Cui H, Duan J, Lin L, Wu Q, Guo W, Zang Q, Zhou M, Fang W, Hu Y, Zou Z
School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai, China.
Department of Anesthesiology, The First Hospital of Putian City, Putian, China.
Ultrasound Med Biol. 2025 Aug;51(8):1227-1239. doi: 10.1016/j.ultrasmedbio.2025.04.006. Epub 2025 May 13.
Currently, cervical anesthesia is performed using three main approaches: superficial cervical plexus block, deep cervical plexus block, and intermediate plexus nerve block. However, each technique carries inherent risks and demands significant clinical expertise. Ultrasound imaging, known for its real-time visualization capabilities and accessibility, is widely used in both diagnostic and interventional procedures. Nevertheless, accurate segmentation of small and irregularly shaped structures such as the cervical and brachial plexuses remains challenging due to image noise, complex anatomical morphology, and limited annotated training data. This study introduces DEMAC-Net-a dual-encoder, multiattention collaborative network-to significantly improve the segmentation accuracy of these neural structures. By precisely identifying the cervical nerve pathway (CNP) and adjacent anatomical tissues, DEMAC-Net aims to assist clinicians, especially those less experienced, in effectively guiding anesthesia procedures and accurately identifying optimal needle insertion points. Consequently, this improvement is expected to enhance clinical safety, reduce procedural risks, and streamline decision-making efficiency during ultrasound-guided regional anesthesia.
DEMAC-Net combines a dual-encoder architecture with the Spatial Understanding Convolution Kernel (SUCK) and the Spatial-Channel Attention Module (SCAM) to extract multi-scale features effectively. Additionally, a Global Attention Gate (GAG) and inter-layer fusion modules refine relevant features while suppressing noise. A novel dataset, Neck Ultrasound Dataset (NUSD), was introduced, containing 1,500 annotated ultrasound images across seven anatomical regions. Extensive experiments were conducted on both NUSD and the BUSI public dataset, comparing DEMAC-Net to state-of-the-art models using metrics such as Dice Similarity Coefficient (DSC) and Intersection over Union (IoU).
On the NUSD dataset, DEMAC-Net achieved a mean DSC of 93.3%, outperforming existing models. For external validation on the BUSI dataset, it demonstrated superior generalization, achieving a DSC of 87.2% and a mean IoU of 77.4%, surpassing other advanced methods. Notably, DEMAC-Net displayed consistent segmentation stability across all tested structures.
The proposed DEMAC-Net significantly improves segmentation accuracy for small nerves and complex anatomical structures in ultrasound images, outperforming existing methods in terms of accuracy and computational efficiency. This framework holds great potential for enhancing ultrasound-guided procedures, such as peripheral nerve blocks, by providing more precise anatomical localization, ultimately improving clinical outcomes.
目前,颈部麻醉主要采用三种方法:颈浅丛阻滞、颈深丛阻滞和中间丛神经阻滞。然而,每种技术都有其固有的风险,并且需要丰富的临床专业知识。超声成像以其实时可视化能力和易获取性而闻名,广泛应用于诊断和介入手术中。尽管如此,由于图像噪声、复杂的解剖形态以及有限的标注训练数据,对颈丛和臂丛等小的、形状不规则的结构进行精确分割仍然具有挑战性。本研究引入了DEMAC-Net——一种双编码器、多注意力协作网络——以显著提高这些神经结构的分割精度。通过精确识别颈神经通路(CNP)和相邻的解剖组织,DEMAC-Net旨在帮助临床医生,尤其是经验较少的医生,有效地指导麻醉手术并准确识别最佳进针点。因此,这一改进有望提高临床安全性、降低手术风险并简化超声引导区域麻醉过程中的决策效率。
DEMAC-Net将双编码器架构与空间理解卷积核(SUCK)和空间通道注意力模块(SCAM)相结合,以有效提取多尺度特征。此外,全局注意力门(GAG)和层间融合模块在抑制噪声的同时细化相关特征。引入了一个新的数据集——颈部超声数据集(NUSD),其中包含七个解剖区域的1500张标注超声图像。在NUSD和BUSI公共数据集上进行了广泛的实验,使用骰子相似系数(DSC)和交并比(IoU)等指标将DEMAC-Net与现有模型进行比较。
在NUSD数据集上,DEMAC-Net的平均DSC达到93.3%,优于现有模型。在BUSI数据集上进行外部验证时,它表现出卓越的泛化能力,DSC达到87.2%,平均IoU为77.4%,超过了其他先进方法。值得注意的是,DEMAC-Net在所有测试结构上都表现出一致的分割稳定性。
所提出的DEMAC-Net显著提高了超声图像中小神经和复杂解剖结构的分割精度,在准确性和计算效率方面优于现有方法。该框架通过提供更精确的解剖定位,在增强超声引导手术(如周围神经阻滞)方面具有巨大潜力,最终改善临床结果。