The Development of a Skin Cancer Classification System for Pigmented Skin Lesions Using Deep Learning

被引:105
|
作者
Jinnai, Shunichi [1 ]
Yamazaki, Naoya [1 ]
Hirano, Yuichiro [2 ]
Sugawara, Yohei [2 ]
Ohe, Yuichiro [3 ]
Hamamoto, Ryuji [4 ,5 ]
机构
[1] Natl Canc Ctr, Dept Dermatol Oncol, Chuo Ku, 5-1-1 Tsukiji, Tokyo 1040045, Japan
[2] Preferred Networks, Chiyoda Ku, 1-6-1 Otemachi, Tokyo 1000004, Japan
[3] Natl Canc Ctr, Dept Thorac Oncol, Chuo Ku, 5-1-1 Tsukiji, Tokyo 1040045, Japan
[4] Natl Canc Ctr, Div Mol Modificat & Canc Biol, Chuo Ku, 5-1-1 Tsukiji, Tokyo 1040045, Japan
[5] RIKEN Ctr Adv Intelligence Project, Canc Translat Res Team, Chuo Ku, 1-4-1 Nihonbashi, Tokyo 1030027, Japan
基金
日本学术振兴会; 日本科学技术振兴机构;
关键词
melanoma; skin cancer; artificial intelligence (AI); deep learning; neural network; MELANOMA DETECTION; DIAGNOSIS; DELAY;
D O I
10.3390/biom10081123
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Recent studies have demonstrated the usefulness of convolutional neural networks (CNNs) to classify images of melanoma, with accuracies comparable to those achieved by dermatologists. However, the performance of a CNN trained with only clinical images of a pigmented skin lesion in a clinical image classification task, in competition with dermatologists, has not been reported to date. In this study, we extracted 5846 clinical images of pigmented skin lesions from 3551 patients. Pigmented skin lesions included malignant tumors (malignant melanoma and basal cell carcinoma) and benign tumors (nevus, seborrhoeic keratosis, senile lentigo, and hematoma/hemangioma). We created the test dataset by randomly selecting 666 patients out of them and picking one image per patient, and created the training dataset by giving bounding-box annotations to the rest of the images (4732 images, 2885 patients). Subsequently, we trained a faster, region-based CNN (FRCNN) with the training dataset and checked the performance of the model on the test dataset. In addition, ten board-certified dermatologists (BCDs) and ten dermatologic trainees (TRNs) took the same tests, and we compared their diagnostic accuracy with FRCNN. For six-class classification, the accuracy of FRCNN was 86.2%, and that of the BCDs and TRNs was 79.5% (p= 0.0081) and 75.1% (p< 0.00001), respectively. For two-class classification (benign or malignant), the accuracy, sensitivity, and specificity were 91.5%, 83.3%, and 94.5% by FRCNN; 86.6%, 86.3%, and 86.6% by BCD; and 85.3%, 83.5%, and 85.9% by TRN, respectively. False positive rates and positive predictive values were 5.5% and 84.7% by FRCNN, 13.4% and 70.5% by BCD, and 14.1% and 68.5% by TRN, respectively. We compared the classification performance of FRCNN with 20 dermatologists. As a result, the classification accuracy of FRCNN was better than that of the dermatologists. In the future, we plan to implement this system in society and have it used by the general public, in order to improve the prognosis of skin cancer.
引用
收藏
页码:1 / 13
页数:13
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