【24h】

Segmentation of Trabecular Bone for In Vivo CT Imaging Using a Novel Approach of Computing Spatial Variation in Bone and Marrow Intensities

机译:使用计算骨骼和骨髓强度空间变异的新方法进行小梁骨分割以进行体内CT成像

获取原文

摘要

Characterization of trabecular bone (TB) microarchitecture and computational modelling of bone strength are widely used in research and clinical studies related to osteoporosis, which is associated with elevated risk of fractures. Segmentation of TB network from the background marrow space is essential for quantitative assessment of the quality of TB microarchitecture and bone strength, which are key determinants of fracture risk. Clinical CT is rapidly emerging as a viable modality for in vivo TB microarchitectural imaging at peripheral sites. Here, we present a new method for TB segmentation using in vivo CT imaging of distal tibia. Our method is primarily based on computing the spatial variation in the background marrow intensity as well as the bone-marrow contrast. First, a new anisotropic diffusion algorithm is developed and applied to improve local separability of TB microstructures that uses Hessian matrix to locally guide the diffusion process. Subsequently, a new multi-scale morphological algorithm is developed and applied to determine spatial distribution of bone and marrow intensity values. The accuracy of the method was examined by comparing its performance with multi-user-selected regional thresholding for bone-marrow separation on in vivo CT images of ten subjects each containing twenty random regions of interest (ROIs). High sensitivity (0.93), specificity (0.93), and accuracy (0.93) of the new method were observed from experimental results. In addition, the impact of the new method on predicting bone strength was examined in a cadaveric study. Experimental results have shown that the new TB segmentation method significantly improves the ability (R~2 =0.82) of the computed TB thickness measure to predict actual bone strength determined by mechanical testing on TB cores.
机译:小梁骨(TB)微结构的表征和骨强度的计算模型被广泛用于与骨质疏松症相关的研究和临床研究中,这与骨折风险增加有关。从背景骨髓空间分割结核病网络对于定量评估结核病微结构的质量和骨强度是至关重要的,而结核病微结构和骨强度是骨折风险的关键决定因素。临床CT正迅速成为一种可行的方法,可用于在外周部位进行体内TB微结构成像。在这里,我们提出了一种使用远端胫骨的体内CT成像进行TB分割的新方法。我们的方法主要基于计算背景强度和骨髓对比度的空间变化。首先,开发了一种新的各向异性扩散算法,并将其应用于改善结核病微结构的局部可分离性,该结构使用Hessian矩阵来局部指导扩散过程。随后,开发了一种新的多尺度形态学算法,并将其应用于确定骨骼和骨髓强度值的空间分布。通过比较该方法的性能与十位受试者的体内CT图像上多位用户选择的用于骨髓分离的区域阈值来检查该方法的准确性,每位受试者均包含二十个感兴趣的随机区域(ROI)。实验结果表明,该方法具有较高的灵敏度(0.93),特异性(0.93)和准确性(0.93)。另外,在尸体研究中检查了新方法对预测骨强度的影响。实验结果表明,新的TB分割方法显着提高了计算出的TB厚度测量值的能力(R〜2 = 0.82),以预测通过对TB核心进行机械测试确定的实际骨强度。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号