人类新纹状体中突起神经元的二值图像:利用单分形分析参数进行聚类分类

N. Milosevic, V. Vranes, Damjan Stojić
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引用次数: 0

摘要

纹状体(即新纹状体)是基底神经节的主要组成部分之一。它是由三个原子核组成的复杂结构。人类纹状体神经元首先可以直观地分为两种类型(刺状神经元和刺状神经元),但进一步分类可以识别出刺状神经元的两个亚群和刺状神经元的三个亚群。本研究的最初目的是利用两种主要的聚类分析技术来确认或改进纹状体神经元的现有划分。利用光学显微镜共捕捉到175张神经元的二维图像,并用数码相机进行记录。专门的公共软件Image J用于图像重建和测量。神经元的每个二值图像都用单分形分析的表观参数进行了量化。层次聚类分析和k-聚类方法将现有的两组刺细胞分为三类。此外,还报道了两种功能不同的细胞核在所有组中的形态差异。据我们所知,到目前为止,成人新纹状体中神经元类型的存在主要是用欧几里得参数建立和描述的。因此,本研究仅用单分形参数对细胞进行定量。在本研究中,只使用了两种类型的刺状神经元。但是两种聚类分析技术发现了三组神经元。这一结果需要用相同的分类技术,但使用不同的计算参数进行验证。最后,本研究对两核背板细胞类型的差异提供了模糊的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Binary Images of Aspiny Neurons from the Human Neostriatum: Cluster Classification Using Parameters of Monofractal Analysis
The striatum (i.e. neostriatum) is one of the principal components of the basal ganglia. It is complex structure which consists of the three nuclei. Human striatum neurons firstly can be visually classified into two types (spiny and aspiny), but further classification recognizes two subgroups of spiny, and three subgroups of aspiny neurons. The original goal of this study is to confirm or improve the existing division of striatal neurons using two main techniques of cluster analysis. A total of 175 two dimensional images of aspiny neurons have been captured by the light microscope, and recorded with accompanying digital camera. Specialized public software Image J has been used for both image reconstruction and measurement. Each binary image of the neuron have been quantified with apparent parameters of monofractal analysis. Hierarchical cluster analysis and k-cluster method classified two existing groups of aspiny cells into three classes. Moreover, the morphometric difference in all groups between two functional different nuclei were reported. To the best of our knowledge, the presence of neuronal types in the adult human neostriatum has thus far been established and described mainly with Euclidean parameters. Thus, the present study, quantifies cells with monofractal parameters only. In the present study, only two types of aspiny neurons were used. But two techniques of cluster analysis found three groups of neurons. This results need to be verified with same classification technique, but using different computational parameters. Finally, the present study offer vague conclusion regarding difference in cell types between two cores of dorsal lamina.
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