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从形态学预测神经直径以实现精确模拟。

Prediction of Neural Diameter From Morphology to Enable Accurate Simulation.

作者信息

Reed Jonathan D, Blackwell Kim T

机构信息

Krasnow Institute of Advanced Study, George Mason University, Fairfax, VA, United States.

Department of Biology, George Mason University, Fairfax, VA, United States.

出版信息

Front Neuroinform. 2021 Jun 3;15:666695. doi: 10.3389/fninf.2021.666695. eCollection 2021.

Abstract

Accurate neuron morphologies are paramount for computational model simulations of realistic neural responses. Over the last decade, the online repository NeuroMorpho.Org has collected over 140,000 available neuron morphologies to understand brain function and promote interaction between experimental and computational research. Neuron morphologies describe spatial aspects of neural structure; however, many of the available morphologies do not contain accurate diameters that are essential for computational simulations of electrical activity. To best utilize available neuron morphologies, we present a set of equations that predict dendritic diameter from other morphological features. To derive the equations, we used a set of NeuroMorpho.org archives with realistic neuron diameters, representing hippocampal pyramidal, cerebellar Purkinje, and striatal spiny projection neurons. Each morphology is separated into initial, branching children, and continuing nodes. Our analysis reveals that the diameter of preceding nodes, Parent Diameter, is correlated to diameter of subsequent nodes for all cell types. Branching children and initial nodes each required additional morphological features to predict diameter, such as path length to soma, total dendritic length, and longest path to terminal end. Model simulations reveal that membrane potential response with predicted diameters is similar to the original response for several tested morphologies. We provide our open source software to extend the utility of available NeuroMorpho.org morphologies, and suggest predictive equations may supplement morphologies that lack dendritic diameter and improve model simulations with realistic dendritic diameter.

摘要

准确的神经元形态对于逼真的神经反应计算模型模拟至关重要。在过去十年中,在线存储库NeuroMorpho.Org已收集了超过140,000种可用的神经元形态,以了解脑功能并促进实验研究与计算研究之间的互动。神经元形态描述了神经结构的空间方面;然而,许多可用的形态不包含对电活动计算模拟至关重要的准确直径。为了最佳利用可用的神经元形态,我们提出了一组根据其他形态特征预测树突直径的方程。为了推导这些方程,我们使用了一组具有实际神经元直径的NeuroMorpho.org存档,这些存档代表海马锥体神经元、小脑浦肯野神经元和纹状体棘状投射神经元。每种形态都分为初始节点、分支子节点和连续节点。我们的分析表明,对于所有细胞类型,前序节点的直径(父直径)与后续节点的直径相关。分支子节点和初始节点各自需要额外的形态特征来预测直径,例如到胞体的路径长度、总树突长度以及到末端的最长路径。模型模拟表明,对于几种测试形态,具有预测直径的膜电位反应与原始反应相似。我们提供开源软件以扩展可用的NeuroMorpho.org形态的效用,并建议预测方程可以补充缺乏树突直径的形态,并通过实际的树突直径改进模型模拟。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6f6f/8209307/7b45799fc353/fninf-15-666695-g001.jpg

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