Intelligent-Breast Abnormality Detection (I-BAD) framework and Risk Classification using Machine Learning Techniques

Authors

  • Dr M Kavitha 1 Author
  • M Kalyani 2 Author

Abstract

AbstractBreast Cancer (BC) is the second leading cause of death among women throughout the world. Early-stage identification of breast abnormality helps the people to attend better treatment at a premature stage of tumour. Breast abnormality detection and risk rate prediction will support the people to increase the survival rate of a patient. Machine learning (ML) techniques have a long track record in the healthcare domain and especially in disease risk classification. In this article, an innovative Internet of Things (IoT) based intelligent- breast abnormality detection (I-BAD) framework to monitor and collect various breast health vital parameters is proposed and evaluated the efficiency of different machine learning techniques in breast abnormality classification.

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Published

2022-01-01

How to Cite

Intelligent-Breast Abnormality Detection (I-BAD) framework and Risk Classification using Machine Learning Techniques. (2022). International Journal of Food and Nutritional Sciences, 11(Special Issue 5), 601-611. https://www.ijfans.org/index.php/Journal/article/view/7444

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