Development and validation of two artificial intelligence models for diagnosing benign, pigmented facial skin lesions

Objective This study used deep learning for diagnosing common, benign hyperpigmentation. Method In this study, two convolutional neural networks were used to identify six pigmentary diseases, and a disease diagnosis model was established. Because the distribution of lesions in the original training...

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Published inSkin research and technology Vol. 27; no. 1; pp. 74 - 79
Main Authors Yang, Yin, Ge, Yiping, Guo, Lifang, Wu, Qiuju, Peng, Lin, Zhang, Erjia, Xie, Junxiang, Li, Yong, Lin, Tong
Format Journal Article
LanguageEnglish
Published England John Wiley & Sons, Inc 01.01.2021
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Summary:Objective This study used deep learning for diagnosing common, benign hyperpigmentation. Method In this study, two convolutional neural networks were used to identify six pigmentary diseases, and a disease diagnosis model was established. Because the distribution of lesions in the original training picture is very complex, we cropped the image around the lesions, trained the network on the extracted lesion images, and fused the verification results of the overall picture and the extracted picture to assess the model performance in identifying hyperpigmented dermatitis pictures. Finally, we evaluated the image recognition performance of the two convolutional neural networks and the converged networks in the test set through a comparison of the converged network and the physicians’ assessments. Results The AUC of DenseNet‐96 for the overall picture was 0.98, whereas the AUC of ResNet‐152 was 0.96; therefore, we concluded that DenseNet‐96 performed better than ResNet‐152. From the AUC, the converged network has the best performance. The converged network model achieved a comprehensive classification performance comparable to that of the doctors. Conclusions The diagnostic model for benign, pigmented skin lesions based on convolutional neural networks had a slightly higher overall performance than the skin specialists.
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ISSN:0909-752X
1600-0846
DOI:10.1111/srt.12911