1 October 2007 Analysis of breast tumors in mammograms using the pairwise Rayleigh quotient classifier
Tingting Mu, Asoke Kumar Nandi, Rangaraj Mandayam Rangayyan
Author Affiliations +
Abstract
We propose a pairwise Rayleigh quotient (PRQ) classifier and apply it to discriminate between malignant tumors and benign masses in mammograms. The PRQ classifier employs a Rayleigh quotient based on a set of pairwise constraints, which leads to a generalized eigenvalue problem with low complexity of implementation. Kernel functions are used to incorporate nonlinearity. Studies were conducted with features of 57 breast masses, of which 20 are related to malignant tumors and 37 to benign masses. The linear PRQ classifier provided results comparable to those obtained with Fisher's linear discriminant analysis (FLDA), support vector machines (SVMs), and convex pairwise SVMs (CPSVMs). The linear PRQ classification performance of the comparatively weak feature sets with edge sharpness and texture features was significantly improved by about 5%, as compared to those obtained by FLDA, SVM, and CPSVM. The nonlinear PRQ classifier with the triangle kernel provided the perfect performance of 1.0 in terms of the area under the receiver operating characteristics curve, for nearly all feature combinations, but with good robustness limited to the kernel parameter in a certain range. We propose a measure of robustness to evaluate the PRQ classifier.
©(2007) Society of Photo-Optical Instrumentation Engineers (SPIE)
Tingting Mu, Asoke Kumar Nandi, and Rangaraj Mandayam Rangayyan "Analysis of breast tumors in mammograms using the pairwise Rayleigh quotient classifier," Journal of Electronic Imaging 16(4), 043004 (1 October 2007). https://doi.org/10.1117/1.2803834
Published: 1 October 2007
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Cited by 8 scholarly publications.
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KEYWORDS
Tumors

Mammography

Breast

Image classification

Breast cancer

Feature extraction

Statistical analysis

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