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Inferring oscillatory modulation in neural spike trains

机译:推断神经脉冲串中的振荡调制

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摘要

Oscillations are observed at various frequency bands in continuous-valued neural recordings like the electroencephalogram (EEG) and local field potential (LFP) in bulk brain matter, and analysis of spike-field coherence reveals that spiking of single neurons often occurs at certain phases of the global oscillation. Oscillatory modulation has been examined in relation to continuous-valued oscillatory signals, and independently from the spike train alone, but behavior or stimulus triggered firing-rate modulation, spiking sparseness, presence of slow modulation not locked to stimuli and irregular oscillations with large variability in oscillatory periods, present challenges to searching for temporal structures present in the spike train. In order to study oscillatory modulation in real data collected under a variety of experimental conditions, we describe a flexible point-process framework we call the Latent Oscillatory Spike Train (LOST) model to decompose the instantaneous firing rate in biologically and behaviorally relevant factors: spiking refractoriness, event-locked firing rate non-stationarity, and trial-to-trial variability accounted for by baseline offset and a stochastic oscillatory modulation. We also extend the LOST model to accommodate changes in the modulatory structure over the duration of the experiment, and thereby discover trial-to-trial variability in the spike-field coherence of a rat primary motor cortical neuron to the LFP theta rhythm. Because LOST incorporates a latent stochastic auto-regressive term, LOST is able to detect oscillations when the firing rate is low, the modulation is weak, and when the modulating oscillation has a broad spectral peak.
机译:在大量脑物质的脑电图(EEG)和局部场电势(LFP)等连续值神经记录中的各个频带上都观察到振荡,对峰场相干性的分析表明,单个神经元的峰值通常发生在特定阶段。全球振荡。已经检查了与连续值振荡信号有关的震荡调制,并且独立于尖峰序列,但行为或刺激触发了射速调制,尖峰稀疏,慢速调制的存在未锁定到刺激和不规则振荡,且波动性很大。振荡周期对寻找峰值序列中存在的时间结构提出了挑战。为了研究在各种实验条件下收集的真实数据中的振荡调制,我们描述了一个灵活的点过程框架,我们将其称为潜伏振荡尖峰火车(LOST)模型,以分解生物学和行为相关因素中的瞬时点火率:尖峰耐火性,事件锁定的射速非平稳性和试验与试验之间的差异是由基线偏移和随机振荡调制引起的。我们还扩展了LOST模型,以适应整个实验过程中调制结构的变化,从而发现大鼠原代运动皮层神经元对LFP theta节律的峰值场相干性的试验间变化。由于LOST包含了潜在的随机自回归项,因此LOST能够在激发速率低,调制弱以及调制振荡具有较宽的频谱峰值时检测振荡。

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