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LFPy: a tool for biophysical simulation of extracellular potentials generated by detailed model neurons

机译:LFPy:一种由详细模型神经元产生的细胞外电位的生物物理模拟工具

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摘要

Electrical extracellular recordings, i.e., recordings of the electrical potentials in the extracellular medium between cells, have been a main work-horse in electrophysiology for almost a century. The high-frequency part of the signal (≳500 Hz), i.e., the multi-unit activity (MUA), contains information about the firing of action potentials in surrounding neurons, while the low-frequency part, the local field potential (LFP), contains information about how these neurons integrate synaptic inputs. As the recorded extracellular signals arise from multiple neural processes, their interpretation is typically ambiguous and difficult. Fortunately, a precise biophysical modeling scheme linking activity at the cellular level and the recorded signal has been established: the extracellular potential can be calculated as a weighted sum of all transmembrane currents in all cells located in the vicinity of the electrode. This computational scheme can considerably aid the modeling and analysis of MUA and LFP signals. Here, we describe >LFPy, an open source Python package for numerical simulations of extracellular potentials. >LFPy consists of a set of easy-to-use classes for defining cells, synapses and recording electrodes as Python objects, implementing this biophysical modeling scheme. It runs on top of the widely used NEURON simulation environment, which allows for flexible usage of both new and existing cell models. Further, calculation of extracellular potentials using the line-source-method is efficiently implemented. We describe the theoretical framework underlying the extracellular potential calculations and illustrate by examples how >LFPy can be used both for simulating LFPs, i.e., synaptic contributions from single cells as well a populations of cells, and MUAs, i.e., extracellular signatures of action potentials.
机译:细胞外电记录,即细胞间细胞外介质中电势的记录,已经成为近一个世纪以来电生理学的主要动力。信号的高频部分(≳500Hz),即多单位活动(MUA),包含有关周围神经元中动作电位触发的信息,而低频部分是局部场电位(LFP) ),包含有关这些神经元如何整合突触输入的信息。由于所记录的细胞外信号来自多个神经过程,因此它们的解释通常是模棱两可且困难的。幸运的是,已经建立了一种精确的生物物理建模方案,将细胞水平的活动与记录的信号联系起来:细胞外电位可以计算为位于电极附近的所有细胞中所有跨膜电流的加权总和。这种计算方案可以极大地帮助对MUA和LFP信号进行建模和分析。在这里,我们描述> LFPy ,这是一个用于对细胞外电位进行数值模拟的开源Python软件包。 > LFPy 由一组易于使用的类组成,这些类用于定义细胞,突触和将电极记录为Python对象,从而实现此生物物理建模方案。它在广泛使用的NEURON仿真环境之上运行,该环境允许灵活使用新的和现有的单元模型。此外,有效地实现了使用线源方法的细胞外电位的计算。我们描述了潜在的细胞外潜力计算的理论框架,并举例说明如何将> LFPy 既用于模拟LFP,即来自单个细胞的突触贡献以及细胞和MUA,即动作电位的细胞外标记。

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