CT imaging during treatment improves radiomic models for patients with locally advanced head and neck cancer.
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Steffen Löck | Mechthild Krause | Michael Baumann | Stefan Leger | Christian Richter | Daniel Zips | Esther G C Troost | Andreas Schreiber | Alex Zwanenburg | Jörg Kotzerke | Klaus Zöphel | Sebastian Zschaeck | Karoline Pilz | S. Leger | S. Löck | M. Krause | M. Baumann | D. Zips | A. Zwanenburg | A. Schreiber | C. Richter | E. Troost | J. Kotzerke | K. Pilz | S. Zschaeck | K. Zöphel
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