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L. .. Au, Représentation schématique des approches de coopération réel-virtuel développées, p.27

.. Vues-axiales, la vessie (en haut) et des vésicules séminales qui se séparent (en bas), (b) et (c) de la base, p.45

.. Approche-rotationnelle, Approche parallèle, p.72

A. De-contour-dynamique-discret-appliqué-À-la-prostate and .. , Etape supplémentaire qui rapproche le maillage initial du bord de la prostate avant d'appliquer la déformation (droite)

E. Voisins and . Rouge, du sommet, en cyan, utilisés dans le calcul de la mesure de régularité locale (gauche), p.98

. Spécificité and . De-faux-positifs, taux de faux négatifs et taux de bien classés calculés sur le classement des régions candidates, obtenu par régression logistique avec différentes combinaisons des variables explicatives taille (T), gradient moyen (G), intensité moyenne (I) et poids (W). (a) ? = 0, ). . . . . . . . . . . . . . . . . . . . 101

.. Histogrammes-des-moments-de-krawtchouk, obtenus dans des fenêtres de différentes tailles à l'intérieur (bleu) et à l'extérieur (jaune) du contour expert, p.150