A deep learning model to generate synthetic CT for prostate MR-only radiotherapy dose planning: a multicenter study
S. Tahri(Inserm), A. Barateau(Inserm), Igor Bessières(Centre Georges François Leclerc), Cédric Hémon(Inserm), Jennifer Le Guévelou(Centre Eugène Marquis), Oscar Acosta(Inserm), Hilda Chourak(Commonwealth Scientific and Industrial Research Organisation), R. de Crevoisier(Centre Eugène Marquis), Adrien Boue-Rafle(Inserm), Peter B. Greer(Calvary Mater Newcastle Hospital), Louis Marage(Centre Georges François Leclerc), Jean‐Claude Nunes(Inserm), Blanche Texier(Inserm), Pauline Lekieffre(Inserm), Emma Collot(Inserm), C. Lafond(Inserm), Jason Dowling(Commonwealth Scientific and Industrial Research Organisation)
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