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An In-Depth Analysis of the Identified Algorithms and their Comparative Study in the Early Detection and Diagnosis of Breast Cancer

Mridul Sharma

Vol. 12, Issue 1, Jul-Dec 2021

Abstract:

These days one of the major inevitable ailments for females is bosom malignancy. The appropriate medication and early findings are important stages to take to thwart this ailment. Although, it's not easy to recognize due to its few vulnerabilities and lack of data. Can use artificial intelligence to create devices that can help doctors and healthcare workers to early detection of this cancer. In This research, we investigate three specific machine learning algorithms widely used to detect bosom ailments in the breast region. These algorithms are Support vector machine (SVM), Bayesian Networks (BN) and Random Forest (RF). The output in this research is based on the State-of-the-art technique.

DOI: http://doi.org/10.37648/ijrmst.v11i02.006

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