Wang Luoyan, Zhou Xiaogen, Nie Xingqing, Lin Xingtao, Li Jing, Zheng Haonan, Xue Ensheng, Chen Shun, Chen Cong, Du Min, Tong Tong, Gao Qinquan, Zheng Meijuan
College of Physics and Information Engineering, Fuzhou University, Fuzhou, China.
Fujian Key Lab of Medical Instrumentation & Pharmaceutical Technology, Fuzhou University, Fuzhou, China.
Front Neurosci. 2022 May 19;16:878718. doi: 10.3389/fnins.2022.878718. eCollection 2022.
Automated thyroid nodule classification in ultrasound images is an important way to detect thyroid nodules and to make a more accurate diagnosis. In this paper, we propose a novel deep convolutional neural network (CNN) model, called n-ClsNet, for thyroid nodule classification. Our model consists of a multi-scale classification layer, multiple skip blocks, and a hybrid atrous convolution (HAC) block. The multi-scale classification layer first obtains multi-scale feature maps in order to make full use of image features. After that, each skip-block propagates information at different scales to learn multi-scale features for image classification. Finally, the HAC block is used to replace the downpooling layer so that the spatial information can be fully learned. We have evaluated our n-ClsNet model on the TNUI-2021 dataset. The proposed n-ClsNet achieves an average accuracy (ACC) score of 93.8% in the thyroid nodule classification task, which outperforms several representative state-of-the-art classification methods.
超声图像中甲状腺结节的自动分类是检测甲状腺结节并进行更准确诊断的重要方法。在本文中,我们提出了一种用于甲状腺结节分类的新型深度卷积神经网络(CNN)模型,称为n-ClsNet。我们的模型由一个多尺度分类层、多个跳跃块和一个混合空洞卷积(HAC)块组成。多尺度分类层首先获取多尺度特征图,以便充分利用图像特征。之后,每个跳跃块在不同尺度上传播信息,以学习用于图像分类的多尺度特征。最后,使用HAC块代替下采样层,以便能够充分学习空间信息。我们在TNUI-2021数据集上评估了我们的n-ClsNet模型。所提出的n-ClsNet在甲状腺结节分类任务中实现了93.8%的平均准确率(ACC)得分,优于几种具有代表性的最新分类方法。