Large language models in radiology: fundamentals, applications, ethical considerations, risks, and future directions
Tugba Akinci D’Antonoli(Psychiatry Baselland), Burak Koçak(Ulsan College), Lorenzo Ugga(University of Naples Federico II), Renato Cuocolo(University of Salerno), Michail E. Klontzas(University of Crete), Federica Vernuccio(University of Padua), Roberto Cannella(University of Palermo), Christian Bluethgen(University of Zurich), Arnaldo Stanzione(University of Naples Federico II)
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