This code repository is associated with the following publication:
Brake, N., Duc, F., Rokos, A. et al. A neurophysiological basis for aperiodic EEG and the background spectral trend. Nat Commun 15, 1514 (2024). https://doi.org/10.1038/s41467-024-45922-8
To reproduce the figures, data needs to be downloaded from https://doi.org/10.6084/m9.figshare.24777990. Once this data is downloaded, line 16 of EEG_modelling/model/network_simulation_beluga.m needs to be updated, such that the variable resourceFolder points to the data folder.
If you wish to simulate dipoles, the script EEG_modelling/simulation_examples/example_embedding.m outlines how the model can be simulated. To run this script, the file EEG_modelling/model/compute_tiling_correlation.c needs to be compiled, which can be accomplished with the following command:
gcc compute_tiling_correlation.c -o compute_tiling_correlation.exe -lm -fopenmp
The python packages in requirements.txt need to be installed, which can be accomplished with the following command:
pip install -r requirements.txt
Finally, the .MOD files need to be compiled for the neuron simulator. To do so, navigate to the folder EEG_modelling/model/mod_files and run the command
mknrndll
The file EEG_modelling/data_analysis/detrending.py contains the code used to fit Eq. 1, 5, and 6 from the manuscript to EEG spectra. The upper and lower bounds for the various parameters were optimized for our data and may need to be adjusted. EEG_modelling/data_analysis/synDetrend.m is a wrapper to run this function from MATLAB.
I completed this work as part of my PhD under the supervision of Dr. Anmar Khadra and in collaboration with Dr. Gilles Plourde at McGill Univeristy. The EEG data used in this project was collected by Dr. Plourde and his team.
This repository is licensed under a Creative Commons Attribution 4.0 International License.