Segmentation of Pectoral Muscle in Mammogram Images Using Gaussian Mixture Model-Expectation Maximization

Author:

Khoulqi Ichrak1ORCID,Idrissi Najlae1ORCID,Sarfraz Muhammad2ORCID

Affiliation:

1. Faculty of Sciences and Technics, Sultan Moulay Slimane University, Morocco

2. Kuwait University, Kuwait

Abstract

Breast cancer is one of the significant issues in medical sciences today. Specifically, women are suffering most worldwide. Early diagnosis can result to control the growth of the tumor. However, there is a need of high precision of diagnosis for right treatment. This chapter contributes toward an achievement of a computer-aided diagnosis (CAD) system. It deals with mammographic images and enhances their quality. Then, the enhanced images are segmented for pectoral muscle (PM) in the Medio-Lateral-Oblique (MLO) view of the mammographic images. The segmentation approach uses the tool of Gaussian Mixture Model-Expectation Maximization (GMM-EM). A standard database of Mini-MIAS with 322 images has been utilized for the implementation and experimentation of the proposed technique. The metrics of structural similarity measure and DICE coefficient have been utilized to verify the quality of segmentation based on the ground truth. The proposed technique is quite robust and accurate, it supersedes various existing techniques when compared in the same context.

Publisher

IGI Global

Reference48 articles.

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3. Boucher, A., Jouve, P., Cloppet, F., & Vincent, N. (2009). Segmentation du muscle pectoral sur une mammographie. ORASIS’09 - Congrès des jeunes chercheurs en vision par ordinateur, 2009, Trégastel, France. https://hal.inria.fr/inria-00404631/document

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