DocumentCode
1136615
Title
A support vector machine approach for detection of microcalcifications
Author
El-Naqa, Issam ; Yang, Yongyi ; Wernick, Miles N. ; Galatsanos, Nikolas P. ; Nishikawa, Robert M.
Author_Institution
Dept. of Electr. & Comput. Eng., Illinois Inst. of Technol., Chicago, IL, USA
Volume
21
Issue
12
fYear
2002
Firstpage
1552
Lastpage
1563
Abstract
We investigate an approach based on support vector machines (SVMs) for detection of microcalcification (MC) clusters in digital mammograms, and propose a successive enhancement learning scheme for improved performance. SVM is a machine-learning method, based on the principle of structural risk minimization, which performs well when applied to data outside the training set. We formulate MC detection as a supervised-learning problem and apply SVM to develop the detection algorithm. We use the SVM to detect at each location in the image whether an MC is present or not. We tested the proposed method using a database of 76 clinical mammograms containing 1120 MCs. We use free-response receiver operating characteristic curves to evaluate detection performance, and compare the proposed algorithm with several existing methods. In our experiments, the proposed SVM framework outperformed all the other methods tested. In particular, a sensitivity as high as 94% was achieved by the SVM method at an error rate of one false-positive cluster per image. The ability of SVM to outperform several well-known methods developed for the widely studied problem of MC detection suggests that SVM is a promising technique for object detection in a medical imaging application.
Keywords
image classification; learning automata; mammography; medical image processing; object detection; pattern clustering; clinical mammograms; detection algorithm; digital mammograms; error rate; false-positive cluster; free-response receiver operating characteristic curves; machine-learning method; medical imaging application; microcalcification clusters; microcalcification detection; object detection; sensitivity; structural risk minimization; successive enhancement learning scheme; supervised-learning problem; support vector machine approach; training set; Biomedical imaging; Clustering algorithms; Detection algorithms; Error analysis; Image databases; Machine learning; Object detection; Risk management; Support vector machines; Testing; Algorithms; Artificial Intelligence; Breast Diseases; Breast Neoplasms; Calcinosis; Databases, Factual; False Positive Reactions; Female; Humans; Mammography; Pattern Recognition, Automated; Radiographic Image Enhancement; Radiographic Image Interpretation, Computer-Assisted; Reproducibility of Results; Sensitivity and Specificity;
fLanguage
English
Journal_Title
Medical Imaging, IEEE Transactions on
Publisher
ieee
ISSN
0278-0062
Type
jour
DOI
10.1109/TMI.2002.806569
Filename
1176643
Link To Document