阈下共振神经元对结构和波动输入的电压和尖峰响应:共振和变异性的持续和丧失。

IF 1.7 4区 工程技术 Q3 COMPUTER SCIENCE, CYBERNETICS Biological Cybernetics Pub Date : 2022-04-01 Epub Date: 2022-01-17 DOI:10.1007/s00422-021-00919-0
Rodrigo F O Pena, Horacio G Rotstein
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引用次数: 3

摘要

我们系统地研究了神经元对振荡电流和突触样输入的反应,并将我们的研究扩展到具有更现实的突触前峰值时间分布的非结构化突触样峰值输入。我们使用两种类型的类啁啾输入,由(i)随时间离散增加频率的周期序列和(ii)以任意顺序排列的具有相同周期的序列组成。我们开发并使用了许多频率相关的电压响应指标来捕获电压响应的不同方面,包括标准阻抗(Z)和峰谷振幅包络线(公式:见文本)。我们表明,z共振细胞(响应正弦输入表现出阈下共振的细胞)也显示出响应正弦输入的共振,但通常不会(或非常轻微地)响应方波和突触样输入。在后一种情况下,使用Z的共振响应不能预测当输入幅度增加到亚阈值水平以上时神经元峰值的首选频率。我们还表明,与基于电流的突触样输入的反应相比,基于电导的突触样输入的反应减弱,从而为先前的实验结果提供了解释。这些反应模式强烈依赖于参与神经元的内在特性,特别是未受干扰的z共振细胞是否有稳定的节点或焦点。此外,我们表明,可变性出现在响应啁啾输入与任意有序的模式,其中所有信号(试验)在给定协议具有相同的频率内容,唯一的不确定性来源是为给定协议选择的所有可能的周期排列的子集。这种可变性是多种不同方式的结果,其中自主瞬态动力学在每个信号(不同的周期顺序)的周期和试验中被激活。我们将结果扩展到包括基于高速率泊松分布电流和电导的突触输入,并将它们与使用加性高斯白噪声的类似结果进行比较。我们表明,对两个泊松分布突触输入的响应相对于对高斯白噪声的响应是衰减的。对于对高斯白噪声(带通滤波器)表现出振荡响应的细胞,对基于电导的突触输入的响应是低通滤波器,而对基于电流的突触输入的响应可能仍然是带通滤波器,这与实验结果一致。我们的研究结果揭示了网络中神经元之间通过阈下振荡和共振以及网络共振产生的振荡活动的交流机制。
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The voltage and spiking responses of subthreshold resonant neurons to structured and fluctuating inputs: persistence and loss of resonance and variability.

We systematically investigate the response of neurons to oscillatory currents and synaptic-like inputs and we extend our investigation to non-structured synaptic-like spiking inputs with more realistic distributions of presynaptic spike times. We use two types of chirp-like inputs consisting of (i) a sequence of cycles with discretely increasing frequencies over time, and (ii) a sequence having the same cycles arranged in an arbitrary order. We develop and use a number of frequency-dependent voltage response metrics to capture the different aspects of the voltage response, including the standard impedance (Z) and the peak-to-trough amplitude envelope ([Formula: see text]) profiles. We show that Z-resonant cells (cells that exhibit subthreshold resonance in response to sinusoidal inputs) also show [Formula: see text]-resonance in response to sinusoidal inputs, but generally do not (or do it very mildly) in response to square-wave and synaptic-like inputs. In the latter cases the resonant response using Z is not predictive of the preferred frequencies at which the neurons spike when the input amplitude is increased above subthreshold levels. We also show that responses to conductance-based synaptic-like inputs are attenuated as compared to the response to current-based synaptic-like inputs, thus providing an explanation to previous experimental results. These response patterns were strongly dependent on the intrinsic properties of the participating neurons, in particular whether the unperturbed Z-resonant cells had a stable node or a focus. In addition, we show that variability emerges in response to chirp-like inputs with arbitrarily ordered patterns where all signals (trials) in a given protocol have the same frequency content and the only source of uncertainty is the subset of all possible permutations of cycles chosen for a given protocol. This variability is the result of the multiple different ways in which the autonomous transient dynamics is activated across cycles in each signal (different cycle orderings) and across trials. We extend our results to include high-rate Poisson distributed current- and conductance-based synaptic inputs and compare them with similar results using additive Gaussian white noise. We show that the responses to both Poisson-distributed synaptic inputs are attenuated with respect to the responses to Gaussian white noise. For cells that exhibit oscillatory responses to Gaussian white noise (band-pass filters), the response to conductance-based synaptic inputs are low-pass filters, while the response to current-based synaptic inputs may remain band-pass filters, consistent with experimental findings. Our results shed light on the mechanisms of communication of oscillatory activity among neurons in a network via subthreshold oscillations and resonance and the generation of network resonance.

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来源期刊
Biological Cybernetics
Biological Cybernetics 工程技术-计算机:控制论
CiteScore
3.50
自引率
5.30%
发文量
38
审稿时长
6-12 weeks
期刊介绍: Biological Cybernetics is an interdisciplinary medium for theoretical and application-oriented aspects of information processing in organisms, including sensory, motor, cognitive, and ecological phenomena. Topics covered include: mathematical modeling of biological systems; computational, theoretical or engineering studies with relevance for understanding biological information processing; and artificial implementation of biological information processing and self-organizing principles. Under the main aspects of performance and function of systems, emphasis is laid on communication between life sciences and technical/theoretical disciplines.
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