International Journal of Innovative Research in Computer Science and Technology
Year: 2021, Volume: 9, Issue: 3
First page : ( 27) Last page : ( 30)
Online ISSN : 2347-5552
Mitali
, Aman Jatain
, Swati Gupta
DOI: 10.21276/ijircst.2021.9.3.4 |
DOI URL: https://doi.org/10.21276/ijircst.2021.9.3.4
This is an Open Access article distributed under the terms of the Creative Commons Attribution License (CC BY 4.0)http://creativecommons.org/licenses/by/4.0
Article Tools: Print the Abstract | Indexing metadata | How to cite item | Email this article | Post a Comment
Mitali , Aman Jatain, Swati Gupta
Breast cancer is the most common cancer in women. It is the leading cause of cancer death in developing countries and the second leading cause of cancer death in women in the United States, behind only lung cancer. Females are more likely to develop breast cancer. However, in a few instances, it is clear that males have also been affected. Breast cancer has been discovered [1].
Breast tumors may be either cancerous or non- cancerous. Benign tumors are easily treated with doctor-prescribed medications. Malignant tumors are a sign of a high risk of breast cancer and should be removed as soon as possible. Early identification and treatment of tumor lowers the risk of cancer-related death. The survival rate of breast cancer patients in America has been reported to be 90% in recent years, but it is as low as 60% in India [2].
The key cause of this shortcoming is late tumor diagnosis and classification, which causes treatment delays. Using machine learning to perform a task will reduce the workload of physicians and radiologists. According to research, doctors can only diagnose breast cancer with a 79 percent accuracy rate, while machines can diagnose it with a 91 percent accuracy rate. Early diagnosis is the best way to increase the chance of treatment and chance of survival.
Department of CSE, Amity University Haryana, India(mital.milansinha@gmail.com)
No. of Downloads: 50 | No. of Views: 1770
Mohd Tanveer, Mohd Azat, Inayat Husain, Sakil Ahmad, Mohammad Aalam Khan.
May 2025 - Vol 13, Issue 3
Maruti Maurya, Mohd Zaheer, Nawab Mohammad, Sadaf siddiqui, Mohd Zeeshan Khan, Mohd Ayan Akram.
May 2025 - Vol 13, Issue 3
MD Shahid Ali, Saif Ali , Abdullah Parwez, Abu Sufiyan, Mohd Haroon.
May 2025 - Vol 13, Issue 3
