| Literature DB >> 32424212 |
R Carter Dunn1, David Coz1, Yuan Liu1, Ayush Jain1, Clara Eng1, David H Way1, Kang Lee1, Peggy Bui1,2, Kimberly Kanada3, Guilherme de Oliveira Marinho4, Jessica Gallegos1, Sara Gabriele1, Vishakha Gupta1, Nalini Singh1,5, Vivek Natarajan1, Rainer Hofmann-Wellenhof6, Greg S Corrado1, Lily H Peng1, Dale R Webster1, Dennis Ai1, Susan J Huang3, Yun Liu7.
Abstract
Skin conditions affect 1.9 billion people. Because of a shortage of dermatologists, most cases are seen instead by general practitioners with lower diagnostic accuracy. We present a deep learning system (DLS) to provide a differential diagnosis of skin conditions using 16,114 de-identified cases (photographs and clinical data) from a teledermatology practice serving 17 sites. The DLS distinguishes between 26 common skin conditions, representing 80% of cases seen in primary care, while also providing a secondary prediction covering 419 skin conditions. On 963 validation cases, where a rotating panel of three board-certified dermatologists defined the reference standard, the DLS was non-inferior to six other dermatologists and superior to six primary care physicians (PCPs) and six nurse practitioners (NPs) (top-1 accuracy: 0.66 DLS, 0.63 dermatologists, 0.44 PCPs and 0.40 NPs). These results highlight the potential of the DLS to assist general practitioners in diagnosing skin conditions.Entities:
Mesh:
Year: 2020 PMID: 32424212 DOI: 10.1038/s41591-020-0842-3
Source DB: PubMed Journal: Nat Med ISSN: 1078-8956 Impact factor: 53.440