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基于深度学习的影像学检查在病毒性老年肺炎诊断中的应用。

Application of Imaging Examination Based on Deep Learning in the Diagnosis of Viral Senile Pneumonia.

机构信息

Department of Geriatrics, Beijing Jishuitan Hospital, Beijing 100035, China.

Tuberculosis Department, Shanxi Linfen Third People's Hospital, Linfen City, Shanxi Province 041000, China.

出版信息

Contrast Media Mol Imaging. 2022 May 31;2022:6964283. doi: 10.1155/2022/6964283. eCollection 2022.

DOI:10.1155/2022/6964283
PMID:35694707
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9173984/
Abstract

Medical image classification technology, preferably which is based on the deep learning, is not only a key auxiliary diagnosis and treatment method in clinical medicine but also an important direction of scientific research. With the intensification of social aging, the incidence of viral elderly pneumonia has been on the rise and needs dedication from the research community. Doctors rely on personal theories and experience to use traditional methods to check the computed tomography (CT) images of the lungs of elderly patients one by one, which is likely to cause diagnosis errors. The accuracy of the traditional method certainly meets the clinical needs, but it has higher requirements on the theory and experience of medical staff, and the classification efficiency is low. Constructing an accurate and fast auxiliary system can effectively save medical resources. In response to the above problems, we have proposed a viral pneumonia diagnosis method for lung CT images, which is based on the convolutional neural networks. The main research work is carried out around the following aspects: First, in the lung CT image classification task, the traditional methods are inefficient and effective for doctors. The basic quality requirements of the model are high, or, in the model training, the effective training data are small, and so forth, causing problems such as model overfitting. A lung CT classification model based on the improved Inception-ResNet is proposed. In this model, first the overall architecture of the network model is designed, and then the Contrast-Limited Adaptive Histogram Equalization (CLAHE) algorithm is used to perform the same image enhancement processing on the dataset and data needed in this article, and then the pictures pass through three different network models. A binary classification study was carried out on viral pneumonia and normal lung images, and finally the accuracy, sensitivity, and specificity of the three models were compared. The experimental results show that the accuracy of the three models for the judgment of viral pneumonia is more than 95%. Among these, the model proposed in this article has better classification effect and fit, the highest accuracy rate, and less parameters and can be used for rapid screening of viral senile pneumonia. . To complete the classification of lung CT images of the elderly with viral pneumonia based on the improved Inception-ResNet network architecture. . (1) Find and study domestic and foreign medical literature, understand the diagnosis and treatment methods of viral pneumonia, and study lung CT imaging; compare the pattern classifications of deep learning in lung imaging at home and abroad, and further study the application of convolutional neural networks in the medical field application. (2) Study various models and technologies of convolutional neural networks, summarize them separately, and have in-depth understanding of convolutional neural networks, including architecture, methods, and related system frameworks, experimental environments, and so forth. . This paper proposes an optimized Inception-ResNet network architecture for image classification. The control experimental model uses two network models, GoogLeNet and ResNet, and selects the viral pneumonia dataset for training and testing. The experimental results are as follows: the sensitivity and specificity are superior to those in the other two models, which can be used for actual medical screening and diagnosis. . The improved Inception-ResNet network model method in this paper performs better in terms of accuracy, sensitivity, and specificity. Every metric is higher than those in the ResNet model and the GoogLeNet model, improving the classification effect. In addition, it can be seen from the experimental results that the model used in this paper has a very good classification effect in the classification of new coronary pneumonia CT image data.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/0eaaeb5a099a/CMMI2022-6964283.006.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/7932760f9cac/CMMI2022-6964283.001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/0a0a916b1ff8/CMMI2022-6964283.002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/9eeb83cfa8fa/CMMI2022-6964283.003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/7147f8e8a7c3/CMMI2022-6964283.004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/64894fe4237c/CMMI2022-6964283.005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/0eaaeb5a099a/CMMI2022-6964283.006.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/7932760f9cac/CMMI2022-6964283.001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/0a0a916b1ff8/CMMI2022-6964283.002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/9eeb83cfa8fa/CMMI2022-6964283.003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/7147f8e8a7c3/CMMI2022-6964283.004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/64894fe4237c/CMMI2022-6964283.005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09c1/9173984/0eaaeb5a099a/CMMI2022-6964283.006.jpg
摘要

医学影像分类技术,最好是基于深度学习的,不仅是临床医学中重要的辅助诊断和治疗方法,也是科学研究的重要方向。随着社会老龄化的加剧,病毒性老年肺炎的发病率一直在上升,需要研究界的关注。医生依靠个人理论和经验,使用传统方法逐一检查老年患者的肺部计算机断层扫描(CT)图像,这可能导致诊断错误。传统方法的准确性当然满足了临床需求,但对医护人员的理论和经验要求更高,分类效率也较低。构建一个准确、快速的辅助系统可以有效地节省医疗资源。针对上述问题,我们提出了一种基于卷积神经网络的病毒性肺炎肺 CT 图像诊断方法。主要研究工作围绕以下几个方面展开:

  1. 在肺 CT 图像分类任务中,传统方法对医生来说效率低下且有效。模型的基本素质要求较高,或者在模型训练中,有效训练数据较少等,导致模型过拟合等问题。提出了一种基于改进 Inception-ResNet 的肺 CT 分类模型。在该模型中,首先设计网络模型的整体架构,然后对数据集和本文所需的数据使用对比度受限自适应直方图均衡(CLAHE)算法进行相同的图像增强处理,然后图片通过三个不同的网络模型。对病毒性肺炎和正常肺图像进行了二分类研究,最后比较了三个模型的准确性、灵敏度和特异性。实验结果表明,三个模型对病毒性肺炎的判断准确率均在 95%以上。其中,本文提出的模型具有更好的分类效果和拟合度,准确率最高,参数较少,可用于快速筛查病毒性老年肺炎。

  2. 基于改进的 Inception-ResNet 网络架构,完成基于病毒性肺炎的老年肺 CT 图像的分类。

(1)查找并研究国内外医学文献,了解病毒性肺炎的诊断和治疗方法,研究肺 CT 成像;比较国内外深度学习在肺成像中的模式分类,进一步研究卷积神经网络在医学领域的应用。

(2)研究卷积神经网络的各种模型和技术,分别对它们进行总结,并深入了解卷积神经网络,包括架构、方法和相关系统框架、实验环境等。

本文提出了一种用于图像分类的优化 Inception-ResNet 网络架构。控制实验模型使用两个网络模型,GoogLeNet 和 ResNet,并选择病毒性肺炎数据集进行训练和测试。实验结果如下:敏感性和特异性均优于其他两种模型,可用于实际医疗筛查和诊断。

本文提出的改进的 Inception-ResNet 网络模型方法在准确性、灵敏度和特异性方面表现更好。每个指标都高于 ResNet 模型和 GoogLeNet 模型,从而提高了分类效果。此外,从实验结果可以看出,本文所采用的模型在新型冠状肺炎 CT 图像数据的分类中具有非常好的分类效果。

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J Healthc Eng. 2021 Nov 28;2021:7119779. doi: 10.1155/2021/7119779. eCollection 2021.
2
Study on the Correlation Factors of Tumour Prognosis after Intravascular Interventional Therapy.血管内介入治疗后肿瘤预后的相关因素研究。
J Healthc Eng. 2021 Oct 27;2021:6940056. doi: 10.1155/2021/6940056. eCollection 2021.
3
Automatic detection of coronavirus disease (COVID-19) using X-ray images and deep convolutional neural networks.
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Pattern Anal Appl. 2021;24(3):1207-1220. doi: 10.1007/s10044-021-00984-y. Epub 2021 May 9.
4
AI-assisted CT imaging analysis for COVID-19 screening: Building and deploying a medical AI system.用于新冠病毒疾病筛查的人工智能辅助CT影像分析:构建与部署医学人工智能系统
Appl Soft Comput. 2021 Jan;98:106897. doi: 10.1016/j.asoc.2020.106897. Epub 2020 Nov 10.
5
Review of Artificial Intelligence Techniques in Imaging Data Acquisition, Segmentation, and Diagnosis for COVID-19.COVID-19 成像数据采集、分割和诊断中人工智能技术的综述。
IEEE Rev Biomed Eng. 2021;14:4-15. doi: 10.1109/RBME.2020.2987975. Epub 2021 Jan 22.
6
[Pulmonary nodule detection method based on convolutional neural network].基于卷积神经网络的肺结节检测方法
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IEEE Trans Neural Netw Learn Syst. 2019 Nov;30(11):3484-3495. doi: 10.1109/TNNLS.2019.2892409. Epub 2019 Feb 14.
9
Radiographic and CT Features of Viral Pneumonia.病毒性肺炎的影像学和 CT 特征。
Radiographics. 2018 May-Jun;38(3):719-739. doi: 10.1148/rg.2018170048.
10
A three-step diagnosis of pediatric pneumonia at the emergency department using clinical predictors, C-reactive protein, and pneumococcal PCR.在急诊科使用临床预测指标、C反应蛋白和肺炎球菌PCR对小儿肺炎进行三步诊断。
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