(Publisher of Peer Reviewed Open Access Journals)

ACCENTS Transactions on Image Processing and Computer Vision (TIPCV)

ISSN (Print):    ISSN (Online):2455-4707
Volume-10 Issue-26 February-2024
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Paper Title : Machine learning and data mining for breast cancer detection: a comprehensive review
Author Name : Manish Singh and Animesh Kumar Dubey
Abstract :

Breast cancer remains a pervasive global health concern, contributing significantly to cancer-related morbidity and mortality among women. Traditional diagnostic methods, such as mammography and clinical breast exams, though valuable, possess limitations, including sensitivity issues and the risk of false positives. In response to these challenges, the emergence of data mining and machine learning technologies has opened new avenues for breast cancer detection. This review examines the application of data mining and machine learning approaches in breast cancer detection and analysis, emphasizing recent advancements and critical findings. The review included an analysis and discussion of the effectiveness of these technologies in improving diagnostic accuracy, the examination of commonly algorithms, and the identification of research gaps. The review highlights the transformative potential of data-driven medical diagnostics, offering valuable insights for researchers, clinicians, and policymakers.

Keywords : Breast cancer detection, Data mining and machine learning, Algorithm analysis, Medical diagnostic innovation.
Cite this article : Singh M, Dubey AK. Machine learning and data mining for breast cancer detection: a comprehensive review . ACCENTS Transactions on Image Processing and Computer Vision. 2024; 10(26):1-6. DOI:10.19101/ TIPCV.2023.924003.
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