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REMOD:一种用于分析和重塑神经细胞树突结构的工具。

REMOD: A Tool for Analyzing and Remodeling the Dendritic Architecture of Neural Cells.

作者信息

Bozelos Panagiotis, Stefanou Stefanos S, Bouloukakis Georgios, Melachrinos Constantinos, Poirazi Panayiota

机构信息

Institute of Molecular Biology and Biotechnology (IMBB), Foundation for Research and Technology-Hellas (FORTH)Crete, Greece; Department of Molecular Biology and Genetics, Democritus University of ThraceCrete, Greece.

Institute of Molecular Biology and Biotechnology (IMBB), Foundation for Research and Technology-Hellas (FORTH)Crete, Greece; Department of Biology, University of CreteCrete, Greece.

出版信息

Front Neuroanat. 2016 Jan 6;9:156. doi: 10.3389/fnana.2015.00156. eCollection 2015.

Abstract

Dendritic morphology is a key determinant of how individual neurons acquire a unique signal processing profile. The highly branched dendritic structure that originates from the cell body, explores the surrounding 3D space in a fractal-like manner, until it reaches a certain amount of complexity. Its shape undergoes significant alterations under various physiological or neuropathological conditions. Yet, despite the profound effect that these alterations can have on neuronal function, the causal relationship between the two remains largely elusive. The lack of a systematic approach for remodeling neural cells and their dendritic trees is a key limitation that contributes to this problem. Such causal relationships can be inferred via the use of large-scale neuronal models whereby the anatomical plasticity of neurons is accounted for, in order to enhance their biological relevance and hence their predictive performance. To facilitate this effort, we developed a computational tool named REMOD that allows the structural remodeling of any type of virtual neuron. REMOD is written in Python and can be accessed through a dedicated web interface that guides the user through various options to manipulate selected neuronal morphologies. REMOD can also be used to extract meaningful morphology statistics for one or multiple reconstructions, including features such as sholl analysis, total dendritic length and area, path length to the soma, centrifugal branch order, diameter tapering and more. As such, the tool can be used both for the analysis and/or the remodeling of neuronal morphologies of any type.

摘要

树突形态是单个神经元如何获得独特信号处理模式的关键决定因素。源自细胞体的高度分支的树突结构,以类似分形的方式探索周围的三维空间,直至达到一定的复杂程度。在各种生理或神经病理条件下,其形状会发生显著改变。然而,尽管这些改变可能对神经元功能产生深远影响,但两者之间的因果关系在很大程度上仍不明确。缺乏一种系统的方法来重塑神经细胞及其树突树是导致这一问题的关键限制因素。可以通过使用大规模神经元模型来推断这种因果关系,其中考虑了神经元的解剖可塑性,以提高其生物学相关性,进而提高其预测性能。为了推动这项工作,我们开发了一种名为REMOD的计算工具,它可以对任何类型的虚拟神经元进行结构重塑。REMOD用Python编写,可以通过一个专用的网络界面访问,该界面引导用户通过各种选项来操作选定的神经元形态。REMOD还可用于提取一个或多个重建的有意义的形态统计数据,包括诸如Sholl分析、树突总长度和面积、到胞体的路径长度、离心分支顺序、直径逐渐变细等特征。因此,该工具可用于分析和/或重塑任何类型的神经元形态。

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