基于计算机断层扫描图像半自动分割的膝关节空间高分辨率体积量化

H. Mezlini, Rabaa Youssef, H. Bouhadoun, E. Budyn, J. Laredo, S. Sevestre, C. Chappard
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引用次数: 4

摘要

骨关节炎(OA)是一种关节疾病,会导致疼痛、僵硬和活动能力下降。膝关节OA发病率最高。骨性关节炎的主要特征是软骨丢失导致关节间隙(JS)狭窄。通常,通过在二维x射线图像上测量最小JS来监测OA的进展。新的基于锥形束计算机断层扫描的专用系统,提供足够的图像质量和良好的剂量特性正在开发中。有了这些新系统,就有可能遵循3D JS的变化。高分辨率外周计算机断层扫描(HR-pQCT)通常用于评估小梁和皮质骨矿物质密度,已在膝关节标本上进行了各向同性体素为82微米。本文提出了一种新的半自动分割方法来测量JS的三维局部变化。在HR-pQCT数据集上进行了实验,并将实验结果扩展到其他低分辨率和/或锥束几何的计算机断层扫描图像上。
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High resolution volume quantification of the knee joint space based on a semi-automatic segmentation of computed tomography images
Osteoarthritis (OA) is a joint disorder that causes pain, stiffness and decreased mobility. Knee OA presents the greatest morbidity. The main characteristic of OA is the cartilage loss inducing joint space (JS) narrowing. Usually, the progression of OA is monitored by the minimum JS measurement on 2D X-rays images. New dedicated systems based on cone beam computed tomography, providing enough image quality and with favourable dose characteristics are under development. With these new systems, it would be possible to follow the 3D JS changes. High resolution peripheral computed tomography (HR-pQCT) usually used for assessing the trabecular and cortical bone mineral density have been performed on specimen knees with an isotropic voxel of 82 microns. We present here a new semi-automatic segmentation method to measure the 3D local variations of JS. The experiments have been done on HR-pQCT data set and the results have been extended to other computed tomography images with low resolution and/or with cone beam geometry.
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