Literature DB >> 33063398

Dermoscopic diagnostic performance of Japanese dermatologists for skin tumors differs by patient origin: A deep learning convolutional neural network closes the gap.

Akane Minagawa1, Hiroshi Koga1, Tasuku Sano1, Kazuhisa Matsunaga2, Yoshihiro Teshima2, Akira Hamada2, Yoshiharu Houjou2, Ryuhei Okuyama1.   

Abstract

In the dermoscopic diagnosis of skin tumors, it remains unclear whether a deep neural network (DNN) trained with images from fair-skinned-predominant archives is helpful when applied for patients with darker skin. This study compared the performance of 30 Japanese dermatologists with that of a DNN for the dermoscopic diagnosis of International Skin Imaging Collaboration (ISIC) and Shinshu (Japanese only) datasets to classify malignant melanoma, melanocytic nevus, basal cell carcinoma and benign keratosis on the non-volar skin. The DNN was trained using 12 254 images from the ISIC set and 594 images from the Shinshu set. The sensitivity for malignancy prediction by the dermatologists was significantly higher for the Shinshu set than for the ISIC set (0.853 [95% confidence interval, 0.820-0.885] vs 0.608 [0.553-0.664], P < 0.001). The specificity of the DNN at the dermatologists' mean sensitivity value was 0.962 for the Shinshu set and 1.00 for the ISIC set and significantly higher than that for the human readers (both P < 0.001). The dermoscopic diagnostic performance of dermatologists for skin tumors tended to be less accurate for patients of non-local populations, particularly in relation to the dominant skin type. A DNN may help close this gap in the clinical setting.
© 2020 Japanese Dermatological Association.

Entities:  

Keywords:  artificial intelligence; deep learning; dermoscopy; image diagnosis; melanoma

Mesh:

Year:  2020        PMID: 33063398     DOI: 10.1111/1346-8138.15640

Source DB:  PubMed          Journal:  J Dermatol        ISSN: 0385-2407            Impact factor:   4.005


  4 in total

Review 1.  Lack of Transparency and Potential Bias in Artificial Intelligence Data Sets and Algorithms: A Scoping Review.

Authors:  Roxana Daneshjou; Mary P Smith; Mary D Sun; Veronica Rotemberg; James Zou
Journal:  JAMA Dermatol       Date:  2021-11-01       Impact factor: 11.816

2.  Model learning analysis of 3D optoacoustic mesoscopy images for the classification of atopic dermatitis.

Authors:  Sojeong Park; Shier Nee Saw; Xiuting Li; Mahsa Paknezhad; Davide Coppola; U S Dinish; Amalina Binite Ebrahim Attia; Yik Weng Yew; Steven Tien Guan Thng; Hwee Kuan Lee; Malini Olivo
Journal:  Biomed Opt Express       Date:  2021-05-27       Impact factor: 3.732

3.  A Deep Learning Based Framework for Diagnosing Multiple Skin Diseases in a Clinical Environment.

Authors:  Chen-Yu Zhu; Yu-Kun Wang; Hai-Peng Chen; Kun-Lun Gao; Chang Shu; Jun-Cheng Wang; Li-Feng Yan; Yi-Guang Yang; Feng-Ying Xie; Jie Liu
Journal:  Front Med (Lausanne)       Date:  2021-04-16

4.  Augmenting the accuracy of trainee doctors in diagnosing skin lesions suspected of skin neoplasms in a real-world setting: A prospective controlled before-and-after study.

Authors:  Young Jae Kim; Jung-Im Na; Seung Seog Han; Chong Hyun Won; Mi Woo Lee; Jung-Won Shin; Chang-Hun Huh; Sung Eun Chang
Journal:  PLoS One       Date:  2022-01-21       Impact factor: 3.240

  4 in total

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