A system for brain tumor volume estimation via MR imaging and fuzzy connectedness.
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Dewey Odhner | Jayaram K Udupa | Gul Moonis | Jianguo Liu | David Hackney | J. Udupa | D. Hackney | Jian-Guo Liu | G. Moonis | D. Odhner
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