Radiomics and Machine Learning Can Differentiate Transient Osteoporosis from Avascular Necrosis of the Hip
Michail E. Klontzas(University of Crete), Apostolos H. Karantanas(Ulsan College), Katerina Nikiforaki(Foundation for Research and Technology Hellas), George A. Kakkos(University Hospital of Heraklion), Ioannis Stathis(University Hospital of Heraklion), Kostas Marias(Hellenic Mediterranean University), Konstantinos Spanakis(University Hospital of Heraklion), Νικόλας Ματθαίου(University Hospital of Heraklion), Evangelia E. Vassalou(University of Crete), Aristeidis Zibis, Georgios C. Manikis(Foundation for Research and Technology Hellas)
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