Shan Tong, Yan Jiayong, Cui Xiaoyao, Xie Lijian
School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China.
School of Medical Instruments, Shanghai University of Medicine and Health Sciences, Shanghai 201318, China.
Math Biosci Eng. 2023 Jan;20(1):365-382. doi: 10.3934/mbe.2023017. Epub 2022 Oct 8.
Accurate segmentation is a basic and crucial step for medical image processing and analysis. In the last few years, U-Net, and its variants, have become widely adopted models in medical image segmentation tasks. However, the multiple training parameters of these models determines high computation complexity, which is impractical for further applications. In this paper, by introducing depthwise separable convolution and attention mechanism into U-shaped architecture, we propose a novel lightweight neural network (DSCA-Net) for medical image segmentation. Three attention modules are created to improve its segmentation performance. Firstly, Pooling Attention (PA) module is utilized to reduce the loss of consecutive down-sampling operations. Secondly, for capturing critical context information, based on attention mechanism and convolution operation, we propose Context Attention (CA) module instead of concatenation operations. Finally, Multiscale Edge Attention (MEA) module is used to emphasize multi-level representative scale edge features for final prediction. The number of parameters in our network is 2.2 M, which is 71.6% less than U-Net. Experiment results across four public datasets show the potential and the dice coefficients are improved by 5.49% for ISIC 2018, 4.28% for thyroid, 1.61% for lung and 9.31% for nuclei compared with U-Net.
精确分割是医学图像处理与分析的基础且关键步骤。在过去几年中,U-Net及其变体已成为医学图像分割任务中广泛采用的模型。然而,这些模型的多个训练参数决定了其高计算复杂度,这对于进一步应用而言并不实用。在本文中,通过将深度可分离卷积和注意力机制引入U形架构,我们提出了一种用于医学图像分割的新型轻量级神经网络(DSCA-Net)。创建了三个注意力模块以提高其分割性能。首先,使用池化注意力(PA)模块来减少连续下采样操作的损失。其次,为了捕获关键上下文信息,基于注意力机制和卷积操作,我们提出了上下文注意力(CA)模块而非拼接操作。最后,多尺度边缘注意力(MEA)模块用于强调多级代表性尺度边缘特征以进行最终预测。我们网络中的参数数量为220万,比U-Net少71.6%。在四个公共数据集上的实验结果显示了其潜力,与U-Net相比,ISIC 2018的骰子系数提高了5.49%,甲状腺提高了4.28%,肺部提高了1.61%,细胞核提高了9.31%。