Mammograms-Based Breast Cancer Detection Using Ai Image Processing Techniques

Main Article Content

Shweta Saraswat
Bright Keswani
Vandna Sharma
Vrishit Saraswat
Monica Lamba

Abstract

In women all around the world, breast cancer is the most frequent kind of cancer. It begins with the uncontrolled growth of breast cells. X-rays of the breast may reveal tumors or masses caused by these cells. Differentiating between benign and malignant (cancer-causing) tumors is the primary difficulty in detecting tumors. Using image processing methods such as image pre-processing, feature extraction and selection, and image classification, this effort aims to find early-stage tumors that are undetectable by humans.

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How to Cite
Shweta Saraswat, Bright Keswani, Vandna Sharma, Vrishit Saraswat, & Monica Lamba. (2023). Mammograms-Based Breast Cancer Detection Using Ai Image Processing Techniques. Journal of Coastal Life Medicine, 11(1), 1980–1986. https://doi.org/10.52783/jclm.v11i1.617
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