Prediction novelty implements breast cancer disease detection using machine learning techniques
Keywords:
breast cancer, classification rules, machine learning, diagnosis, risk factor, prediction, feature selectionAbstract
Breast cancer is an exceptionally heterogeneous sickness. Bosom Cancer Diagnosis and Prognosis are two clinical difficulties the specialists in the field of clinical exploration. Bosom self-test and mammography can assist with discovering early findings of bosom disease. This is conceivable when in some circumstance or stage, the treatment is conceivable. Therapy might comprise radiation, lumpectomy, mastectomy, and chemical treatment. The essential dataset of bosom disease is done from the UCI dataset store with the end goal of exploratory work. These exploratory works legitimize the issue definition of the clinical examination utilizing distinctive order methods. Bosom Cancer Diagnosis and Prognosis are two clinical applications that represent an extraordinary test for specialists. In this paper, we have described the prediction of breast cancer disease using the proposed algorithm using the weka, and the Jupiter anaconda navigator simulates the tool and generates accuracy with efficiency.
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