, Cet apprentissage pourrait être effectué sur les valeurs de critère de sélection des noeuds

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A. , Exemples d'images A.3.1 Base de données de quatre patients atteints de méningiomes atypiques

, M 1 : IRM T1-Gado (G) et TEP 18 FCholine (D)

M. 2l1, IRM T1-Gado (G) et TEP 18 FCholine (D)

M. 2l2, IRM T1-Gado (G) et TEP 18 FCholine (D)

, M 3 : IRM T1-Gado (G) et TEP 18 FCholine (D)

, M 4 : IRM T1-Gado (G) et TEP 18 FCholine (D)