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Breast Cancer Detection using Machine Learning: A systematic Literature Exploration

Published: 13 May 2024 Publication History

Abstract

Cancer growth is the world's second biggest reason for death. In 2015, 8.8 million individuals died because of cancer growth. Breast cancer is the most widely recognized reason for death among the ladies. A few kinds of study have been led on the early identification of Breast cancer to start restorative consideration and improve the probability of endurance of ladies in the general public. Most of the exploration zeroed in on mammography pictures. Be that as it may, mammography pictures can in some cases be erroneously identified, seriously endangering the patient's wellbeing. Elective strategies that are simpler to send or coordinate with various datasets, less expensive or more secure, and can produce a more dependable expectation which is basic too gainful for tending to the bosom malignant growth care. This research offers the detailed systematic review as well audit of the various techniques for better, insight of diagnosing and distinguishing bosom malignancy. This study also demonstrates the various techniques being utilized by various researchers for detecting and diagnosing the breast. This paper outlines the audit on breast cancer identification and analysis utilizing different machine learning algorithms for early detection of diseases so that immediate medical care should be initiated for safety and treatment of the women health.

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ICIMMI '23: Proceedings of the 5th International Conference on Information Management & Machine Intelligence
November 2023
1215 pages
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Published: 13 May 2024

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Author Tags

  1. Classification
  2. Image Processing
  3. Machine Learning Algorithm
  4. Tumors

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