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首页> 外文期刊>Physical review, E. Statistical physics, plasmas, fluids, and related interdisciplinary topics >Quantification of cancellous bone structure using symbolic dynamics and measures of complexity
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Quantification of cancellous bone structure using symbolic dynamics and measures of complexity

机译:使用符号动力学和复杂性度量量化松质骨结构

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摘要

In this study we generalize symbolic dynamics to analyze two-dimensional objects and utilize measures of complexity to quantify the structure of symbol-encoded images. This technique is applied to study quantitatively the structure of human cancellous bone by analyzing computed tomography images. First, the preprocessed images are transformed into symbols, applying a mixture of static and dynamic encoding. Next, the spatial distribution of cancellous bone is evaluated using measures of complexity. New parameters are introduced to quantify the cancellous bone architecture as a whole. The results exhibit that the complexity of the structure declines more rapidly than density during the loss of bone in osteoporosis, strongly suggesting an exponential relationship between bone mass and architecture. It is found that normal bone has complex ordered structure, while the structure during the initial stage of bone loss is characterized by lower complexity and a significantly higher level of disorder, which is maximal there. A strong grade of the bone loss leads again to ordered structure, however its complexity is minimal. In addition, this method is significantly sensitive to changes in structure of natural composite materials. [S1063-651X(98)08911-9]. [References: 50]
机译:在这项研究中,我们概括了符号动力学来分析二维对象,并利用复杂性的度量来量化符号编码图像的结构。通过分析计算机断层扫描图像,该技术可用于定量研究人体松质骨的结构。首先,将静态和动态编码混合使用,将预处理后的图像转换为符号。接下来,使用复杂性度量来评估松质骨的空间分布。引入了新的参数来量化整个松质骨结构。结果表明,在骨质疏松症的骨丢失过程中,结构的复杂性下降的速度比密度下降的速度快,这强烈暗示了骨量与结构之间的指数关系。发现正常骨骼具有复杂的有序结构,而在骨质流失初期的结构具有较低的复杂性和明显较高的无序度,这是最大的。严重的骨丢失会再次导致结构有序,但是其复杂性极小。另外,该方法对天然复合材料的结构变化非常敏感。 [S1063-651X(98)08911-9]。 [参考:50]

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