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Dark corner artefact and diagnostic performance of a market-approved neural network for skin cancer classification

Authors :
Timo Buhl
Felix K. F. Kommoss
Holger A. Haenssle
Katharina Sies
Christine Fink
Albert Rosenberger
Ferdinand Toberer
Alexander Enk
Felicitas Bardehle
Julia K. Winkler
Source :
Journal der Deutschen Dermatologischen Gesellschaft = Journal of the German Society of Dermatology : JDDGReferences. 19(6)
Publication Year :
2020

Abstract

BACKGROUND AND OBJECTIVES Convolutional neural networks (CNN) have proven dermatologist-level performance in skin lesion classification. Prior to a broader clinical application, an assessment of limitations is crucial. Therefore, the influence of a dark tubular periphery in dermatoscopic images (also called dark corner artefact [DCA]) on the diagnostic performance of a market-approved CNN for skin lesion classification was investigated. PATIENTS AND METHODS A prospective image set of 233 skin lesions (60 malignant, 173 benign) without DCA (control-set) was modified to show small, medium or large DCA. All 932 images were analyzed by a market-approved CNN (Moleanalyzer-Pro® , FotoFinder Systems), providing malignancy scores (range 0-1) with the cut-off > 0.5 indicating malignancy. RESULTS In the control-set the CNN achieved a sensitivity of 90.0 % (79.9 % - 95.3 %), a specificity of 96.5 % (92.6 % - 98.4 %), and an area under the curve (AUC) of receiver operating characteristics (ROC) of 0.961 (0.932 - 0.989). Comparable diagnostic performance was observed in the DCAsmall-set and DCAmedium-set. Conversely, in the DCAlarge-set significantly increased malignancy scores triggered a significantly decreased specificity (87.9 % [82.2 % - 91.9 %], P

Details

ISSN :
16100387
Volume :
19
Issue :
6
Database :
OpenAIRE
Journal :
Journal der Deutschen Dermatologischen Gesellschaft = Journal of the German Society of Dermatology : JDDGReferences
Accession number :
edsair.doi.dedup.....bae18749a68774ec8f0c1f8fa106a29b