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, Ce travail de thèse a entraîné les travaux suivants

B. Morel, S. Kemel, S. Dahdouh, C. Adamsbaum, and I. Bloch, SFIPP P-01 -Etude de la reproductibilité des interprétations d'IRM cérébrales néonatales. Archives de Pédiatrie, vol.21, p.590, 2014.

B. Morel, P. Hornoy, B. Husson, I. Bloch, and C. Adamsbaum, Archives de pediatrie: organe officiel de la Societe francaise de pediatrie, 2014.

B. Morel, G. Antoni, J. P. Teglas, I. Bloch, and C. Adamsbaum, Neonatal brain MRI: how reliable is the radiologist's eye? Neuroradiology, 2015.