Calculation of radiomic features to validate the textural realism of physical anthropomorphic phantoms for digital mammography
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Andrew D. A. Maidment | Predrag R. Bakic | Bruno Barufaldi | Aimilia Gastounioti | Raymond J. Acciavatti | Despina Kontos | Omid Haji Maghsoudi | Lauren Pantalone | Eric A. Cohen | Jinbo Chen | Meng-Kang Hsieh | Emily F. Conant | Eric A. Cohen | Jinbo Chen | E. Conant | D. Kontos | M. Hsieh | P. Bakic | A. Gastounioti | R. Acciavatti | B. Barufaldi | Lauren Pantalone | Omid Haji Maghsoudi
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