Multiple Sclerosis Lesion Segmentation with Tiramisu and 2.5D Stacked Slices
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Rohit Bakshi | Ipek Oguz | Francesca Bagnato | Renxin Chu | Huahong Zhang | Kilian Hett | Russell T. Shinohara | Alessandra M. Valcarcel | R. Chu | R. Bakshi | R. Shinohara | I. Oguz | F. Bagnato | A. Valcarcel | Kilian Hett | H. Zhang
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