在 X 射线计算机断层扫描图像中分割腰肌的三维数值方案

Giulio Paolucci, Isabella Cama, Cristina Campi, Michele Piana
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引用次数: 0

摘要

腰肌形态和功能成像分析已被证明是评估肌肉疏松症的一种准确方法,即全身骨骼肌质量和功能的丧失,可能与多因素致病有关。要将肌肉疏松症评估纳入放射学工作流程,就需要实施图像处理计算管道,以保证分割的可靠性和高度自动化。本研究利用三维数值方案对低剂量 X 射线计算机断层扫描图像中的组织进行分割。具体来说,我们重点研究了水平集方法,并比较了两种标准方法--经典演化模型和三维大地模型--的性能,以及后一种方法的原始一阶修正的性能。分析结果表明,这些基于梯度的方案保证了人工分割的可靠性,而且一阶方案所需的计算负担明显小于二阶方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Three-dimensional numerical schemes for the segmentation of the psoas muscle in X-ray computed tomography images
The analysis of the psoas muscle in morphological and functional imaging has proved to be an accurate approach to assess sarcopenia, i.e. a systemic loss of skeletal muscle mass and function that may be correlated to multifactorial etiological aspects. The inclusion of sarcopenia assessment into a radiological workflow would need the implementation of computational pipelines for image processing that guarantee segmentation reliability and a significant degree of automation. The present study utilizes three-dimensional numerical schemes for psoas segmentation in low-dose X-ray computed tomography images. Specifically, here we focused on the level set methodology and compared the performances of two standard approaches, a classical evolution model and a three-dimension geodesic model, with the performances of an original first-order modification of this latter one. The results of this analysis show that these gradient-based schemes guarantee reliability with respect to manual segmentation and that the first-order scheme requires a computational burden that is significantly smaller than the one needed by the second-order approach.
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