BraTS Toolkit: Translating BraTS Brain Tumor Segmentation Algorithms Into Clinical and Scientific Practice
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Claus Zimmer | Bjoern H. Menze | Bjoern H Menze | Benedikt Wiestler | Giles Tetteh | Ivan Ezhov | Florian Kofler | Diana Waldmannstetter | Jana Lipkova | Christoph Berger | Jan Kirschke | C. Zimmer | Jana Lipková | B. Wiestler | J. Kirschke | F. Kofler | I. Ezhov | Diana Waldmannstetter | Christoph Berger | Giles Tetteh
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