Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

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

View through CrossRef
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 preceding nrmilliseconds. 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.
Title: Detecting rhythmic spiking through the power spectra of point process model residuals
Description:
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 preceding nrmilliseconds.
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.

Related Results

Interactions between Rhythmic and Discrete Components in a Bimanual Task
Interactions between Rhythmic and Discrete Components in a Bimanual Task
An asymmetric bimanual task was investigated in which participants performed a rhythmic movement with their dominant arm and initiated a second movement with their nondominant arm ...
Embedding optimization reveals long-lasting history dependence in neural spiking activity
Embedding optimization reveals long-lasting history dependence in neural spiking activity
AbstractInformation processing can leave distinct footprints on the statistics of neural spiking. For example, efficient coding minimizes the statistical dependencies on the spikin...
The Rhytmic Pattern of Tifa in Cakalele Dance
The Rhytmic Pattern of Tifa in Cakalele Dance
ABSTRACT Jeremy Giovan. 2020. The Rhythmic Pattern of Tifa in Cakalele Dance. Research. Department of Music Education, Faculty of Language and Art, Jakarta State University.     ...
Simplified access of asteroid spectral data and metadata using classy
Simplified access of asteroid spectral data and metadata using classy
Remote-sensing spectroscopy is the most efficient observational technique to characterise the surface composition of asteroids within a reasonable timeframe. While photometry allow...
Adaptive Drop Approaches to Train Spiking-YOLO Network for Traffic Flow Counting
Adaptive Drop Approaches to Train Spiking-YOLO Network for Traffic Flow Counting
Abstract Traffic flow counting is an object detection problem. YOLO (" You Only Look Once ") is a popular object detection network. Spiking-YOLO converts the YOLO network f...
[RETRACTED] Keto Max Power - BURN FATINSTEAD OF CARBS with Keto Max Power! v1
[RETRACTED] Keto Max Power - BURN FATINSTEAD OF CARBS with Keto Max Power! v1
[RETRACTED]Keto Max Power Reviews: Warning! Don’t Buy Dragons Den Pills Fast Until You Read This UK Latest Report Weight gain’s principle of “energy intake exceeding energy spent”...
A Spiking Visual Neuron for Depth Perceptual Systems
A Spiking Visual Neuron for Depth Perceptual Systems
Abstract The biological visual system encodes information into spikes and processes them parallelly by the neural network, which enables the perception with high throughput...
Backpropagation With Sparsity Regularization for Spiking Neural Network Learning
Backpropagation With Sparsity Regularization for Spiking Neural Network Learning
The spiking neural network (SNN) is a possible pathway for low-power and energy-efficient processing and computing exploiting spiking-driven and sparsity features of biological sys...

Back to Top