A Vision-Language Foundation Model for Zero-shot Clinical Collaboration and Automated Concept Discovery in Dermatology
Siyuan Yan(Australian Regenerative Medicine Institute), Zongyuan Ge(Australian Regenerative Medicine Institute), Yizhen Zheng(Australian Regenerative Medicine Institute), Philipp Tschandl(St Anna Children's Hospital), Martin Haskett(Harlem United), Xieji Li(Australian Regenerative Medicine Institute), Monika Janda(The University of Queensland), Camilla Chello(The University of Queensland), Jen G. Cheung(Melanoma Institute Australia), Simon See, Jiahe Liu(Australian Regenerative Medicine Institute), Zhonghua Wang(Monash Health), Adrian Bowling, Aik Beng Ng, Lie Ju(Monash University), Luc Thomas(Université Claude Bernard Lyon 1), Juexiao Zhou(Chinese University of Hong Kong, Shenzhen), Xiaoyang Liao, Albert Ip(Surrey Place Centre), Julien Anriot(Université Claude Bernard Lyon 1), Gin Tan(Australian Regenerative Medicine Institute), Yiwen Jiang(Australian Regenerative Medicine Institute), Dan Mo(Australian Regenerative Medicine Institute), H Peter Soyer(The University of Queensland), Ming Hu(Australian Regenerative Medicine Institute), Xiaoying Tang(Southern University of Science and Technology), Harald Kittler(Medical University of Vienna), Victoria Mar(Alfred Health), Cristina Alonso(Research Institute Hospital 12 de Octubre), Clare Primiero(The University of Queensland)
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