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Man against machine reloaded : performance of a market-approved convolutional neural network in classifying a broad spectrum of skin lesions in comparison with 96 dermatologists working under less artificial conditions
Authors
M.S. Abassi
Christina Alt
+72 more
Marie Bachelerie
Sonali Bajaj
Alise Balcere
Sophie Baricault
Clément Barthaux
Yvonne Beckenbauer
Ines Bertlich
A. Blum
Andreas Blum
Veronique Martin Bourret
Marie-France Bouthenet
Sophie Brassat
Kristina Buder-Bakhaya
T. Buhl
Maria-Letizia Cappelletti
Cécile Chabbert
Julie De Labarthe
Eveline DeCoster
T. Deinlein
Teresa Deinlein
Michèle Dobler
Daphnée Dumon
S. Emmert
Steffen Emmert
A. Enk
C. Fink
Julie Gachon-Buffet
Mikhail Gusarov
H.A. Haenssle
Franziska Hartmann
Julia Hartmann
Anke Herrmann
R. Hofmann-Wellenhof
Isabelle Hoorens
Eva Hulstaert
Raimonds Karls
Andreea Kolonte
Christian Kromer
A. Lallas
Aimilios Lallas
Céline Le Blanc Vasseux
Annabelle Levy-Roy
Pawel Majenka
Marine Marc
Philipp Marcel Buck
Nadège Michelet-Brunacci
Christina Mitteldorf
Jean Paroissien
Camille Picard
Diana Plise
Valérie Reymann
Fabrice Ribeaudeau
Pauline Richez
Hélène Roche Plaine
A. Rosenberger
Deborah Salik
Elke Sattler
Roland Schneiderbauer
Sarah Schäfer
Thierry Secchi
W. Stolz
Karen Talour
L. Thomas
F. Toberer
Lukas Trennheuser
I. Tromme
P. Tschandl
Alexander Wald
J. Winkler
Priscila Wölbing
Pascale Zukervar
M. Zutt
Publication date
1 January 2020
Publisher
'Elsevier BV'
Doi
Cite
Abstract
Copyright © 2019 European Society for Medical Oncology. Published by Elsevier Ltd. All rights reserved.Background: Convolutional neural networks (CNNs) efficiently differentiate skin lesions by image analysis. Studies comparing a market-approved CNN in a broad range of diagnoses to dermatologists working under less artificial conditions are lacking. Materials and methods: One hundred cases of pigmented/non-pigmented skin cancers and benign lesions were used for a two-level reader study in 96 dermatologists (level I: dermoscopy only; level II: clinical close-up images, dermoscopy, and textual information). Additionally, dermoscopic images were classified by a CNN approved for the European market as a medical device (Moleanalyzer Pro, FotoFinder Systems, Bad Birnbach, Germany). Primary endpoints were the sensitivity and specificity of the CNN's dichotomous classification in comparison with the dermatologists’ management decisions. Secondary endpoints included the dermatologists’ diagnostic decisions, their performance according to their level of experience, and the CNN's area under the curve (AUC) of receiver operating characteristics (ROC). Results: The CNN revealed a sensitivity, specificity, and ROC AUC with corresponding 95% confidence intervals (CI) of 95.0% (95% CI 83.5% to 98.6%), 76.7% (95% CI 64.6% to 85.6%), and 0.918 (95% CI 0.866–0.970), respectively. In level I, the dermatologists’ management decisions showed a mean sensitivity and specificity of 89.0% (95% CI 87.4% to 90.6%) and 80.7% (95% CI 78.8% to 82.6%). With level II information, the sensitivity significantly improved to 94.1% (95% CI 93.1% to 95.1%; P < 0.001), while the specificity remained unchanged at 80.4% (95% CI 78.4% to 82.4%; P = 0.97). When fixing the CNN's specificity at the mean specificity of the dermatologists’ management decision in level II (80.4%), the CNN's sensitivity was almost equal to that of human raters, at 95% (95% CI 83.5% to 98.6%) versus 94.1% (95% CI 93.1% to 95.1%); P = 0.1. In contrast, dermatologists were outperformed by the CNN in their level I management decisions and level I and II diagnostic decisions. More experienced dermatologists frequently surpassed the CNN's performance. Conclusions: Under less artificial conditions and in a broader spectrum of diagnoses, the CNN and most dermatologists performed on the same level. Dermatologists are trained to integrate information from a range of sources rendering comparative studies that are solely based on one single case image inadequate.publishersversionPeer reviewe
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