Deep learning to find colorectal polyps in colonoscopy: A systematic literature review
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Luis Bote-Curiel | Francisco M Sánchez-Margallo | Luisa F Sánchez-Peralta | Artzai Picón | J Blas Pagador | F. Sánchez-Margallo | J. B. Pagador | L. F. Sánchez-Peralta | A. Picón | L. Bote-Curiel | L. Bote-Curiel
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