Development of a novel simulation code to predict three-dimensional neurogenesis by using multilayered cellular automaton

E. Nakamachi, Akie Nakayama, Takehiko Yamamoto, Y. Morita, H. Sakamoto
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Abstract

In this study, a novel simulation code to predict three-dimensional (3D) neurogenesis was developed by using a multilayered cellular automaton (CA) method. Recently, the induced pluripotent stem cell therapy treatments have rapidly grown up as an attractive repair and regeneration technologies for damaged central nervous system (CNS). However, understanding the repair mechanism and developing a numerical analysis code to predict CNS neurogenesis process have ultimate difficulties because more than hundreds of billions of neurons connect each other, and it is almost impossible to analyze the neurogenesis evolution process. Especially, the axonal extension to generate the neural network system is extremely difficult. In this study, based on the phase contrast microscopy (PCM) and the multiphoton microscope (MPM) observations of two-dimensional (2D) and 3D nerve cell network generation of the pheochromocytoma cells (PC12), a novel simulation code to predict the CNS morphogenesis was developed. At first, time-lapse PCM observations have been executed to understand the nerve cell axonal extension and branching. Secondly, 3D representative volume elements (RVEs) of cortex were derived by using Nissl-stained cerebral cortex images. Finally, a 3D CA simulation code for neurogenesis was developed based on multilayered CA algorithms, such as the dendrites outgrowth, an axon selection from dendrites, the extension enhancement induced by the nerve growth factor (NGF), and the branching caused by microtubule collapse under the effect of Netrin-1. Our newly developed CA simulation code was confirmed as a comprehensive code to predict neurogenesis processes through comparison with PCM and MPM observation results.
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利用多层元胞自动机预测三维神经发生的新型模拟代码的开发
在这项研究中,利用多层细胞自动机(CA)方法开发了一种新的模拟代码来预测三维(3D)神经发生。近年来,诱导多能干细胞治疗作为一种有吸引力的中枢神经系统损伤修复和再生技术迅速发展起来。然而,了解修复机制和开发预测中枢神经系统神经发生过程的数值分析代码具有极大的困难,因为数千亿多个神经元相互连接,几乎不可能分析神经发生进化过程。特别是轴突扩展生成神经网络系统是非常困难的。本研究基于相对比显微镜(PCM)和多光子显微镜(MPM)对嗜铬细胞瘤细胞(PC12)的二维(2D)和三维神经细胞网络生成的观察,开发了一种新的预测中枢神经系统形态发生的模拟代码。首先,延时PCM观察已被执行,以了解神经细胞轴突延伸和分支。其次,利用nissl染色的大脑皮层图像,得到皮层的三维代表性体积单元(RVEs);最后,基于多层CA算法,如树突生长、树突轴突选择、神经生长因子(NGF)诱导的伸展增强以及Netrin-1作用下微管塌陷引起的分支,开发了神经发生的三维CA模拟代码。通过与PCM和MPM观察结果的比较,证实了我们新开发的CA模拟代码是预测神经发生过程的综合代码。
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
24
审稿时长
33 weeks
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