Kim June Hoan, Ryu Jae Ryun, Lee Boram, Chae Uikyu, Son Jong Wan, Park Bae Ho, Cho Il-Joo, Sun Woong
Department of Anatomy, Korea University College of Medicine, Seoul, South Korea.
Center for BioMicrosystems, Brain Science Institute, Korea Institute of Science and Technology (KIST), Seoul, South Korea.
Front Neuroanat. 2021 Oct 20;15:746057. doi: 10.3389/fnana.2021.746057. eCollection 2021.
The function of a neural circuit can be determined by the following: (1) characteristics of individual neurons composing the circuit, (2) their distinct connection structure, and (3) their neural circuit activity. However, prior research on correlations between these three factors revealed many limitations. In particular, profiling and modeling of the connectivity of complex neural circuits at the cellular level are highly challenging. To reduce the burden of the analysis, we suggest a new approach with simplification of the neural connection in an array of honeycomb patterns on 2D, using a microcontact printing technique. Through a series of guided neuronal growths in defined honeycomb patterns, a simplified neuronal circuit was achieved. Our approach allowed us to obtain the whole network connectivity at cellular resolution using a combination of stochastic multicolor labeling via viral transfection. Therefore, we were able to identify several types of hub neurons with distinct connectivity features. We also compared the structural differences between different circuits using three-node motif analysis. This new model system, iCANN, is the first experimental model of neural computation at the cellular level, providing neuronal circuit structures for the study of the relationship between anatomical structure and function of the neuronal network.
(1)构成该回路的单个神经元的特性;(2)它们独特的连接结构;(3)它们的神经回路活动。然而,先前关于这三个因素之间相关性的研究显示出许多局限性。特别是,在细胞水平上对复杂神经回路的连接性进行分析和建模极具挑战性。为了减轻分析负担,我们提出了一种新方法,即使用微接触印刷技术在二维蜂窝图案阵列中简化神经连接。通过一系列在特定蜂窝图案中引导神经元生长的过程,实现了一个简化的神经元回路。我们的方法使我们能够通过病毒转染结合随机多色标记,在细胞分辨率下获得整个网络的连接性。因此,我们能够识别出几种具有不同连接特征的枢纽神经元类型。我们还使用三节点基序分析比较了不同回路之间的结构差异。这个新的模型系统iCANN是细胞水平神经计算的首个实验模型,为研究神经网络的解剖结构与功能之间的关系提供了神经元回路结构。