Classification of Mammographic Masses Using Fuzzy Inference System

Authors

  • Divyadarshini K Department of Biomedical Instrumentation Engineering, Avinashilingam University, Coimbatore, India
  • Vanithamani R Department of Biomedical Instrumentation Engineering, Avinashilingam University, Coimbatore, India
  • Sharmili S Department of Biomedical Instrumentation Engineering, Avinashilingam University, Coimbatore, India

Keywords:

Gray level Thresholding, Fuzzy inference system, Classification, BI-RADS categories, Fuzzy rules

Abstract

Computer aided detection (CAD) intends to provide assistance to the mammography detection, reducing breast cancer misdiagnosis, thus allowing better diagnosis and more efficient treatments. In this work the task of automatically classifying the mass tissue into Breast Imaging Reporting and Data System (BI-RADS) shape categories: round, oval, lobular, irregular and also as benign or malignant is investigated. Geometrical shape and margin features based on maximum and minimum radius of mass are used in this work to classify the masses. These geometric features are found to be good in discriminating regular shapes from irregular shapes. For the purpose of classification, the masses are segmented from the mammogram using gray level thresholding. Finally, the classification is performed using fuzzy inference system. The fuzzy rules are used to construct the generalized fuzzy membership function for classifying the shape and severity of masses. The images were collected from Mammographic Image Analysis Society (MIAS) Database and Digital Database for Screening Mammography (DDSM). The experiments were implemented in MATLAB.

References

American Cancer Society (2007). Breast Cancer: Facts and Figures 2007–08, ACS.

Basset L.W, Gold R.H (1987). Breast Cancer Detection: Mammograms and Other Methods in Breast Imaging. Grune and Stratton, New York.

BI-RADS Lexicons URL = “http://www.acr.org/departments/stand_accred/birads/”.

Bird R.E, Wallace T.W, Yankaskas B.C (1992) Analysis of cancers missed at screening mammography. Radiology 184 (3), 613–617.

Birdwell R.L, Ikeda D.M, O’Shaughnessy, K.D, Sickles, E.A (2001). Mammographic characteristics of 115 missed cancers later detected with screening mammography and the potential utility of computer-aided detection. Radiology 219 (1), 192–202.

Brijesh Verma, Peter McLeod, Alan Klevansky (2010). Classification of benign and malignant patterns in digital mammograms for the diagnosis of breast cancer. Expert Systems with Applications, 37, 3344–3351.

Buseman S, Mouchawar J, Calonge N, Byers T, (2003). Mammography screening matters for young women with breast carcinoma. Cancer 97 (2), 352–358.

De Koning H.J, Fracheboud J, Boer R, Verbeek A.L, Collette H.J, Hendriks J.H.C.L,Van Ineveld B.M, de Bruyn A.E, van der Maas P.J (1995). Nation-wide breast cancer screening in the Netherlands: support for breast cancer mortality reduction, National evaluation team for breast cancer screening. Int. J. Cancer 60 (6), 777–780.

Eurostat (2002). Health statistics Atlas on mortality in the European Union, Office for Official Publications of the European Union.

Freer T.W, Ulissey M.J (2001). Screening mammography with computer-aided detection: prospective study of 12860 patients in a community breast center. Radiology 220, 781–786.

Gajanand Gupta (2011). Algorithm for Image Processing Using Improved Median Filter and Comparison of Mean, Median and Improved Median Filter. International Journal of Soft Computing and Engineering (IJSCE) 1, 304-311.

Hall F.M, Storella J.M, Siverstond D.Z, Wyshak G (1988). Nonpalpable breast lesions: recommendations for biopsy based on suspicion of carcinoma at mammography. Radiology 167 (2), 353–358

Hajar Moradmand (2011). Comparing Methods for segmentation of Microcalcification Clusters in Digitized Mammograms. International Journal of Computer Science Issues, 8, 104-108.

Heywang-Kobrunner S.H, Dershaw D.D, Schreer I (2001). Diagnostic Breast Imaging. Mammography, sonography, magnetic resonance imaging, and interventional procedures, Thieme, Stuttgart, Germany.

Kuzmiak C.M, Millnamow G.A, Qaqish B, Pisano E.D, Cole E.B, Brown M.E (2002). Comparison of fullfield digital mammography to screen-film mammography with respect to diagnostic accuracy of lesion characterization in breast tissue biopsy specimens. Acad.

Radiol. 9, 1378–1382.

Moumena Al-Bayati and Ali El-Zaart (2013). Mammogram Images Thresholding for Breast Cancer Detection Using Different Thresholding Methods. Advances in Breast Cancer Research, 2, 72-77.

Rojas A, Nandi A.K. (2008). Detection of masses in mammograms via statistically based enhancement, multilevel-thresholding segmentation, and region selection. Computerized Medical Imaging and Graphics, 32 (4), 304–315.

Samir Kumar Bandyopadhyay (2010). Pre-processing of Mammogram Images. International Journal of Engineering Science and Technology 2, 6753-6758.

Sickles E.A (1997). Breast cancer screening outcomes in women ages 40–49: clinical experience with service screening using modern mammography. J. Natl. Cancer Inst.: Monogr. 22, 99–104.

Surendiran B, Vadivel A (2012). Mammogram mass classification using various geometric shape and margin features for early detection of breast cancer. International Journal of Medical Engineering and Informatics 4(1), 36-54.

Vyborny C.J, Giger M.L, (1994). Computer vision and artificial intelligence in mammography. Am. J. Roentgenol. 162 (3), 699–708.

Winsberg F, Elkin M, Macy J, Bordaz V, Weymouth W (1967). Detection of radiographic abnormalities in mammograms by means of optical scanning and computer analysis. Radiology 89 (2), 211–215.

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Published

2024-02-26

How to Cite

Divyadarshini, K., Vanithamani, R., & Sharmili, S. (2024). Classification of Mammographic Masses Using Fuzzy Inference System. COMPUSOFT: An International Journal of Advanced Computer Technology, 4(07), 1906–1912. Retrieved from https://ijact.in/index.php/j/article/view/335

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Section

Review Article

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