Title :
Automatic identification of the pectoral muscle in mammograms
Author :
Ferrari, R.J. ; Rangayyan, R.M. ; Desautels, J.E.L. ; Borges, R.A. ; Frere, A.F.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Calgary, Alta., Canada
Abstract :
The pectoral muscle represents a predominant density region in most medio-lateral oblique (MLO) views of mammograms; its inclusion can affect the results of intensity-based image processing methods or bias procedures in the detection of breast cancer. Local analysis of the pectoral muscle may be used to identify the presence of abnormal axillary lymph nodes, which may be the only manifestation of occult breast carcinoma. We propose a new method for the identification of the pectoral muscle in MLO mammograms based upon a multiresolution technique using Gabor wavelets. This new method overcomes the limitation of the straight-line representation considered in our initial investigation using the Hough transform. The method starts by convolving a group of Gabor filters, specially designed for enhancing the pectoral muscle edge, with the region of interest containing the pectoral muscle. After computing the magnitude and phase images using a vector-summation procedure, the magnitude value of each pixel is propagated in the direction of the phase. The resulting image is then used to detect the relevant edges. Finally, a post-processing stage is used to find the true pectoral muscle edge. The method was applied to 84 MLO mammograms from the Mini-MIAS (Mammographic Image Analysis Society, London, U.K.) database. Evaluation of the pectoral muscle edge detected in the mammograms was performed based upon the percentage of false-positive (FP) and false-negative (FN) pixels determined by comparison between the numbers of pixels enclosed in the regions delimited by the edges identified by a radiologist and by the proposed method. The average FP and FN rates were, respectively, 0.58% and 5.77%. Furthermore, the results of the Gabor-filter-based method indicated low Hausdorff distances with respect to the hand-drawn pectoral muscle edges, with the mean and standard deviation being 3.84±1.73 mm over 84 images.
Keywords :
Hough transforms; cancer; convolution; edge detection; filtering theory; image enhancement; image representation; image resolution; image segmentation; mammography; medical image processing; muscle; 2.11 to 5.57 mm; Gabor filters; Gabor wavelets; Hough transform; London; Mammographic Image Analysis Society; Mini-MIAS database; abnormal axillary lymph nodes; automatic pectoral muscle identification; breast cancer detection; convolution; false-negative pixels; false-positive pixels; hand-drawn pectoral muscle edges; intensity-based image processing methods; low Hausdorff distances; mammograms; medio-lateral oblique views; multiresolution technique; occult breast carcinoma; phase images; post-processing stage; vector-summation procedure; Breast cancer; Cancer detection; Gabor filters; Image databases; Image edge detection; Image processing; Lymph nodes; Muscles; Performance evaluation; Pixel; Algorithms; Artificial Intelligence; Humans; Mammography; Pattern Recognition, Automated; Pectoralis Muscles; Radiographic Image Interpretation, Computer-Assisted; Reproducibility of Results; Sensitivity and Specificity; Signal Processing, Computer-Assisted;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2003.823062