Enhancing early breast cancer diagnosis through automated microcalcification detection using an optimized ensemble deep learning framework.
Jing Ru TeohKhairunnisa HasikinKhin Wee LaiXiang WuChong LiPublished in: PeerJ. Computer science (2024)
The proposed model's thorough dataset integration and focus on average confidence ratings within classes improve clinical diagnosis accuracy and effectiveness for breast cancer. This study introduces a novel methodology that takes advantage of an ensemble model and rigorous evaluation standards to substantially improve the accuracy and dependability of breast cancer diagnostics, specifically in the detection of microcalcifications.