A new deep learning approach integrated with clinical data for the dermoscopic differentiation of early melanomas from atypical nevi.
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A. Mecocci | A. Lallas | G. Argenziano | C. Longo | S. Puig | M. Bianchini | F. Scarselli | M. Gori | P. Rubegni | G. Pellacani | F. Farnetani | E. Moscarella | G. Cevenini | S. Bonechi | E. Cinotti | J. Perrot | C. Carrera | L. Tognetti | A. Cartocci | G. Cataldo | A. Balistreri | P. Andreini | D. Tiodorovic
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