Open Access
Breast Cancer Detection Using Mammography Analysis
1
Vietnam National University, Vietnam
2
AGH University of Science and Technology, Poland
3
Dokuz Eylul University, Turkey
4
University of Cambridge, UK
5
Waseda University, Japan
Abstract
This comprehensive review examines the current state and future prospects of this research area. We analyze over 177 studies published in recent years, covering applications in various domains. The review identifies key technological advancements, validation challenges, and regulatory considerations. Our analysis reveals significant progress in the field.
Keywords
robotics,autonomous systems,navigation,sensor fusion,control systems
How to Cite
Tran, N., Nowak, T., Yıldız, C., Brown, J., & Sato, S. (2022). Breast Cancer Detection Using Mammography Analysis. Nivo Light - International Journal of Research & Innovation, 4(4), 50–58. https://doi.org/10.28051/ojstest-148
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