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深度学习在评估数字化胸部 X 射线摄影中描述的尘肺中的应用潜力。

Potential of deep learning in assessing pneumoconiosis depicted on digital chest radiography.

机构信息

Department of Radiology, Peking University Third Hospital, Beijing, China.

Departments of Radiology and Bioengineering, University of Pittsburgh, Pittsburgh, Pennsylvania, USA.

出版信息

Occup Environ Med. 2020 Sep;77(9):597-602. doi: 10.1136/oemed-2019-106386. Epub 2020 May 29.

Abstract

OBJECTIVES

To investigate the potential of deep learning in assessing pneumoconiosis depicted on digital chest radiographs and to compare its performance with certified radiologists.

METHODS

We retrospectively collected a dataset consisting of 1881 chest X-ray images in the form of digital radiography. These images were acquired in a screening setting on subjects who had a history of working in an environment that exposed them to harmful dust. Among these subjects, 923 were diagnosed with pneumoconiosis, and 958 were normal. To identify the subjects with pneumoconiosis, we applied a classical deep convolutional neural network (CNN) called Inception-V3 to these image sets and validated the classification performance of the trained models using the area under the receiver operating characteristic curve (AUC). In addition, we asked two certified radiologists to independently interpret the images in the testing dataset and compared their performance with the computerised scheme.

RESULTS

The Inception-V3 CNN architecture, which was trained on the combination of the three image sets, achieved an AUC of 0.878 (95% CI 0.811 to 0.946). The performance of the two radiologists in terms of AUC was 0.668 (95% CI 0.555 to 0.782) and 0.772 (95% CI 0.677 to 0.866), respectively. The agreement between the two readers was moderate (kappa: 0.423, p<0.001).

CONCLUSION

Our experimental results demonstrated that the deep leaning solution could achieve a relatively better performance in classification as compared with other models and the certified radiologists, suggesting the feasibility of deep learning techniques in screening pneumoconiosis.

摘要

目的

研究深度学习在评估数字化胸片中尘肺的应用潜力,并与认证放射科医生进行比较。

方法

我们回顾性收集了一个由 1881 张数字射线照片形式的胸部 X 射线图像组成的数据集。这些图像是在有接触有害粉尘工作史的受试者的筛查环境中采集的。在这些受试者中,923 人被诊断患有尘肺病,958 人正常。为了识别患有尘肺病的受试者,我们将一种名为 Inception-V3 的经典深度卷积神经网络应用于这些图像集,并使用受试者工作特征曲线下面积(AUC)验证训练模型的分类性能。此外,我们请两名认证放射科医生独立解读测试数据集的图像,并将其与计算机方案进行比较。

结果

在三个图像集的组合上进行训练的 Inception-V3 CNN 架构,AUC 为 0.878(95%CI 0.811 至 0.946)。两名放射科医生在 AUC 方面的表现分别为 0.668(95%CI 0.555 至 0.782)和 0.772(95%CI 0.677 至 0.866)。两位读者之间的一致性为中等(kappa:0.423,p<0.001)。

结论

我们的实验结果表明,与其他模型和认证放射科医生相比,深度学习解决方案在分类方面的性能相对较好,这表明深度学习技术在筛查尘肺病方面具有可行性。

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