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Analysis of Neural Data

This repository includes useful MATLAB codes for ENG analysis.

There are three main stages in the algorithm: (1) spike detection, (2) spike feature selection (Wavelet), and (3) clustering of the selected spike features (K-means).

In the first step, spikes are detected with an automatic amplitude threshold on the band-pass filtered data. In the second step, a small set of wavelet coefficients from each spike is chosen as input for the clustering algorithm. Finally, the K-means classifies the spikes according to the selected set of wavelet coefficients.

  • Fs = 30000 Hz; % Sampling frequency
  • F_low = 300 Hz; % low pass filter for detection
  • F_high =3000 Hz; % high pass filter for spike detection
Threshold:
  • T_min = 5; % minimum threshold for estimated noise
  • T_max = 12; % maximum threshold for avoid high amplitude artifact
Detect spike times:
  • w_pre = 20; % w_pre datapoints before the spike peak are stored
  • w_post =40; % w_post datapoints after the spike peak are stored

Please Run Code Main.m, the Software will run automatically and there is no need to run test code

Reza.Saadatyar@outlook.com

Fig 1

Fig 2

Fig 3

Fig 4

LFP and Spike Spike-field coherance