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Breast Cancer Risk Analysis using Machine Learning
Author(s) -
Dattatraya Adane,
Laxmikant Kabra,
Akansha Banode,
Mansi Agrawal
Publication year - 2021
Publication title -
international journal of next-generation computing
Language(s) - English
Resource type - Journals
eISSN - 2229-4678
pISSN - 0976-5034
DOI - 10.47164/ijngc.v12i5.448
Subject(s) - breast cancer , machine learning , computer science , disease , cancer , artificial intelligence , hazard , complex disease , set (abstract data type) , medicine , chemistry , organic chemistry , programming language
When cells in and around breast are affected and damaged due to cancer, we call it Breast Cancer. It is commonlyfound among women and a very few men. Breast Cancer poses major health hazard and best way to handle itis to identify the symptoms as early as possible. Recently, Machine Learning techniques have been aggressivelyused by many researchers for different types of analysis and predictions in medical domain. In literature, BreastCancer classification and prediction through Machine Learning techniques, based on Breast Cancer WisconsinData Set, has come into picture many times. Typical attributes like radius, perimeter, tumour size (often fetchthrough X-Rays) apart from others, provides comprehensive inputs for the prediction process, often at a laterstage. However, till date, work on evaluation of the Risk of Breast Cancer is quite limited. We have worked onthe problem of risk prediction of breast cancer on the basis of self-assessed parameters, to find if the patient islikely to get the disease, at a very early stage. Risk evaluation / prediction tries to identify if a person is at riskof getting infected with disease. Risk analysis can not only save money but also enable the patient to undertakecourse correction in terms of food intake and medication, before it is too late. In this paper we present our analysisbased on well-defined parameters, discuss our results and then compare those results with one other similar work.

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