A novel AI device for real-time optical characterization of colorectal polyps
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Miki Kawano | I. Ordás | M. Pellisé | G. Antonelli | C. Biffi | I. Gralnek | M. Dinis-Ribeiro | M. Iwatate | Nhan Ngo Dinh | Ariadna Sánchez | H. Awadie | S. Carballal | A. Maieron | C. Hassan | R. Ortigão | Yukari Tanaka | Pietro Salvagnini | Prateek Sharma | Giulio Halim Sebastian Sabela Mário Agnès Glòria Fernánde Antonelli Awadie Bernhofer Carballal Dinis | Sebastian Bernhofer | A. Fernández-Clotet | G. F. Esparrach | Yuta Higasa | Takuro Hirabayashi | Tatsuki Hirai | Markus Mader | Sebastian Mattes | Tastuya Nakai | Oswaldo Ortiz Zúñiga | C. Pinto | F. Riedl | E. Steiner | Andrea Cherubini | Pietro Salvagnini
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