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A Perimotor Framework Reveals Functional Segmentation in the Motoneuronal Network Controlling Locomotion in Caenorhabditis elegans

机译:Perimotor框架揭示控制秀丽隐杆线虫运动的单神经元网络中的功能分割。

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摘要

The neuronal connectivity dataset of the nematode Caenorhabditis elegans attracts wide attention from computational neuroscientists and experimentalists. However, the dataset is incomplete. The ventral and dorsal nerve cords of a single nematode were reconstructed halfway along the body and the posterior data are missing, leaving 21 of 75 motoneurons of the locomotor network with partial or no connectivity data. Using a new framework for network analysis, the perimotor space, we identified rules of connectivity that allowed us to approximate the missing data by extrapolation. Motoneurons were mapped into perimotor space in which each motoneuron is located according to the muscle cells it innervates. In this framework, a pattern of iterative connections emerges which includes most (0.90) of the connections. We identified a repeating unit consisting of 12 motoneurons and 12 muscle cells. The cell bodies of the motoneurons of such a unit are not necessarily anatomical neighbors and there is no obvious anatomical segmentation. A connectivity model, composed of six repeating units, is a description of the network that is both simplified (modular and without noniterative connections) and more complete (includes the posterior part) than the original dataset. The perimotor framework of observed connectivity and the segmented connectivity model give insights and advance the study of the neuronal infrastructure underlying locomotion in C. elegans. Furthermore, we suggest that the tools used herein may be useful to interpret, simplify, and represent connectivity data of other motor systems.
机译:线虫秀丽隐杆线虫的神经元连通性数据集引起了计算神经科学家和实验学家的广泛关注。但是,数据集不完整。单个线虫的腹侧和背侧神经索沿身体的中途重建,后部数据丢失,运动网络的75个运动神经元中有21个具有部分连通性数据或没有连通性数据。使用用于网络分析的新框架(运动周围空间),我们确定了连通性规则,这些规则使我们能够通过外推法近似丢失的数据。运动神经元根据神经支配的肌肉细胞被映射到运动周围空间,每个运动神经元位于运动周围空间。在此框架中,出现了一种迭代连接模式,其中包括大多数(0.90)连接。我们确定了一个由12个运动神经元和12个肌肉细胞组成的重复单元。这种单元的运动神经元的细胞体不一定是解剖学上的邻居,也没有明显的解剖学上的分割。由六个重复单元组成的连接模型是对网络的描述,与原始数据集相比,该网络既简化(模块化连接又没有非迭代连接),并且更加完整(包括后部连接)。观察到的连通性和分段连通性模型的运动周边框架提供了见解,并促进了秀丽隐杆线虫运动背后的神经元基础设施的研究。此外,我们建议本文使用的工具可能有助于解释,简化和表示其他电机系统的连接性数据。

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