Can we trust the calculation of texture indices of CT images? A phantom study
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Nathalie Lassau | Bernard Asselain | Corinne Balleyguier | Francois Bidault | Caroline Caramella | Fanny Orlhac | Adrien Allorant | Samy Ammari | Patricia Jaranowski | Aurelie Moussier | Stephanie Pitre‐Champagnat | Fanny Orlhac | F. Bidault | B. Asselain | C. Balleyguier | N. Lassau | C. Caramella | S. Ammari | S. Pitre-Champagnat | A. Allorant | A. Moussier | P. Jaranowski
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