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Expert-Level Diagnosis of Nonpigmented Skin Cancer by Combined Convolutional Neural Networks Publisher Pubmed



Tschandl P1, 2 ; Rosendahl C3, 4 ; Akay BN5 ; Argenziano G6 ; Blum A7 ; Braun RP8 ; Cabo H9 ; Gourhant JY10 ; Kreusch J11 ; Lallas A12 ; Lapins J13 ; Marghoob A14 ; Menzies S15 ; Neuber NM2 Show All Authors
Authors
  1. Tschandl P1, 2
  2. Rosendahl C3, 4
  3. Akay BN5
  4. Argenziano G6
  5. Blum A7
  6. Braun RP8
  7. Cabo H9
  8. Gourhant JY10
  9. Kreusch J11
  10. Lallas A12
  11. Lapins J13
  12. Marghoob A14
  13. Menzies S15
  14. Neuber NM2
  15. Paoli J16
  16. Rabinovitz HS17
  17. Rinner C18
  18. Scope A19
  19. Soyer HP20
  20. Sinz C2
  21. Thomas L21
  22. Zalaudek I22
  23. Kittler H2

Source: JAMA Dermatology Published:2019


Abstract

Importance: Convolutional neural networks (CNNs) achieve expert-level accuracy in the diagnosis of pigmented melanocytic lesions. However, the most common types of skin cancer are nonpigmented and nonmelanocytic, and are more difficult to diagnose. Objective: To compare the accuracy of a CNN-based classifier with that of physicians with different levels of experience. Design, Setting, and Participants: A CNN-based classification model was trained on 7895 dermoscopic and 5829 close-up images of lesions excised at a primary skin cancer clinic between January 1, 2008, and July 13, 2017, for a combined evaluation of both imaging methods. The combined CNN (cCNN) was tested on a set of 2072 unknown cases and compared with results from 95 human raters who were medical personnel, including 62 board-certified dermatologists, with different experience in dermoscopy. Main Outcomes and Measures: The proportions of correct specific diagnoses and the accuracy to differentiate between benign and malignant lesions measured as an area under the receiver operating characteristic curve served as main outcome measures. Results: Among 95 human raters (51.6% female; mean age, 43.4 years; 95% CI, 41.0-45.7 years), the participants were divided into 3 groups (according to years of experience with dermoscopy): beginner raters (<3 years), intermediate raters (3-10 years), or expert raters (>10 years). The area under the receiver operating characteristic curve of the trained cCNN was higher than human ratings (0.742; 95% CI, 0.729-0.755 vs 0.695; 95% CI, 0.676-0.713; P <.001). The specificity was fixed at the mean level of human raters (51.3%), and therefore the sensitivity of the cCNN (80.5%; 95% CI, 79.0%-82.1%) was higher than that of human raters (77.6%; 95% CI, 74.7%-80.5%). The cCNN achieved a higher percentage of correct specific diagnoses compared with human raters (37.6%; 95% CI, 36.6%-38.4% vs 33.5%; 95% CI, 31.5%-35.6%; P =.001) but not compared with experts (37.3%; 95% CI, 35.7%-38.8% vs 40.0%; 95% CI, 37.0%-43.0%; P =.18). Conclusions and Relevance: Neural networks are able to classify dermoscopic and close-up images of nonpigmented lesions as accurately as human experts in an experimental setting. © 2018 American Medical Association. All rights reserved.
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