Automated breast segmentation of fat and water MR images using dynamic programming.
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Tomoe Barr | Jean-Philippe Galons | Alison Stopeck | M. Altbach | Jeffrey J. Rodríguez | J. Galons | A. Stopeck | C. Thomson | M. Marron | Jeffrey J Rodríguez | Cynthia Thomson | José A Rosado-Toro | Marilyn T Marron | Patricia Thompson | Danielle Carroll | Eszter Wolf | María I Altbach | Danielle Carroll | J. Rosado-Toro | P. Thompson | T. Barr | Eszter Wolf
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