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Prevalence of Mammography Images for Primal Prediction of Breast Cancer
Breast cancer is the second most common tumour in the world and more common in the women population, not only a women disease its affecting men also, and since the main ischolar_main cause remain unsure, early observation and diagnosis is the best solution to prevent tumour development and allow a successful medical involvement, it’s a lifesavingand the cost reduction. In the absence of symptomsMammography is an x-ray of the breasts performed.Very tiny tumours are identified even before they are real or they are apparent to other symptoms. Mammography is presently the suggested procedure for early identification of Breast Cancer in women in the current scenario it’s an instant require for better pre-screening tool to detect the irregularity of the mammogram resemblance in the early-stage only. The main purpose of this paper is to give a summary current approach in the evolution of breast cancer diagnosis.
Keywords
Breast Cancer, Mammography, Medical Image Processing, Tumor.
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