Automatic gross tumor segmentation of canine head and neck cancer using deep learning and cross-species transfer learning
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E. Dale | C. Futsaether | E. Malinen | Å. Søvik | B. Huynh | O. Tomic | A. R. Groendahl | H. Skogmo
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