Skin lesions of face and scalp – Classification by a market-approved convolutional neural network in comparison with 64 dermatologists. (February 2021)
- Record Type:
- Journal Article
- Title:
- Skin lesions of face and scalp – Classification by a market-approved convolutional neural network in comparison with 64 dermatologists. (February 2021)
- Main Title:
- Skin lesions of face and scalp – Classification by a market-approved convolutional neural network in comparison with 64 dermatologists
- Authors:
- Haenssle, Holger Andreas
Winkler, Julia Katharina
Fink, Christine
Toberer, Ferdinand
Enk, Alexander
Stolz, Wilhelm
Deinlein, Teresa
Hofmann-Wellenhof, Rainer
Kittler, Harald
Tschandl, Philipp
Rosendahl, Cliff
Lallas, Aimilios
Blum, Andreas
Abassi, Mohamed Souhayel
Thomas, Luc
Tromme, Isabelle
Rosenberger, Albert
Bachelerie, Marie
Bajaj, Sonali
Balcere, Alise
Baricault, Sophie
Barthaux, Clément
Beckenbauer, Yvonne
Bertlich, Ines
Blum, Andreas
Bouthenet, Marie-France
Brassat, Sophie
Buck, Philipp Marcel
Buder-Bakhaya, Kristina
Cappelletti, Maria-Letizia
Chabbert, Cécile
De Labarthe, Julie
DeCoster, Eveline
Deinlein, Teresa
Dobler, Michèle
Dumon, Daphnée
Emmert, Steffen
Gachon-Buffet, Julie
Gusarov, Mikhail
Hartmann, Franziska
Hartmann, Julia
Herrmann, Anke
Hoorens, Isabelle
Hulstaert, Eva
Karls, Raimonds
Kolonte, Andreea
Kromer, Christian
Lallas, Aimilios
Le Blanc Vasseux, Céline
Levy-Roy, Annabelle
Majenka, Pawel
Marc, Marine
Bourret, Veronique Martin
Michelet-Brunacci, Nadège
Mitteldorf, Christina
Paroissien, Jean
Picard, Camille
Plise, Diana
Reymann, Valérie
Ribeaudeau, Fabrice
Richez, Pauline
Plaine, Hélène Roche
Salik, Deborah
Sattler, Elke
Schäfer, Sarah
Schneiderbauer, Roland
Secchi, Thierry
Talour, Karen
Trennheuser, Lukas
Wald, Alexander
Wölbing, Priscila
Zukervar, Pascale
… (more) - Abstract:
- Abstract: Background: The clinical differentiation of face and scalp lesions (FSLs) is challenging even for trained dermatologists. Studies comparing the diagnostic performance of a convolutional neural network (CNN) with dermatologists in FSL are lacking. Methods: A market-approved CNN (Moleanalyzer-Pro, FotoFinder Systems) was used for binary classifications of 100 dermoscopic images of FSL. The same lesions were used in a two-level reader study including 64 dermatologists (level I: dermoscopy only; level II: dermoscopy, clinical close-up images, textual information). Primary endpoints were the CNN's sensitivity and specificity in comparison with the dermatologists' management decisions in level II. Generalizability of the CNN results was tested by using four additional external data sets. Results: The CNN's sensitivity, specificity and ROC AUC were 96.2% [87.0%–98.9%], 68.8% [54.7%–80.1%] and 0.929 [0.880–0.978], respectively. In level II, the dermatologists' management decisions showed a mean sensitivity of 84.2% [82.2%–86.2%] and specificity of 69.4% [66.0%–72.8%]. When fixing the CNN's specificity at the dermatologists' mean specificity (69.4%), the CNN's sensitivity (96.2% [87.0%–98.9%]) was significantly higher than that of dermatologists (84.2% [82.2%–86.2%]; p < 0.001). Dermatologists of all training levels were outperformed by the CNN (all p < 0.001). In confirmation, the CNN's accuracy (83.0%) was significantly higher than dermatologists' accuracies in level IIAbstract: Background: The clinical differentiation of face and scalp lesions (FSLs) is challenging even for trained dermatologists. Studies comparing the diagnostic performance of a convolutional neural network (CNN) with dermatologists in FSL are lacking. Methods: A market-approved CNN (Moleanalyzer-Pro, FotoFinder Systems) was used for binary classifications of 100 dermoscopic images of FSL. The same lesions were used in a two-level reader study including 64 dermatologists (level I: dermoscopy only; level II: dermoscopy, clinical close-up images, textual information). Primary endpoints were the CNN's sensitivity and specificity in comparison with the dermatologists' management decisions in level II. Generalizability of the CNN results was tested by using four additional external data sets. Results: The CNN's sensitivity, specificity and ROC AUC were 96.2% [87.0%–98.9%], 68.8% [54.7%–80.1%] and 0.929 [0.880–0.978], respectively. In level II, the dermatologists' management decisions showed a mean sensitivity of 84.2% [82.2%–86.2%] and specificity of 69.4% [66.0%–72.8%]. When fixing the CNN's specificity at the dermatologists' mean specificity (69.4%), the CNN's sensitivity (96.2% [87.0%–98.9%]) was significantly higher than that of dermatologists (84.2% [82.2%–86.2%]; p < 0.001). Dermatologists of all training levels were outperformed by the CNN (all p < 0.001). In confirmation, the CNN's accuracy (83.0%) was significantly higher than dermatologists' accuracies in level II management decisions (all p < 0.001). The CNN's performance was largely confirmed in three additional external data sets but particularly showed a reduced specificity in one Australian data set including FSL on severely sun-damaged skin. Conclusions: When applied as an assistant system, the CNN's higher sensitivity at an equivalent specificity may result in an improved early detection of face and scalp skin cancers. Highlights: Face and scalp lesions (FSLs) are difficult to diagnose. Physicians may benefit from assistance by convolutional neural networks (CNNs). In a data set of 100 FSL cases a CNN was compared with 64 dermatologists. The CNN outperformed dermatologists by a higher sensitivity at equivalent specificity. The CNN may help to improve skin cancer detection in clinical routine. … (more)
- Is Part Of:
- European journal of cancer. Volume 144(2021)
- Journal:
- European journal of cancer
- Issue:
- Volume 144(2021)
- Issue Display:
- Volume 144, Issue 2021 (2021)
- Year:
- 2021
- Volume:
- 144
- Issue:
- 2021
- Issue Sort Value:
- 2021-0144-2021-0000
- Page Start:
- 192
- Page End:
- 199
- Publication Date:
- 2021-02
- Subjects:
- Deep learning -- Neural network -- Moleanalyzer-pro -- Dermoscopy -- Skin cancer -- Melanoma -- Lentigo maligna -- Solar lentigo -- Actinic keratosis -- Seborrheic keratosis -- Basal cell carcinoma
Cancer -- Periodicals
Neoplasms -- Periodicals
Cancer -- Périodiques
Cancer
Tumors
Electronic journals
Periodicals
Electronic journals
616.994 - Journal URLs:
- http://www.sciencedirect.com/science/journal/09598049 ↗
http://rzblx1.uni-regensburg.de/ezeit/warpto.phtml?colors=7&jour_id=2879 ↗
http://www.clinicalkey.com/dura/browse/journalIssue/09598049 ↗
http://www.clinicalkey.com.au/dura/browse/journalIssue/09598049 ↗
http://www.elsevier.com/journals ↗ - DOI:
- 10.1016/j.ejca.2020.11.034 ↗
- Languages:
- English
- ISSNs:
- 0959-8049
- Deposit Type:
- Legaldeposit
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- Available online (eLD content is only available in our Reading Rooms) ↗
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