Recommendations for the creation of benchmark datasets for reproducible artificial intelligence in radiology
Nikos Sourlos(University Medical Center Groningen), Peter M. A. van Ooijen(University Medical Center Groningen), Rozemarijn Vliegenthart(University Medical Center Groningen), Merel Huisman(Radboud University Medical Center), Renato Cuocolo(University of Salerno), João Santinha(Champalimaud Foundation), Michail E. Klontzas(University of Crete)
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