Reimagining leprosy elimination with AI analysis of a combination of skin lesion images with demographic and clinical data
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Sander W. Timmer | J. Ferres | A. Navarini | E. Sarno | Anusua Trivedi | M. Goldust | D. Scollard | M. Moraes | A. Aerts | Geralyn M. Miller | Kevin White | J. Nery | F. Mirza | Elena Bonfiglioli | Cairns S Smith | A. Sales | Richard Bumann | Yixi Xu | P. T. Souza-Santos | Arielle Cavaliero | Raquel R Barbieri | Lucy Setian | Jim Cristofono | R. Bhering | M. Sharman | Shu-ning Zhang
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