Detecting rhythmic spiking through the power spectra of point process model residuals.

Karin M Cox, Daisuke Kase, Taieb Znati, Robert S Turner
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Abstract

Objective. Oscillations figure prominently as neurological disease hallmarks and neuromodulation targets. To detect oscillations in a neuron's spiking, one might attempt to seek peaks in the spike train's power spectral density (PSD) which exceed a flat baseline. Yet for a non-oscillating neuron, the PSD is not flat: The recovery period ('RP', the post-spike drop in spike probability, starting with the refractory period) introduces global spectral distortion. An established 'shuffling' procedure corrects for RP distortion by removing the spectral component explained by the inter-spike interval (ISI) distribution. However, this procedure sacrifices oscillation-related information present in the ISIs, and therefore in the PSD. We asked whether point process models (PPMs) might achieve more selective RP distortion removal, thereby enabling improved oscillation detection.Approach. In a novel 'residuals' method, we first estimate the RP duration (nr) from the ISI distribution. We then fit the spike train with a PPM that predicts spike likelihood based on the time elapsed since the most recent of any spikes falling within the precedingnrmilliseconds. Finally, we compute the PSD of the model's residuals.Main results. We compared the residuals and shuffling methods' ability to enable accurate oscillation detection with flat baseline-assuming tests. Over synthetic data, the residuals method generally outperformed the shuffling method in classification of true- versus false-positive oscillatory power, principally due to enhanced sensitivity in sparse spike trains. In single-unit data from the internal globus pallidus (GPi) and ventrolateral anterior thalamus (VLa) of a parkinsonian monkey-in which alpha-beta oscillations (8-30 Hz) were anticipated-the residuals method reported the greatest incidence of significant alpha-beta power, with low firing rates predicting residuals-selective oscillation detection.Significance. These results encourage continued development of the residuals approach, to support more accurate oscillation detection. Improved identification of oscillations could promote improved disease models and therapeutic technologies.

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通过点过程模型残差的功率谱检测节律性尖峰脉冲。
振荡是神经系统疾病的显著特征,也是神经调控的目标。要检测神经元尖峰的振荡,可以尝试在尖峰序列的功率谱密度(PSD)中寻找超过平坦基线的峰值。然而,对于非振荡神经元来说,PSD 并不平坦:恢复期("RP",即尖峰后尖峰概率的下降,从折射期开始)会带来全局频谱失真。已有的 "洗牌 "程序通过去除尖峰间期(ISI)分布所解释的频谱成分来纠正 RP 失真。然而,这种方法会牺牲 ISI 中与振荡相关的信息,因此也会牺牲 PSD 中的信息。我们提出的问题是,点过程模型(PPM)是否能更有选择性地去除 RP 失真,从而改进振荡检测?在一种新颖的 "残差 "方法中,我们首先从 ISI 分布中估计 RP 持续时间(nr)。然后,我们用一个 PPM 对尖峰序列进行拟合,该 PPM 可根据前 nrmilliseconds 内任何尖峰中最近一个尖峰的时间来预测尖峰的可能性。最后,我们计算了模型残差的 PSD。主要结果:我们比较了残差法和洗牌法利用平基线假定测试准确检测振荡的能力。在合成数据中,残差法在真假阳性振荡功率的分类上普遍优于洗牌法,这主要是由于在稀疏尖峰序列中灵敏度的提高。在帕金森病猴的内球丘脑(GPi)和丘脑腹外侧前部(VLa)的单细胞数据中,预计会出现阿尔法-贝塔振荡(8-30 Hz),残差法报告的显著阿尔法-贝塔功率发生率最高,低发射率可预测残差选择性振荡检测。更好地识别振荡可促进疾病模型和治疗技术的改进。
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