Anatomical classification of pharyngeal and laryngeal endoscopic images using artificial intelligence
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T. Yano | H. Ikematsu | T. Akimoto | K. Matsuura | K. Nakajo | Atsushi Inaba | R. Hayashi | T. Shinozaki | Naoki Aoyama | N. Takeshita | Youichi Ninomiya | Hibiki Kondo | Erika Uchida
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