Jiang Weiwei, Mei Fang, Xie Qiaolin
College of Computer Science and Technology, Zhejiang University of Technology, Hangzhou, China.
Front Physiol. 2022 Oct 24;13:1051808. doi: 10.3389/fphys.2022.1051808. eCollection 2022.
Scoliosis is a 3D deformity of the spine in which one or more segments of the spine curve laterally, usually with rotation of the vertebral body. Generally, having a Cobb angle (Cobb) greater than 10° can be considered scoliosis. In spine imaging, reliable and accurate identification and segmentation of bony features are crucial for scoliosis assessment, disease diagnosis, and treatment planning. Compared with commonly used X-ray detection methods, ultrasound has received extensive attention from researchers in the past years because of its lack of radiation, high real-time performance, and low price. On the basis of our previous research on spinal ultrasound imaging, this work combines artificial intelligence methods to create a new spine ultrasound image segmentation model called ultrasound global guidance block network (UGBNet), which provides a completely automatic and reliable spine segmentation and scoliosis visualization approach. Our network incorporates a global guidance block module that integrates spatial and channel attention, through which long-range feature dependencies and contextual scale information are learned. We evaluate the performance of the proposed model in semantic segmentation on spinal ultrasound datasets through extensive experiments with several classical learning segmentation methods, such as UNet. Results show that our method performs better than other approaches. Our UGBNet significantly improves segmentation precision, which can reach 74.2% on the evaluation metric of the Dice score.
脊柱侧弯是脊柱的一种三维畸形,其中脊柱的一个或多个节段向侧面弯曲,通常伴有椎体旋转。一般来说,Cobb角大于10°可被视为脊柱侧弯。在脊柱成像中,可靠且准确地识别和分割骨骼特征对于脊柱侧弯评估、疾病诊断和治疗规划至关重要。与常用的X射线检测方法相比,超声因其无辐射、实时性高和价格低廉,在过去几年受到了研究人员的广泛关注。基于我们之前对脊柱超声成像的研究,这项工作结合人工智能方法创建了一种新的脊柱超声图像分割模型,称为超声全局引导块网络(UGBNet),它提供了一种完全自动且可靠的脊柱分割和脊柱侧弯可视化方法。我们的网络包含一个集成了空间和通道注意力的全局引导块模块,通过该模块可以学习到远程特征依赖和上下文尺度信息。我们通过与几种经典的学习分割方法(如UNet)进行广泛实验,评估了所提出模型在脊柱超声数据集语义分割中的性能。结果表明,我们的方法比其他方法表现更好。我们的UGBNet显著提高了分割精度,在Dice分数评估指标上可达74.2%。