Man against machine: diagnostic performance of a deep learning convolutional neural network for dermoscopic melanoma recognition in comparison to 58 dermatologists

被引:581
作者
Haenssle, H. A. [1 ]
Fink, C. [1 ]
Schneiderbauer, R. [1 ]
Toberer, F. [1 ]
Buhl, T. [2 ]
Blum, A. [3 ]
Kalloo, A. [4 ]
Hassens, A. Ben Hadj [5 ]
Thomas, L. [6 ]
Enk, A. [1 ]
Uhlmann, L. [7 ]
机构
[1] Heidelberg Univ, Dept Dermatol, Neuenheimer Feld 440, D-69120 Heidelberg, Germany
[2] Univ Gottingen, Dept Dermatol, Gottingen, Germany
[3] Off Based Clin Dermatol, Constance, Germany
[4] Mem Sloan Kettering Canc Ctr, Dept Med, Dermatol Serv, New York, NY 10021 USA
[5] Univ Passau, Fac Comp Sci & Math, Passau, Germany
[6] Lyon 1 Univ, Dept Dermatol, Lyons Canc Res Ctr, Lyon, France
[7] Heidelberg Univ, Inst Med Biometry & Informat, Heidelberg, Germany
关键词
melanoma; melanocytic nevi; dermoscopy; deep learning convolutional neural network; computer algorithm; automated melanoma detection; MELANOCYTIC LESIONS; SKIN-LESIONS; EPILUMINESCENCE MICROSCOPY; PATTERN-ANALYSIS; METAANALYSIS; ALGORITHMS; IMAGES; CLASSIFICATION; IMPACT;
D O I
10.1093/annonc/mdy166
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background: Deep learning convolutional neural networks (CNN) may facilitate melanoma detection, but data comparing a CNN's diagnostic performance to larger groups of dermatologists are lacking. Methods: Google's Inception v4 CNN architecture was trained and validated using dermoscopic images and corresponding diagnoses. In a comparative cross-sectional reader study a 100-image test-set was used (level-I: dermoscopy only; level-II: dermoscopy plus clinical information and images). Main outcome measures were sensitivity, specificity and area under the curve (AUC) of receiver operating characteristics (ROC) for diagnostic classification (dichotomous) of lesions by the CNN versus an international group of 58 dermatologists during level-I or -II of the reader study. Secondary end points included the dermatologists' diagnostic performance in their management decisions and differences in the diagnostic performance of dermatologists during level-I and -II of the reader study. Additionally, the CNN's performance was compared with the top-five algorithms of the 2016 International Symposium on Biomedical Imaging (ISBI) challenge. Results: In level-I dermatologists achieved a mean (6standard deviation) sensitivity and specificity for lesion classification of 86.6% (69.3%) and 71.3% (611.2%), respectively. More clinical information (level-II) improved the sensitivity to 88.9% (69.6%, P = 0.19) and specificity to 75.7% (611.7%, P<0.05). The CNN ROC curve revealed a higher specificity of 82.5% when compared with dermatologists in level-I (71.3%, P<0.01) and level-II (75.7%, P<0.01) at their sensitivities of 86.6% and 88.9%, respectively. The CNN ROC AUC was greater than the mean ROC area of dermatologists (0.86 versus 0.79, P<0.01). The CNN scored results close to the top three algorithms of the ISBI 2016 challenge. Conclusions: For the first time we compared a CNN's diagnostic performance with a large international group of 58 dermatologists, including 30 experts. Most dermatologists were outperformed by the CNN. Irrespective of any physicians' experience, they may benefit from assistance by a CNN's image classification.
引用
收藏
页码:1836 / 1842
页数:7
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