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在体内 X 射线微计算机断层扫描中进行自动定量骨分析。

Automated Quantitative Bone Analysis in In Vivo X-ray Micro-Computed Tomography.

出版信息

IEEE Trans Med Imaging. 2017 Sep;36(9):1955-1965. doi: 10.1109/TMI.2017.2712571. Epub 2017 Jun 6.

Abstract

Measurement and analysis of bone morphometry in 3D micro-computed tomography volumes using automated image processing and analysis improve the accuracy, consistency, reproducibility, and speed of preclinical osteological research studies. Automating segmentation and separation of individual bones in 3D micro-computed tomography volumes of murine models presents significant challenges considering partial volume effects and joints with thin spacing, i.e., 50 to [Formula: see text]. In this paper, novel hybrid splitting filters are presented to overcome the challenge of automated bone separation. This is achieved by enhancing joint contrast using rotationally invariant second-derivative operators. These filters generate split components that seed marker-controlled watershed segmentation. In addition, these filters can be used to separate metaphysis and epiphysis in long bones, e.g., femur, and remove the metaphyseal growth plate from the detected bone mask in morphometric measurements. Moreover, for slice-by-slice stereological measurements of long bones, particularly curved bones, such as tibia, the accuracy of the analysis can be improved if the planar measurements are guided to follow the longitudinal direction of the bone. In this paper, an approach is presented for characterizing the bone medial axis using morphological thinning and centerline operations. Building upon the medial axis, a novel framework is presented to automatically guide stereological measurements of long bones and enhance measurement accuracy and consistency. These image processing and analysis approaches are combined in an automated streamlined software workflow and applied to a range of in vivo micro-computed tomography studies for validation.

摘要

使用自动化图像处理和分析来测量和分析 3D 微计算机断层扫描体积中的骨形态计量学,可以提高临床前骨骼研究的准确性、一致性、可重复性和速度。考虑到部分容积效应和关节间距较窄(即 50 到 [公式:见文本]),在 3D 微计算机断层扫描体积中自动分割和分离单个骨骼存在重大挑战。在本文中,提出了新的混合分割滤波器来克服自动化骨骼分离的挑战。这是通过使用旋转不变二阶导数算子增强关节对比度来实现的。这些滤波器生成的分割分量为标记控制的分水岭分割提供了种子。此外,这些滤波器可用于分离长骨(例如股骨)的骨干和骨骺,并在形态计量测量中从检测到的骨骼掩模中去除骺板。此外,对于长骨的逐片体视学测量,特别是胫骨等弯曲骨,如果平面测量能够引导其沿骨骼的纵向方向进行,那么分析的准确性可以提高。在本文中,提出了一种使用形态细化和中心线操作来描述骨骼中轴的方法。基于中轴,提出了一种新的框架,用于自动引导长骨的体视学测量,提高测量的准确性和一致性。这些图像处理和分析方法被结合到一个自动化的流水线软件工作流程中,并应用于一系列体内微计算机断层扫描研究进行验证。

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