Lou Henan, Wen Xiaobo, Lin Fanxia, Peng Zhan, Wang Qiuxiao, Ren Ruimei, Xu Junlin, Fan Jinfei, Song Hao, Ji Xiaomeng, Wang Huiyu, Sun Xiangyin, Dong Yinying
Department of Radiation Oncology, The Affiliated Hospital of Qingdao University, Qingdao, China.
Department of Radiology, The Affiliated Hospital of Qingdao University, Qingdao, China.
BMC Med Imaging. 2025 May 30;25(1):197. doi: 10.1186/s12880-025-01737-7.
This study aimed to construct a novel model, Multi-Spatial Attention U-Net (MSAU-Net) by incorporating our proposed Multi-Spatial Attention (MSA) block into the U-Net for the automated segmentation of the gallbladder on CT images.
The gallbladder dataset consists of CT images of retrospectively-collected 152 liver cancer patients and corresponding ground truth delineated by experienced physicians. Our proposed MSAU-Net model was transformed into two versions V1(with one Multi-Scale Feature Extraction and Fusion (MSFEF) module in each MSA block) and V2 (with two parallel MSEFE modules in each MSA blcok). The performances of V1 and V2 were evaluated and compared with four other derivatives of U-Net or state-of-the-art models quantitatively using seven commonly-used metrics, and qualitatively by comparison against experienced physicians' assessment.
MSAU-Net V1 and V2 models both outperformed the comparative models across most quantitative metrics with better segmentation accuracy and boundary delineation. The optimal number of MSA was three for V1 and two for V2. Qualitative evaluations confirmed that they produced results closer to physicians' annotations. External validation revealed that MSAU-Net V2 exhibited better generalization capability.
The MSAU-Net V1 and V2 both exhibited outstanding performance in gallbladder segmentation, demonstrating strong potential for clinical application. The MSA block enhances spatial information capture, improving the model's ability to segment small and complex structures with greater precision. These advantages position the MSAU-Net V1 and V2 as valuable tools for broader clinical adoption.
本研究旨在通过将我们提出的多空间注意力(MSA)模块融入U-Net,构建一种新型模型——多空间注意力U-Net(MSAU-Net),用于在CT图像上自动分割胆囊。
胆囊数据集由回顾性收集的152例肝癌患者的CT图像以及经验丰富的医生绘制的相应真实标注组成。我们提出的MSAU-Net模型被转化为两个版本V1(每个MSA模块中有一个多尺度特征提取与融合(MSFEF)模块)和V2(每个MSA模块中有两个并行的MSEFE模块)。使用七个常用指标对V1和V2的性能进行定量评估,并与U-Net的其他四个衍生模型或先进模型进行比较,同时通过与经验丰富的医生的评估进行定性比较。
MSAU-Net V1和V2模型在大多数定量指标上均优于对比模型,具有更好的分割精度和边界描绘。V1的MSA最佳数量为三个,V2为两个。定性评估证实它们产生的结果更接近医生的标注。外部验证表明MSAU-Net V2具有更好的泛化能力。
MSAU-Net V1和V2在胆囊分割中均表现出出色的性能,具有很强的临床应用潜力。MSA模块增强了空间信息捕获能力,提高了模型更精确分割小而复杂结构的能力。这些优势使MSAU-Net V1和V2成为更广泛临床应用的有价值工具。