IJMTES – SEGMENTATION OF BREAST CANCER USING TEXTURE METHOD IN MAMMOGRAM IMAGE

Journal Title : International Journal of Modern Trends in Engineering and Science

Paper Title : SEGMENTATION OF BREAST CANCER USING TEXTURE METHOD IN MAMMOGRAM IMAGE

Author’s Name : A Stephen Sagayaraj | G Mohanapriya | R Nivetha | C Subhashini | V Suganya
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Volume 04 Issue 03 2017

ISSN no:  2348-3121

Page no: 193-195

Abstract –Mammography is a technique using X-rays to diagnose and locate tumors of the breast. It is the best method for premature detection of breast cancer. Breast cancer is the second most commonly diagnosed cancer in women in the humanity. It is a cancer that develops breast from breast tissue and it affects other parts of the body. It is one of the leading cancers in woman worldwide both in developed and developing nations as per the records from World Health Organization (WHO). American Society identified that by the end of 2012, about 2, 26,000 cases were diagnosed and 40,000 resulted in death. There are about 1.38 million new cases and 458000 deaths from breast cancer each year. Texture method is used to segment the cancer part in the mammogram image. This method is applied to real clinical database containing 100 mammogram images from the cancer detection centre. MATLAB tool is used to segment the tumor part in the breast mammogram image.

KeywordsBreast Cancer,Mammography,WHO, Enhancement and Texture Segmentation

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