسنده , Zaki WMD Wan نويسنده
چكيده لاتين :
Digital mammogram has become the most effective technique for early breast cancer detection modality. Digital
mammogram takes an electronic image of the breast and stores it directly in a computer. The aim of this study is to
develop an automated system for assisting the analysis of digital mammograms. Computer image processing techniques
will be applied to enhance images and this is followed by segmentation of the region of interest (ROI). Subsequently, the
textural features will be extracted from the ROI. The texture features will be used to classify the ROIs as either masses
or non-masses. In this study normal breast images and breast image with masses used as the standard input to the
proposed system are taken from Mammographic Image Analysis Society (MIAS) digital mammogram database. In
MIAS database, masses are grouped into either spiculated, circumscribed or ill-defined. Additional information includes
location of masses centres and radius of masses. The extraction of the textural features of ROIs is done by using gray
level co-occurrence matrices (GLCM) which is constructed at four different directions for each ROI. The results show
that the GLCM at 0 degree, 45 degree, 90 degree and 135degree؛ with a block size of 8X8 give significant texture information to identify between
masses and non-masses tissues. Analysis of GLCM properties i.e. contrast, energy and homogeneity resulted in receiver
operating characteristics (ROC) curve area of Az = 0.84 for Otsu’s method, 0.82 for thresholding method and
Az = 0.7 for K-mean clustering. ROC curve area of 0.8-0.9 is rated as good results. The authors’ proposed method
contains no complicated algorithm. The detection is based on a decision tree with five criterions to be analysed. This
simplicity leads to less computational time. Thus, this approach is suitable for automated real-time breast cancer
diagnosis system.