D-BRAIN: Anatomically Accurate Simulated Diffusion MRI Brain Data
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Aleksandra Pizurica | Wilfried Philips | Jan Sijbers | Ben Jeurissen | Alexander Leemans | Jan Aelterman | Timo Roine | Daniele Perrone | A. Pižurica | W. Philips | B. Jeurissen | A. Leemans | J. Aelterman | Daniel J. Perrone | T. Roine | Jan Sijbers
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