Initial Condition Assessment for Reaction-Diffusion Glioma Growth Models: A Translational MRI-Histology (In)Validation Study
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Isabelle Salmon | Olivier Debeir | Christine Decaestecker | Serge Goldman | Thierry Metens | Thomas Vandamme | Corentin Martens | Laetitia Lebrun | Gaetan Van Simaeys | Yves-R'emi Van Eycke | Antonin Rovai | C. Martens | O. Debeir | C. Decaestecker | T. Metens | L. Lebrun | S. Goldman | I. Salmon | A. Rovai | G. V. Simaeys | T. Vandamme | Y. V. Eycke | Antonin Rovai
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