Department of Biophysics, Faculty of Medicine, University of Belgrade, Belgrade, Serbia.
Adv Neurobiol. 2024;36:173-189. doi: 10.1007/978-3-031-47606-8_8.
This chapter begins by showing the difference between fractal geometry and fractal analysis. The text shows the difference between mathematical and natural fractals and how they are best defined by explaining the concept of fractal analysis. Furthermore, the text presents the most famous technique of fractal analysis: the box-counting method. Defining this method and showing the methodology that leads to the precise value of the fractal (i.e., the box) dimension is done by demonstrating the images of human dentate neurons. A more detailed explanation of the methodology was presented in the previous version of this chapter.This version promotes the notion of monofractal analysis and shows how three types of the same neuronal images can quantify four image properties. The results showed that monofractal parameters successfully quantified four image properties in three nuclei of the cerebellum. Finally, the author discusses the results of this chapter and previously published conclusions. The results show how the monofractal parameters discriminate images of neurons from the three nuclei of the human cerebrum. These outcomes are discussed along with the results of previous studies.
这一章首先展示了分形几何和分形分析之间的区别。文本通过解释分形分析的概念,展示了数学分形和自然分形之间的区别,以及如何最好地对它们进行定义。此外,本文还介绍了分形分析最著名的技术:盒子计数法。通过展示人类齿状神经元的图像,定义了这种方法,并展示了导致分形(即盒子)维数精确值的方法。在本章的前一个版本中,对该方法进行了更详细的解释。本版本提出了单分形分析的概念,并展示了三种相同神经元图像如何量化四种图像属性。结果表明,单分形参数成功量化了小脑三个核中的四种图像属性。最后,作者讨论了这一章和以前发表的结论的结果。结果表明,单分形参数如何区分来自人脑三个核的神经元图像。这些结果与以前的研究结果一起进行了讨论。