Classification of mass and normal breast tissue: a convolution neural network classifier with spatial domain and texture images
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Berkman Sahiner | Mark A. Helvie | Nicholas Petrick | Mitchell M. Goodsitt | Dorit D. Adler | Heang Ping Chan | Datong Wei | N. Petrick | H. Chan | D. Wei | M. Helvie | B. Sahiner | D. Adler | M. Goodsitt | Datong Wei
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