Additive Benefit of Radiomics Over Size Alone in the Distinction Between Benign Lesions and Luminal A Cancers on a Large Clinical Breast MRI Dataset.
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Maryellen L. Giger | Karen Drukker | John Papaioannou | Heather M. Whitney | David V Schacht | David Schacht | M. Giger | K. Drukker | J. Papaioannou | A. Edwards | H. Whitney | Nathan S. Taylor | Alexandra V. Edwards | David V. Schacht
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