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首页> 外文期刊>Journal of Microscopy >An investigation of segmentation methods and texture analysis applied to tomographic images of human vertebral cancellous bone.
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An investigation of segmentation methods and texture analysis applied to tomographic images of human vertebral cancellous bone.

机译:分割方法和纹理分析应用于人椎骨松质层断层图像的研究。

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The goal of this study is to determine architectural and textural parameters on computed tomographic (CT) images, allowing us to explain the mechanical compressive properties of bone. Although the resolution (150 microm) is of the same order of magnitude as the trabecular thickness, this method enables the possibility of perfecting an in vivo peripheral CT system with an acceptable radiation dose for the patient. This study was performed on L2 vertebrae cancellous bone specimens taken after necropsy in 22 subjects aged 47-95 years (mean: 79 years). The segmentation process is a crucial point in the determination of accurate architectural parameters. In this paper the use of two different segmentation methods is investigated, based on an edge enhancement and a region growing approach. The images are compared and the architectural parameters extracted from the images segmented by both methods lead to a quantitative evaluation. The parameters are found to be globally robust towards the segmentation process, although some of them are much more sensitive to the approach used. Highly significant correlations (P < 0.0005) have been obtained between the two segmentation methods for all the parameters, with rho ranging from 0.70 to 0.93. In order to improve the assessment of bone architecture, texture analysis (run length method) was investigated. New features are obtained from an image reduced to 16 grey-levels. Textural parameters in addition to architectural parameters in a multivariate regression model increase significantly (P = 0.01) the prediction of the maximum compressive strength (variation of r2 from 0.75 up to 0.89).
机译:这项研究的目的是确定计算机断层扫描(CT)图像上的建筑和质地参数,从而使我们能够解释骨骼的机械压缩特性。尽管分辨率(150微米)与小梁厚度相同,但此方法可以为患者提供可接受的放射剂量,从而完善体内外围CT系统。这项研究是对22例年龄在47-95岁(平均79岁)的受试者进行尸检后采集的L2椎骨松质骨标本进行的。分割过程是确定准确的建筑参数的关键点。在本文中,基于边缘增强和区域增长方法,研究了两种不同分割方法的使用。对图像进行比较,并从两种方法分割出的图像中提取建筑参数,从而进行定量评估。尽管这些参数中的某些参数对所使用的方法更加敏感,但这些参数对于分段过程具有全局鲁棒性。对于所有参数,两种分割方法之间已经获得了高度显着的相关性(P <0.0005),rho范围为0.70至0.93。为了改善对骨结构的评估,研究了纹理分析(游程法)。从缩小到16灰度级的图像获得新功能。在多元回归模型中,除了建筑参数外,结构参数也显着提高了最大抗压强度的预测值(P = 0.01)(r2从0.75到0.89的变化)。

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