Automatic segmentation of breast carcinomas from DCE-MRI using a Statistical Learning Algorithm
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Kilian M. Pohl | Ferenc A. Jolesz | Jagadeesan Jayender | Kirby G. Vosburgh | Despina Kontos | Eva Gombos | Sara Gavenonis | Ahmad Ashraf
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