Robust breast cancer detection in mammography and digital breast tomosynthesis using an annotation-efficient deep learning approach
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William Lotter | J. Boxerman | B. Haslam | Giorgia Grisot | J. Onieva | A. Gregory Sorensen | G. Vijayaraghavan | Mack Bandler | Meiyun Wang | Jiye G. Kim | E. Wu | K. Wu | Abdul Rahman Diab | Yun Boyer
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