Automatic Spinal Ultrasound Image Segmentation and Deployment for Real-time Spine Volumetric Reconstruction

Yifan Cao, C. Tan, Wenzhuo Qian, Wenhao Chai, Luhang Cui, Wen-xiong Yang, Xinben Hu, Yongjian Zhu, Wenhui Zhou, Xingfa Shen
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Abstract

Spinal ultrasound image segmentation, as the key for 3D spine reconstruction, has always been one of the most challenging issues in the field of medical image processing because of the intrinsic limitations of ultrasound imaging including low contrast, noise (artifacts, speckle), fuzzy and missing boundaries, etc. In this paper, we propose a real-time 3D spine volumetric reconstruction from spinal ultrasound images, which designs a 3D Slicer middleware to deploy our spine ultrasound segmentation model into the open-source software 3D Slicer. Specifically, we first train and fine-tune a deep residual U-shaped network for ultrasound image segmentation. Then a middleware is designed so that 3D Slicer can directly adopt our segmentation model written in Pytorch. Finally, our system achieves real-time 3D spine segmentation, reconstruction and visualization according to the model inference results. Comparative experiments demonstrate the effectiveness and superiority of our method, and our ultrasound segmentation model can obtain satisfactory Fuzzy-F1 scores and F1 scores.
用于实时脊柱体积重建的脊柱超声图像自动分割与部署
脊柱超声图像分割是脊柱三维重建的关键,由于超声图像本身存在对比度低、噪声(伪影、斑点)、边界模糊、缺失等局限性,一直是医学图像处理领域最具挑战性的问题之一。本文提出了一种基于脊柱超声图像的实时三维脊柱体积重建方法,该方法设计了一个3D切片器中间件,将我们的脊柱超声分割模型部署到开源软件3D切片器中。具体来说,我们首先训练和微调一个用于超声图像分割的深度残差u形网络。然后设计了一个中间件,使3D切片器可以直接采用我们用Pytorch编写的分割模型。最后,根据模型推理结果,实现了实时的三维脊柱分割、重建和可视化。对比实验证明了该方法的有效性和优越性,超声分割模型可以获得满意的Fuzzy-F1分数和F1分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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