Wolfson Institute for Biomedical Research and Department of Neuroscience, Physiology and Pharmacology, University College London, London, United Kingdom.
PLoS Comput Biol. 2010 Aug 5;6(8):e1000877. doi: 10.1371/journal.pcbi.1000877.
Understanding the principles governing axonal and dendritic branching is essential for unravelling the functionality of single neurons and the way in which they connect. Nevertheless, no formalism has yet been described which can capture the general features of neuronal branching. Here we propose such a formalism, which is derived from the expression of dendritic arborizations as locally optimized graphs. Inspired by Ramón y Cajal's laws of conservation of cytoplasm and conduction time in neural circuitry, we show that this graphical representation can be used to optimize these variables. This approach allows us to generate synthetic branching geometries which replicate morphological features of any tested neuron. The essential structure of a neuronal tree is thereby captured by the density profile of its spanning field and by a single parameter, a balancing factor weighing the costs for material and conduction time. This balancing factor determines a neuron's electrotonic compartmentalization. Additions to this rule, when required in the construction process, can be directly attributed to developmental processes or a neuron's computational role within its neural circuit. The simulations presented here are implemented in an open-source software package, the "TREES toolbox," which provides a general set of tools for analyzing, manipulating, and generating dendritic structure, including a tool to create synthetic members of any particular cell group and an approach for a model-based supervised automatic morphological reconstruction from fluorescent image stacks. These approaches provide new insights into the constraints governing dendritic architectures. They also provide a novel framework for modelling and analyzing neuronal branching structures and for constructing realistic synthetic neural networks.
理解轴突和树突分支的原理对于揭示单个神经元的功能以及它们的连接方式至关重要。然而,目前还没有描述可以捕捉神经元分支的一般特征的形式主义。在这里,我们提出了这样一种形式主义,它是从树突分支的表达作为局部优化的图形中得出的。受拉蒙·卡哈尔(Ramón y Cajal)在神经电路中细胞质和传导时间守恒定律的启发,我们表明这种图形表示可以用于优化这些变量。这种方法允许我们生成复制任何测试神经元形态特征的合成分支几何形状。神经元树的基本结构因此由其跨越场的密度分布和单个参数(平衡因子)来捕获,该平衡因子权衡材料和传导时间的成本。这个平衡因子决定了神经元的电紧张分区。在构建过程中需要添加的规则可以直接归因于发育过程或神经元在其神经电路中的计算作用。这里提出的模拟是在一个开源软件包“TREES 工具箱”中实现的,该工具箱提供了一组用于分析、操作和生成树突结构的通用工具,包括用于创建任何特定细胞群的合成成员的工具和一种基于模型的荧光图像堆栈的监督自动形态重建方法。这些方法提供了对控制树突结构的约束的新见解。它们还为建模和分析神经元分支结构以及构建现实的合成神经网络提供了新的框架。