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Pathologist-level classification of histopathological melanoma images with deep neural networks
230
Zitationen
13
Autoren
2019
Jahr
Abstract
Even in the worst case, the discordance of the CNN was about the same compared with the discordance between human pathologists as reported in the literature. Despite the vastly reduced amount of data, time necessary for diagnosis and cost compared with the pathologist, our CNN archived on-par performance. Conclusively, CNNs indicate to be a valuable tool to assist human melanoma diagnoses.
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