DocumentCode :
1253325
Title :
Computer-aided breast cancer detection and diagnosis of masses using difference of Gaussians and derivative-based feature saliency
Author :
Polakowski, William E. ; Cournoyer, Donald A. ; Rogers, Steven K. ; DeSimio, Martin P. ; Ruck, Dennis W. ; Hoffmeister, Jeffrey W. ; Raines, Richard A.
Author_Institution :
Air Force Inf. Warfare Center, San Antonio, TX, USA
Volume :
16
Issue :
6
fYear :
1997
Firstpage :
811
Lastpage :
819
Abstract :
A new model-based vision (MBV) algorithm is developed to find regions of interest (ROI´s) corresponding to masses in digitized mammograms and to classify the masses as malignant/benign. The MBV algorithm is comprised of 5 modules to structurally identify suspicious ROI´s, eliminate false positives, and classify the remaining as malignant or benign. The focus of attention module uses a difference of Gaussians (DoG) filter to highlight suspicious regions in the mammogram. The index module uses tests to reduce the number of nonmalignant regions from 8.39 to 2.36 per full breast image. Size, shape, contrast, and Laws texture features are used to develop the prediction module´s mass models. Derivative-based feature saliency techniques are used to determine the best features for classification. Nine features are chosen to define the malignant/benign models. The feature extraction module obtains these features from all suspicious ROI´s. The matching module classifies the regions using a multilayer perceptron neural network architecture to obtain an overall classification accuracy of 100% for the segmented malignant masses with a false-positive rate of 1.8 per full breast image. This system has a sensitivity of 92% for locating malignant ROI´s. The database contains 272 images (12 b, 100 μm) with 36 malignant and 53 benign mass images. The results demonstrate that the MBV approach provides a structured order of integrating complex stages into a system for radiologists.
Keywords :
diagnostic radiography; feature extraction; image classification; image segmentation; medical image processing; multilayer perceptrons; Laws texture features; benign mass; breast masses diagnosis; complex stages integration; computer-aided breast cancer detection; derivative-based feature saliency; difference of Gaussians; index module; malignant mass; malignant/benign models; medical diagnostic imaging; model-based vision; multilayer perceptron neural network architecture; radiologists´ system; structured order; suspicious regions highlighting; Breast cancer; Cancer detection; Feature extraction; Filters; Focusing; Gaussian processes; Multilayer perceptrons; Predictive models; Shape; Testing; Algorithms; Breast Neoplasms; Female; Humans; Mammography; Radiographic Image Enhancement; Radiographic Image Interpretation, Computer-Assisted;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/42.650877
Filename :
650877
Link To Document :
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