Prediction of Histologic Neoadjuvant Chemotherapy Response in Osteosarcoma Using Pretherapeutic MRI Radiomics.
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J. Blay | F. Pilleul | O. Beuf | F. Gouin | B. Leporq | J. Drapé | A. Bouhamama | M. Brahmi | P. Marec-Berard | A. Bertrand-Vasseur | Wassef Khaled | Angeline Nemeth | Julie Dufau | Angéline Nemeth
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