Bias in artificial intelligence for medical imaging: fundamentals, detection, avoidance, mitigation, challenges, ethics, and prospects
Burak Koçak(Ulsan College), Renato Cuocolo(University of Salerno), Merel Huisman(Radboud University Medical Center), Andrea Ponsiglione(University of Naples Federico II), Lorenzo Ugga(University of Naples Federico II), João Santinha(Champalimaud Foundation), Michail E. Klontzas(University of Crete), Roberto Cannella(University of Palermo), Christian Bluethgen(University of Zurich), Arnaldo Stanzione(University of Naples Federico II)
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