Automated classification of site-specific cutaneous photodamage using a convolutional neural network and three-dimensional total body photography
Sam Kahler(The University of Queensland), Clare Primiero(The University of Queensland), Brigid Betz‐Stablein(The University of Queensland), H. Peter Soyer, Adam Mothershaw(The University of Queensland), Chantal Rutjes(The University of Queensland), Victoria Mar(Alfred Health), Monika Janda(The University of Queensland), Dilki Jayasinghe(The University of Queensland), Zongyuan Ge(Monash University), Francesco Leo(University of Modena and Reggio Emilia), Zhen Yu(Monash Health), Siyuan Yan(Australian Regenerative Medicine Institute)
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