Lymph Nodes Evaluation in Rectal Cancer: Where Do We Stand and Future Perspective
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A. Giovagnoni | A. Borgheresi | R. Fusco | V. Granata | V. Miele | A. Agostini | L. Ottaviani | F. Bruno | P. Palumbo | A. Barile | R. Grassi | G. Danti | F. Grassi | F. De Muzio | Alessandra Bruno | F. Flammia
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