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URL: https://archive.connect.h1.co/article/727237185/

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Dermatologist-level classification of skin cancer with deep neural networks.

Esteva A et al.

Nature. 2017 02 02; 542(7639):115-118

https://doi.org/10.1038/nature21056PMID: 28117445

Classifications

  • New Finding
  • Technical Advance

Evaluations

Exceptional
17 Feb 2017

It is not often that one sees a dermatology paper in Nature, but I can see why this one is in there. The authors have used state of the art machine learning techniques to analyse a very large number of images of skin lesions to help decision making in two important scenarios: separating melanoma from benign nevi and keratinocyte carcinomas from seborrheic keratosis. After learning, the technology was applied to a separate validation dataset and performed as well as 21 dermatologists in relation to histology as the reference standard. The results are impressive and now need to be tested more widely in other countries and against other dermatologists in β€œreal-life” selection of consecutive cases. The technology has the potential to transform initial diagnosis of skin cancer if shown to perform well on smartphones.

Good
20 Dec 2018

This interesting article describes using artificial intelligence (machine-learning or deep neural networks) to classify skin lesions. It is based on one of the largest image datasets (over 129,000). The neural network was compared against dermatologists for classification of melanocytic nevus vs. melanoma as well as keratinocyte carcinoma vs. seborrheic keratosis; the neural network performed on a par with dermatologists.

Good
14 Nov 2019

Artificial intelligence has enabled great progress in digital pathology. This study, together with {1-3}, demonstrated one of its many applications in this field. Esteva et al. found that with the use of deep convolutional neural networks, mobile devices can be used for dermatologic diagnosis.

This Recommendation is of an article referenced in an F1000 Faculty Review also written by Oscar Maiques, Mirella Georgouli and Victoria Sanz-Moreno.

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Relevant Specialties

  • Bioinformatics, Biomedical Informatics & Computational Biology

    Big Data & Analytics | Translational Bioinformatics
  • Dermatology

    Dermatologic Pathology | Skin Cancers (incl. Melanoma & Lymphoma)
  • Oncology

    Skin Cancers (incl. Melanoma & Lymphoma)
  • Public Health & Epidemiology

    Health Systems & Services Research | Preventive Medicine

Clinical Trials

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