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基于深度学习的、使用小型临床图像数据集开发的计算机辅助分类器在皮肤肿瘤诊断方面超越了经过董事会认证的皮肤科医生。

Deep-learning-based, computer-aided classifier developed with a small dataset of clinical images surpasses board-certified dermatologists in skin tumour diagnosis.

机构信息

Dermatology Division, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki, Japan, 305-8577.

Kyocera Communications System Co., Ltd, Kyoto, Japan.

出版信息

Br J Dermatol. 2019 Feb;180(2):373-381. doi: 10.1111/bjd.16924. Epub 2018 Sep 19.

Abstract

BACKGROUND

Application of deep-learning technology to skin cancer classification can potentially improve the sensitivity and specificity of skin cancer screening, but the number of training images required for such a system is thought to be extremely large.

OBJECTIVES

To determine whether deep-learning technology could be used to develop an efficient skin cancer classification system with a relatively small dataset of clinical images.

METHODS

A deep convolutional neural network (DCNN) was trained using a dataset of 4867 clinical images obtained from 1842 patients diagnosed with skin tumours at the University of Tsukuba Hospital from 2003 to 2016. The images consisted of 14 diagnoses, including both malignant and benign conditions. Its performance was tested against 13 board-certified dermatologists and nine dermatology trainees.

RESULTS

The overall classification accuracy of the trained DCNN was 76·5%. The DCNN achieved 96·3% sensitivity (correctly classified malignant as malignant) and 89·5% specificity (correctly classified benign as benign). Although the accuracy of malignant or benign classification by the board-certified dermatologists was statistically higher than that of the dermatology trainees (85·3% ± 3·7% and 74·4% ± 6·8%, P < 0·01), the DCNN achieved even greater accuracy, as high as 92·4% ± 2·1% (P < 0·001).

CONCLUSIONS

We have developed an efficient skin tumour classifier using a DCNN trained on a relatively small dataset. The DCNN classified images of skin tumours more accurately than board-certified dermatologists. Collectively, the current system may have capabilities for screening purposes in general medical practice, particularly because it requires only a single clinical image for classification.

摘要

背景

深度学习技术在皮肤癌分类中的应用有可能提高皮肤癌筛查的敏感性和特异性,但这种系统所需的训练图像数量被认为是极其庞大的。

目的

确定深度学习技术是否可以用于开发一个高效的皮肤癌分类系统,该系统使用相对较小的临床图像数据集。

方法

使用来自筑波大学医院 2003 年至 2016 年间诊断为皮肤肿瘤的 1842 名患者的 4867 张临床图像数据集对深度卷积神经网络(DCNN)进行训练。这些图像包含 14 种诊断,包括恶性和良性病变。其性能通过 13 名皮肤科认证医生和 9 名皮肤科受训人员进行测试。

结果

训练后的 DCNN 的总体分类准确率为 76.5%。DCNN 的敏感性为 96.3%(正确地将恶性病变归类为恶性),特异性为 89.5%(正确地将良性病变归类为良性)。尽管皮肤科认证医生的恶性或良性病变分类准确率在统计学上高于皮肤科受训人员(85.3%±3.7%和 74.4%±6.8%,P<0.01),但 DCNN 的准确率更高,高达 92.4%±2.1%(P<0.001)。

结论

我们使用基于相对较小数据集训练的 DCNN 开发了一种高效的皮肤肿瘤分类器。DCNN 对皮肤肿瘤图像的分类比皮肤科认证医生更准确。总的来说,目前的系统可能具有在一般医疗实践中进行筛查的能力,特别是因为它只需要一个单一的临床图像进行分类。

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