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Breast Cancer Classification Using Improved Fuzzy C-Means Algorithm

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Smart Technologies in Data Science and Communication

Abstract

Abnormal growth in the breast tissue prompts to the strange cell development in the breast. To decipher this statement in a mammogram precisely, the quality of the pictures ought to be at its incomparable. The proposed research work is conveyed out for examinations of different screening strategies to recognize the unique phases of breast malignancy. In India for every 4 min, the women are diagnosed with this disease. And a woman dies with this disease for every 13 min. This disease is prominent with the people living in the ruler area while comparing the people in the urban areas. Therefore, it is very important to find and treat this disease as early as possible. The breast tumor region, perimeter and breadth are assessed from mammogram picture databases. The Bits Errors Degree (BER), Highest Indication to Clatter Percentage (PSNR) and Callous Tetragonal Inaccuracy (MSE) values are determined for both abnormal and normal images. These analyses were used to approve the presence or absence of the disease and to support the evaluation process for finding the disease. This quality assessment is used to understand the reality on Earth for a specific diagnosis that is a specific type of chromatin in a carcinogenic core that may indicate an irregular protein sequence.

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Correspondence to N. Thirupathi Rao .

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© 2023 The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.

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Rao, N.T., Satyanarayana, K.V., Satyanarayana, M., Joshua, E.S.N., Bhattacharyya, D. (2023). Breast Cancer Classification Using Improved Fuzzy C-Means Algorithm. In: Ogudo, K.A., Saha, S.K., Bhattacharyya, D. (eds) Smart Technologies in Data Science and Communication. Lecture Notes in Networks and Systems, vol 558. Springer, Singapore. https://doi.org/10.1007/978-981-19-6880-8_21

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