Incorporating radiomics into clinical trials: expert consensus endorsed by the European Society of Radiology on considerations for data-driven compared to biologically driven quantitative biomarkers
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N. Obuchowski | L. de Geus-Oei | R. Boellaard | L. Bidaut | E. Kotter | X. Golay | N. Michoux | L. Costaridou | D. Sullivan | O. Clément | M. Mayerhoefer | N. deSouza | K. Rosendahl | F. Lecouvet | M. Smits | C. Loewe | R. Achten | A. Caroli | Á. Alberich-Bayarri | N. Lassau | A. van der Lugt | C. Caramella | M. Dewey | L. Fournier | C. Deroose | R. Manniesing | E. Oei | W. Kunz | D. Oprea-Lager | E. Lopci | James P. B. O’Connor | A. Persson | M. França | European Society of Radiology
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