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Volumetric Characterization of Human Patellar Cartilage Matrix on Phase Contrast X-Ray Computed Tomography

机译:人髌骨软骨基质对比X射线计算断层扫描的体积表征

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Phase contrast X-ray computed tomography (PCI-CT) has recently emerged as a novel imaging technique that allows visualization of cartilage soft tissue, subsequent examination of chondrocyte patterns, and their correlation to osteoarthritis. Previous studies have shown that 2D texture features are effective at distinguishing between healthy and osteoarthritic regions of interest annotated in the radial zone of cartilage matrix on PCI-CT images. In this study, we further extend the texture analysis to 3D and investigate the ability of volumetric texture features at characterizing chondrocyte patterns in the cartilage matrix for purposes of classification. Here, we extracted volumetric texture features derived from Minkowski Functional and gray-level co-occurrence matrices (GLCM) from 496 volumes of interest (VOI) annotated on PCI-CT images of human patellar cartilage specimens. The extracted features were then used in a machine-learning task involving support vector regression to classify ROIs as healthy or osteoarthritic. Classification performance was evaluated using the area under the receiver operating characteristic (ROC) curve (AUC). The best classification performance was observed with GLCM features correlation (AUC = 0.83 ± 0.06) and homogeneity (AUC = 0.82 ± 0.07), which significantly outperformed all Minkowski Functionals (p < 0.05). These results suggest that such quantitative analysis of chondrocyte patterns in human patellar cartilage matrix involving GLCM-derived statistical features can distinguish between healthy and osteoarthritic tissue with high accuracy.
机译:相位对比X射线计算机断层扫描(PCI-CT)最近被出现为一种新型成像技术,允许在软骨软组织的可视化,随后检查软骨细胞模式,以及它们与骨关节炎的相关性。以前的研究表明,2D纹理特征是区分在PCI-CT图像上的软骨基质的径向区域中的健康和骨关节区域之间的有效性。在这项研究中,我们进一步将纹理分析延伸到3D,并研究了在软骨矩阵中表征软骨晶体图案的体积纹理特征的能力,以便分类。在这里,我们从人髌骨软骨样本的PCI-CT图像上注释的496卷感兴趣(VOI)中提取了从Minkowski功能和灰度共发生矩阵(GLCM)的体积纹理特征。然后将提取的特征用于涉及支持向量回归的机器学习任务中,以将ROI分类为健康或骨关节炎。使用接收器操作特征(ROC)曲线(AUC)下的区域进行分类性能。使用GLCM具有相关性的最佳分类性能(AUC = 0.83±0.06)和均匀性(AUC = 0.82±0.07),这显着优于所有Minkowski功能(P <0.05)。这些结果表明,涉及GlCM衍生统计特征的人髌骨软骨基质中软骨细胞模式的这种定量分析可以以高精度的高精度区分健康和骨关节炎组织。

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