Peng Boyuan, Liu Yiyang, Wang Wenwen, Zhou Qin, Fang Li, Zhu Xin
Graduate Department of Computer Science and Engineering, The University of Aizu, Aizu-Wakamatsu 965-8580, Japan.
Department of Obstetrics and Gynecology, Tongji Hospital, Huazhong University of Science and Technology, Wuhan 430074, China.
Diagnostics (Basel). 2024 Jul 3;14(13):1423. doi: 10.3390/diagnostics14131423.
Automated perimetrium segmentation of transvaginal ultrasound images is an important process for computer-aided diagnosis of uterine diseases. However, ultrasound images often contain various structures and textures, and these structures have different shapes, sizes, and contrasts; therefore, accurately segmenting the parametrium region of the uterus in transvaginal uterine ultrasound images is a challenge. Recently, many fully supervised deep learning-based methods have been proposed for the segmentation of transvaginal ultrasound images. Nevertheless, these methods require extensive pixel-level annotation by experienced sonographers. This procedure is expensive and time-consuming. In this paper, we present a bidirectional copy-paste Mamba (BCP-Mamba) semi-supervised model for segmenting the parametrium. The proposed model is based on a bidirectional copy-paste method and incorporates a U-shaped structure model with a visual state space (VSS) module instead of the traditional sampling method. A dataset comprising 1940 transvaginal ultrasound images from Tongji Hospital, Huazhong University of Science and Technology is utilized for training and evaluation. The proposed BCP-Mamba model undergoes comparative analysis with two widely recognized semi-supervised models, BCP-Net and U-Net, across various evaluation metrics including Dice, Jaccard, average surface distance (ASD), and Hausdorff_95. The results indicate the superior performance of the BCP-Mamba semi-supervised model, achieving a Dice coefficient of 86.55%, surpassing both U-Net (80.72%) and BCP-Net (84.63%) models. The Hausdorff_95 of the proposed method is 14.56. In comparison, the counterparts of U-Net and BCP-Net are 23.10 and 21.34, respectively. The experimental findings affirm the efficacy of the proposed semi-supervised learning approach in segmenting transvaginal uterine ultrasound images. The implementation of this model may alleviate the expert workload and facilitate more precise prediction and diagnosis of uterine-related conditions.
经阴道超声图像的子宫周围组织自动分割是子宫疾病计算机辅助诊断的重要过程。然而,超声图像通常包含各种结构和纹理,且这些结构具有不同的形状、大小和对比度;因此,在经阴道子宫超声图像中准确分割子宫周围组织区域是一项挑战。最近,已经提出了许多基于深度学习的全监督方法用于经阴道超声图像的分割。然而,这些方法需要经验丰富的超声医师进行大量的像素级标注。这个过程既昂贵又耗时。在本文中,我们提出了一种用于分割子宫周围组织的双向复制粘贴曼巴(BCP-Mamba)半监督模型。所提出的模型基于双向复制粘贴方法,并结合了具有视觉状态空间(VSS)模块的U形结构模型,而不是传统的采样方法。使用来自华中科技大学同济医学院附属同济医院的1940张经阴道超声图像组成的数据集进行训练和评估。所提出的BCP-Mamba模型与两个广泛认可的半监督模型BCP-Net和U-Net在包括Dice、Jaccard、平均表面距离(ASD)和Hausdorff_95等各种评估指标上进行了比较分析。结果表明BCP-Mamba半监督模型具有卓越的性能,Dice系数达到86.55%,超过了U-Net(80.72%)和BCP-Net(84.63%)模型。所提出方法的Hausdorff_95为14.56。相比之下,U-Net和BCP-Net的对应值分别为23.10和21.34。实验结果证实了所提出的半监督学习方法在分割经阴道子宫超声图像方面的有效性。该模型的实施可以减轻专家的工作量,并有助于对子宫相关病症进行更精确的预测和诊断。