Suppr超能文献

S-Net:一种用于在医学图像分割中增强细节保留的新型浅层网络。

S-Net: A novel shallow network for enhanced detail retention in medical image segmentation.

作者信息

Shang Qinghua, Wang Guanglei, Wang Xihao, Li Yan, Wang Hongrui

机构信息

College of Electronic and Information Engineering, Hebei University, Hebei 071002, PR China.

College of Electronic and Information Engineering, Hebei University, Hebei 071002, PR China; Hebei Key Laboratory of Precise Imaging of Inflammation Related Tumors, Hebei, 071000, PR China.

出版信息

Comput Methods Programs Biomed. 2025 Jun;265:108730. doi: 10.1016/j.cmpb.2025.108730. Epub 2025 Mar 20.

Abstract

BACKGROUND AND OBJECTIVE

In recent years, deep U-shaped network architectures have been widely applied to medical image segmentation tasks, achieving notable successes. However, the inherent limitation of this architecture is that multiple down-sampling lead to significant loss of input image detail information. A series of improvements in skip connections designed to enhance information transfer have not fundamentally resolved the issue. Therefore, we consider retaining information in a simpler and more effective way.

METHODS

In this paper, we propose a novel shallow network, S-Net, which contains only two output resolution stages, allowing for the preservation of more detailed information from the input images. To address the challenge of shallow networks primarily relying on high-resolution feature maps as the main information flow, we propose a Global-Local Feature Fusion (GLFF) module at the network bottleneck layer. This module integrates the superior global contextual information extraction capabilities of Mamba with the local feature capturing abilities of multi-scale depthwise convolutions, enabling the extraction of crucial semantic features from high-resolution feature maps within a shallow network architecture, while maintaining a smaller model size.

RESULTS

Extensive experiments on four different types of medical image datasets show that S-Net achieves the best segmentation performance compared to existing models, with more refined segmentation details. For example, on ultrasound datasets (BUSI), the IOU is 2.95% higher and DICE is 2.27% higher than the second-best model. Additionally, S-Net has only 1.52M parameters, making it competitive in terms of lightweight design.

CONCLUSIONS

Comparative and ablation experiments demonstrate the efficiency of the proposed architecture and modules. It shows that we do not need many down-sampling operations to reduce the size of feature maps significantly. This work provides new research ideas for further improving the accuracy of medical image segmentation and expands the research direction for model lightweight design. The code will be available at: https://github.com/qinghua0715/S-Net.

摘要

背景与目的

近年来,深度U型网络架构已广泛应用于医学图像分割任务,并取得了显著成功。然而,这种架构的固有局限性在于多次下采样会导致输入图像细节信息大量丢失。为增强信息传递而对跳跃连接进行的一系列改进并未从根本上解决该问题。因此,我们考虑以更简单有效的方式保留信息。

方法

在本文中,我们提出了一种新颖的浅层网络S-Net,它仅包含两个输出分辨率阶段,能够保留来自输入图像的更多详细信息。为应对浅层网络主要依赖高分辨率特征图作为主要信息流的挑战,我们在网络瓶颈层提出了一种全局-局部特征融合(GLFF)模块。该模块将Mamba卓越的全局上下文信息提取能力与多尺度深度卷积的局部特征捕捉能力相结合,能够在浅层网络架构中从高分辨率特征图中提取关键语义特征,同时保持较小的模型规模。

结果

在四种不同类型的医学图像数据集上进行的大量实验表明,与现有模型相比,S-Net实现了最佳的分割性能,分割细节更精细。例如,在超声数据集(BUSI)上,其交并比(IOU)比次优模型高2.95%,骰子系数(DICE)高2.27%。此外,S-Net仅具有152万个参数,在轻量级设计方面具有竞争力。

结论

对比实验和消融实验证明了所提出架构和模块的有效性。结果表明,我们无需进行大量下采样操作就能显著减小特征图的尺寸。这项工作为进一步提高医学图像分割的准确性提供了新的研究思路,并拓展了模型轻量级设计的研究方向。代码将发布于:https://github.com/qinghua0715/S-Net

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验