A COMPARATIVE STUDY BETWEEN SIMULATION OF MACHINE LEARNING AND EXTREME LEARNING TECHNIQUES ON BREAST CANCER DIAGNOSIS

Authors

  • Rahul Reddy Nadikattu University of the Cumberlands Ph.D. in Information Technology Kentucky, United States

Keywords:

Simulation,, RF,, WBC,, hormonal,

Abstract

Breast Cancer is a developing and most normal disease among ladies around the globe. Breast malignancy is an uncontrolled and exorbitant development of abnormal cells in the Breast because of hereditary, hormonal, and way of life factors. During the starting stages, the tumor is restricted to the Breast, and in the latter part, it can spread to lymph hubs in the armpit and different organs like the liver, bones, lungs, and cerebrum. At the point when the bosom disease spreads too different pieces of the body, it is going to metastasize. The sickness is repairable in the beginning periods, yet it is identified in later stages, which is the fundamental driver for the passing of such a large number of ladies in this entire world. Clinical tests led in medical clinics for deciding the malady are a lot of costly, just as tedious as well. The answer to counter this is by directing early and exact findings for quicker treatment, and accomplishing such exactness in a limited capacity to focus time demonstrates troublesome with existing techniques.

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Published

2021-03-27

Issue

Section

Articles

How to Cite

Rahul Reddy Nadikattu. (2021). A COMPARATIVE STUDY BETWEEN SIMULATION OF MACHINE LEARNING AND EXTREME LEARNING TECHNIQUES ON BREAST CANCER DIAGNOSIS. International Journal of Innovations in Engineering Research and Technology, 1-13. https://repo.ijiert.org/index.php/ijiert/article/view/1280