Neighborhood structural similarity mapping for the classification of masses in mammograms Journal Article


Authors: Rabidas, R.; Midya, A.; Chakraborty, J.
Article Title: Neighborhood structural similarity mapping for the classification of masses in mammograms
Abstract: In this paper, two novel feature extraction methods, using neighborhood structural similarity (NSS), are proposed for the characterization of mammographic masses as benign or malignant. Since gray-level distribution of pixels is different in benign and malignant masses, more regular and homogeneous patterns are visible in benign masses compared to malignant masses; the proposed method exploits the similarity between neighboring regions of masses by designing two new features, namely, NSS-I and NSS-II, which capture global similarity at different scales. Complementary to these global features, uniform local binary patterns are computed to enhance the classification efficiency by combining with the proposed features. The performance of the features are evaluated using the images from the mini-mammographic image analysis society (mini-MIAS) and digital database for screening mammography (DDSM) databases, where a tenfold cross-validation technique is incorporated with Fisher linear discriminant analysis, after selecting the optimal set of features using stepwise logistic regression method. The best area under the receiver operating characteristic curve of 0.98 with an accuracy of 94.57 is achieved with the mini-MIAS database, while the same for the DDSM database is 0.93 with accuracy 85.42. © 2013 IEEE.
Keywords: accuracy; breast cancer; variance; biology; classification; image analysis; mammography; discriminant analysis; screening; breast tumor; medical society; regression analysis; logistic regression analysis; diseases; performance; histogram; receiver operating characteristic; calculation; extraction; masses; database systems; feature extraction; modulators; experimentation; receiver operating characteristic curves; genetic similarity; structural similarity; article; neighborhood; content based retrieval; fisher linear discriminant analysis; neighborhood structural similarity; delta sigma modulation; digital to analog conversion; classi22 fication; feature extraction methods; uniform local binary patterns; concept mapping
Journal Title: IEEE Journal of Biomedical and Health Informatics
Volume: 22
Issue: 3
ISSN: 2168-2194
Publisher: IEEE  
Date Published: 2018-05-01
Start Page: 826
End Page: 834
Language: English
DOI: 10.1109/jbhi.2017.2715021
PROVIDER: scopus
PUBMED: 28622679
DOI/URL:
Notes: Article -- Export Date: 2 July 2018 -- Source: Scopus
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