Latency correction in sparse neuronal spike trains

05/19/2022
by   Thomas Kreuz, et al.
0

Background: In neurophysiological data, latency refers to a global shift of spikes from one spike train to the next, either caused by response onset fluctuations or by finite propagation speed. Such systematic shifts in spike timing lead to a spurious decrease in synchrony which needs to be corrected. New Method: We propose a new algorithm of multivariate latency correction suitable for sparse data for which the relevant information is not primarily in the rate but in the timing of each individual spike. The algorithm is designed to correct systematic delays while maintaining all other kinds of noisy disturbances. It consists of two steps, spike matching and distance minimization between the matched spikes using simulated annealing. Results: We show its effectiveness on simulated and real data: cortical propagation patterns recorded via calcium imaging from mice before and after stroke. Using simulations of these data we also establish criteria that can be evaluated beforehand in order to anticipate whether our algorithm is likely to yield a considerable improvement for a given dataset. Comparison with Existing Method(s): Existing methods of latency correction rely on adjusting peaks in rate profiles, an approach that is not feasible for spike trains with low firing in which the timing of individual spikes contains essential information. Conclusions: For any given dataset the criterion for applicability of the algorithm can be evaluated quickly and in case of a positive outcome the latency correction can be applied easily since the source codes of the algorithm are publicly available.

READ FULL TEXT

page 4

page 6

page 11

research
01/14/2005

Spike timing precision and neural error correction: local behavior

The effects of spike timing precision and dynamical behavior on error co...
research
09/13/2012

A new class of metrics for spike trains

The distance between a pair of spike trains, quantifying the differences...
research
02/28/2015

Supervised learning sets benchmark for robust spike detection from calcium imaging signals

A fundamental challenge in calcium imaging has been to infer the timing ...
research
12/30/2009

The Computational Structure of Spike Trains

Neurons perform computations, and convey the results of those computatio...
research
03/09/2018

On the information in spike timing: neural codes derived from polychronous groups

There is growing evidence regarding the importance of spike timing in ne...
research
05/13/2022

Toward A Formalized Approach for Spike Sorting Algorithms and Hardware Evaluation

Spike sorting algorithms are used to separate extracellular recordings o...
research
11/30/2021

Robust and Automated Method for Spike Detection and Removal in Magnetic Resonance Imaging

Radio frequency (RF) spike noise is a common source of exogenous image c...

Please sign up or login with your details

Forgot password? Click here to reset