Using a 22-layer U-Net to perform segmentation of squamous cell carcinoma on digitized head and neck histological images
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Martin Halicek | Baowei Fei | Maysam Shahedi | James V. Little | Amy Y. Chen | Larry L. Myers | Amy Y. Chen | Amol Mavuduru | B. Fei | L. Myers | Maysam Shahedi | M. Halicek | Amol Mavuduru
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