[A survey on the application of convolutional neural networks in the diagnosis of occupational pneumoconiosis].

Q4 Medicine
Yu Wang, Jiang Wu, Dongsheng Wu
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引用次数: 0

Abstract

Pneumoconiosis ranks first among the newly-emerged occupational diseases reported annually in China, and imaging diagnosis is still one of the main clinical diagnostic methods. However, manual reading of films requires high level of doctors, and it is difficult to discriminate the staged diagnosis of pneumoconiosis imaging, and due to the influence of uneven distribution of medical resources and other factors, it is easy to lead to misdiagnosis and omission of diagnosis in primary healthcare institutions. Computer-aided diagnosis system can realize rapid screening of pneumoconiosis in order to assist clinicians in identification and diagnosis, and improve diagnostic efficacy. As an important branch of deep learning, convolutional neural network (CNN) is good at dealing with various visual tasks such as image segmentation, image classification, target detection and so on because of its characteristics of local association and weight sharing, and has been widely used in the field of computer-aided diagnosis of pneumoconiosis in recent years. This paper was categorized into three parts according to the main applications of CNNs (VGG, U-Net, ResNet, DenseNet, CheXNet, Inception-V3, and ShuffleNet) in the imaging diagnosis of pneumoconiosis, including CNNs in pneumoconiosis screening diagnosis, CNNs in staging diagnosis of pneumoconiosis, and CNNs in segmentation of pneumoconiosis foci to conduct a literature review. It aims to summarize the methods, advantages and disadvantages, and optimization ideas of CNN applied to the images of pneumoconiosis, and to provide a reference for the research direction of further development of computer-aided diagnosis of pneumoconiosis.

[卷积神经网络在职业性尘肺病诊断中的应用调查]。
尘肺病在我国每年报告的新发职业病中居首位,影像学诊断仍是临床主要诊断方法之一。然而,人工阅片对医生水平要求较高,尘肺病影像学分期诊断辨别困难,且受医疗资源分布不均等因素影响,容易导致基层医疗机构误诊、漏诊。计算机辅助诊断系统可以实现尘肺病的快速筛查,以辅助临床医生进行鉴别诊断,提高诊断疗效。卷积神经网络(CNN)作为深度学习的一个重要分支,因其局部关联、权重共享等特点,擅长处理图像分割、图像分类、目标检测等各种视觉任务,近年来在尘肺病计算机辅助诊断领域得到了广泛应用。本文根据 CNN(VGG、U-Net、ResNet、DenseNet、CheXNet、Inception-V3 和 ShuffleNet)在尘肺病影像诊断中的主要应用分为三个部分进行文献综述,包括 CNN 在尘肺病筛查诊断中的应用、CNN 在尘肺病分期诊断中的应用以及 CNN 在尘肺病灶分割中的应用。旨在总结CNN应用于尘肺病图像的方法、优缺点和优化思路,为尘肺病计算机辅助诊断的进一步发展研究方向提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
期刊介绍:
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