Artificial intelligence and breast screening: French Radiology Community position paper.
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C. Balleyguier | P. Heid | C. Balleyguier | I. Thomassin-Naggara | I. Thomassin-Naggara | L. Ceugnart | G. Lenczner | A. Maire | B. Séradour | L. Verzaux | P. Taourel | L. Ceugnart | P. Heid | P. Taourel | G. Lenczner | L. Verzaux | A. Maire | B. Séradour | Isabelle Thomassin-Naggara | Patrice Taourel | Corinne Balleyguier | Luc Ceugnart | Patrice Heid | Greg Lenczner | Aurélien Maire | Brigitte Séradour | Laurent Verzaux
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