Micro-calcification Detection In Digital Mammogram

Sneha John E, Jayesh George

Abstract


As reported by world health organization, breast cancer is the most common cancer in women and it caused large number of death in world. Early diagnosis is the only solution to increase the survival rate. There are two early screening plans for breast cancer: early detection and screening. Limited resources parameter with low health system is the main reason for diagnosing in the late stages and should organize early diagnosis programs based on knowledge of the first signs and symptoms. Many methods are used to test women to identify cancer before all symptoms appear. Mammography is one of the methods in which an X-ray of the breast used to detect and diagnose breast cancer tumors. The tiny deposit of calcium known as the micro-calcification can be detected by using screening mammogram and this calcification sometimes represents the cancer. This review aims to compare different method for detecting micro calcification in mammogram.

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References


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