A Multichannel Markov Random Field Approach for Automated Segmentation of Breast Cancer Tumor in DCE-MRI Data Using Kinetic Observation Model
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Michael D. Feldman | Mark Rosen | Ahmed Bilal Ashraf | Despina Kontos | Dania Daye | Carolyn Mies | Sara Gavenonis | D. Daye | D. Kontos | A. Ashraf | S. Gavenonis | C. Mies | M. Feldman | M. Rosen
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