College of Computer Science and Technology, Shanghai University of Electric Power, Shanghai 201399, China.
Department of Electronic Engineering, School of Electronic Information and Electrical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
Sensors (Basel). 2023 Feb 24;23(5):2546. doi: 10.3390/s23052546.
Medical images are used as an important basis for diagnosing diseases, among which CT images are seen as an important tool for diagnosing lung lesions. However, manual segmentation of infected areas in CT images is time-consuming and laborious. With its excellent feature extraction capabilities, a deep learning-based method has been widely used for automatic lesion segmentation of COVID-19 CT images. However, the segmentation accuracy of these methods is still limited. To effectively quantify the severity of lung infections, we propose a Sobel operator combined with multi-attention networks for COVID-19 lesion segmentation (SMA-Net). In our SMA-Net method, an edge feature fusion module uses the Sobel operator to add edge detail information to the input image. To guide the network to focus on key regions, SMA-Net introduces a self-attentive channel attention mechanism and a spatial linear attention mechanism. In addition, the Tversky loss function is adopted for the segmentation network for small lesions. Comparative experiments on COVID-19 public datasets show that the average Dice similarity coefficient (DSC) and joint intersection over union (IOU) of the proposed SMA-Net model are 86.1% and 77.8%, respectively, which are better than those in most existing segmentation networks.
医学影像被用作诊断疾病的重要依据,其中 CT 影像被视为诊断肺部病变的重要工具。然而,手动对 CT 影像中的感染区域进行分割既耗时又费力。基于深度学习的方法具有出色的特征提取能力,已被广泛应用于 COVID-19 CT 影像的自动病变分割。然而,这些方法的分割准确性仍然有限。为了有效量化肺部感染的严重程度,我们提出了一种 Sobel 算子与多注意力网络相结合的 COVID-19 病变分割方法(SMA-Net)。在我们的 SMA-Net 方法中,边缘特征融合模块使用 Sobel 算子为输入图像添加边缘细节信息。为了引导网络关注关键区域,SMA-Net 引入了自注意通道注意力机制和空间线性注意力机制。此外,分割网络采用 Tversky 损失函数处理小病变。在 COVID-19 公共数据集上的对比实验表明,所提出的 SMA-Net 模型的平均 Dice 相似系数(DSC)和联合交并比(IOU)分别为 86.1%和 77.8%,优于大多数现有分割网络。