Improving breast cancer diagnosis with computer-aided diagnosis.
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M. Giger | K. Doi | R. Schmidt | C. Metz | Y. Jiang | R. Nishikawa | Yulei Jiang | R. Schmidt | Charles E. Metz | Kunio Doi | C. E. Metz
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