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卷积神经网络辅助显著提高了皮肤科医生利用临床图像对皮肤肿瘤的诊断能力。

Convolutional neural network assistance significantly improves dermatologists' diagnosis of cutaneous tumours using clinical images.

作者信息

Ba Wei, Wu Huan, Chen Wei W, Wang Shu H, Zhang Zi Y, Wei Xuan J, Wang Wen J, Yang Lei, Zhou Dong M, Zhuang Yi X, Zhong Qin, Song Zhi G, Li Cheng X

机构信息

Department of Dermatology, Chinese PLA General Hospital, Beijing 100853, China.

Research of Medical Big Data Center, Chinese PLA General Hospital, Beijing 100853, China.

出版信息

Eur J Cancer. 2022 Jul;169:156-165. doi: 10.1016/j.ejca.2022.04.015. Epub 2022 May 12.

Abstract

BACKGROUND

Convolutional neural networks (CNNs) have demonstrated expert-level performance in cutaneous tumour classification using clinical images, but most previous studies have focused on dermatologist-versus-CNN comparisons rather than their combination. The objective of our study was to evaluate the potential impact of CNN assistance on dermatologists for clinical image interpretation.

METHODS

A multi-class CNN was trained and validated using a dataset of 25,773 clinical images comprising 10 categories of cutaneous tumours. The CNN's performance was tested on an independent dataset of 2107 images. A total of 400 images (40 per category) were randomly selected from the test dataset. A fully crossed, self-control, multi-reader multi-case (MRMC) study was conducted to compare the performance of 18 board-certified dermatologists (experience: 13/18 ≤ 10 years; 5/18>10 years) in interpreting the 400 clinical images with or without CNN assistance.

RESULTS

The CNN achieved an overall accuracy of 78.45% and kappa of 0.73 in the classification of 10 types of cutaneous tumours on 2107 images. CNN-assisted dermatologists achieved a higher accuracy (76.60% vs. 62.78%, P < 0.001) and kappa (0.74 vs. 0.59, P < 0.001) than unassisted dermatologists in interpreting the 400 clinical images. Dermatologists with less experience benefited more from CNN assistance. At the binary classification level (malignant or benign), the sensitivity (89.56% vs. 83.21%, P < 0.001) and specificity (87.90% vs. 80.92%, P < 0.001) of dermatologists with CNN assistance were also significantly improved than those without.

CONCLUSIONS

CNN assistance improved dermatologist accuracy in interpreting cutaneous tumours and could further boost the acceptance of this new technique.

摘要

背景

卷积神经网络(CNN)在利用临床图像进行皮肤肿瘤分类方面已展现出专家级的性能,但此前大多数研究都集中在皮肤科医生与CNN的比较上,而非二者的结合。我们研究的目的是评估CNN辅助对皮肤科医生进行临床图像解读的潜在影响。

方法

使用包含10类皮肤肿瘤的25,773张临床图像数据集对一个多类别CNN进行训练和验证。在一个由2107张图像组成的独立数据集上测试CNN的性能。从测试数据集中随机选择400张图像(每类40张)。开展了一项完全交叉、自我对照、多读者多病例(MRMC)研究,以比较18名获得委员会认证的皮肤科医生(经验:13/18≤10年;5/18>10年)在有或没有CNN辅助的情况下解读这400张临床图像的性能。

结果

在对2107张图像上的10种皮肤肿瘤进行分类时,CNN的总体准确率为78.45%,kappa值为0.73。在解读400张临床图像时,有CNN辅助的皮肤科医生比没有辅助的皮肤科医生获得了更高的准确率(76.60%对62.78%,P<0.001)和kappa值(0.74对0.59,P<0.001)。经验较少的皮肤科医生从CNN辅助中受益更多。在二元分类水平(恶性或良性)上,有CNN辅助的皮肤科医生的敏感性(89.56%对83.21%,P<0.001)和特异性(87.90%对80.92%,P<0.001)也比没有辅助的皮肤科医生有显著提高。

结论

CNN辅助提高了皮肤科医生解读皮肤肿瘤的准确性,并可进一步推动这项新技术的接受度。

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