Lightweight Classification Network for Pulmonary Tuberculosis Based on CT Images

Junlin Tian, Yi Zhang, J. Lei, Chunyou Sun, Gang Hu
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引用次数: 3

Abstract

With the continuous development of medical informatics and digital diagnosis, the classification of tuberculosis cases from computed tomography (CT) images of the lung based on deep learning is an important guiding aid in clinical diagnosis and treatment. Due to its potential application in medical image classification, this task has received extensive research attention. Existing related neural network techniques are still challenging in terms of feature extraction of global contextual information of images and network complexity in achieving image classification. To address these issues, this paper proposes a lightweight medical image classification network based on a combination of Transformer and convolutional neural network (CNN) for the classification of tuberculosis cases from lung CT. The method mainly consists of a fusion of the CNN module and the Transformer module, exploiting the advantages of both in order to accomplish a more accurate classification task. On the one hand, the CNN branch supplements the Transformer branch with basic local feature information in the low level; on the other hand, in the middle and high levels of the model, the CNN branch can also provide the Transformer architecture with different On the other hand, in the middle and high levels of the model, the CNN branches can also provide different local and global feature information to the Transformer architecture to enhance the ability of the model to obtain feature information and improve the accuracy of image classification. A shortcut is used in each module of the network to solve the problem of poor model results due to gradient divergence and to optimise the effectiveness of TB classification. The proposed lightweight model can well solve the problem of long training time in the process of TB classification of lung CT and improve the speed of classification. The proposed method was validated on a computed tomography (CT) image dataset provided by the First Hospital of Lanzhou University. The experimental results show that the proposed lightweight classification network for tuberculosis based on CT medical images of lungs can fully extract the feature information of the input images and obtain high accuracy classification results.
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基于CT图像的肺结核轻型分类网络
随着医学信息学和数字化诊断的不断发展,基于深度学习的肺部CT图像结核病例分类是临床诊断和治疗的重要指导手段。由于其在医学图像分类中的潜在应用,该任务得到了广泛的研究关注。现有的相关神经网络技术在图像全局上下文信息的特征提取和实现图像分类的网络复杂性方面仍然存在挑战。针对这些问题,本文提出了一种基于Transformer和卷积神经网络(CNN)相结合的轻型医学图像分类网络,用于肺部CT肺结核病例的分类。该方法主要由CNN模块和Transformer模块的融合组成,利用两者的优点来完成更准确的分类任务。一方面,CNN分支在底层向Transformer分支补充了基本的局部特征信息;另一方面,在模型的中高层,CNN分支还可以提供不同的Transformer架构。另一方面,在模型的中高层,CNN分支还可以向Transformer架构提供不同的局部和全局特征信息,以增强模型获取特征信息的能力,提高图像分类的准确率。在网络的每个模块中都使用了一个快捷方式,解决了梯度发散导致的模型结果不佳的问题,优化了TB分类的有效性。所提出的轻量化模型可以很好地解决肺部CT TB分类过程中训练时间长的问题,提高分类速度。在兰州大学第一医院提供的CT图像数据集上对该方法进行了验证。实验结果表明,本文提出的基于肺部CT医学图像的结核病轻量化分类网络能够充分提取输入图像的特征信息,获得准确率较高的分类结果。
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