Denoising tools for M/EEG processing in Python 3.7+.
Disclaimer: The project mostly consists of development code, although some modules and functions are already working. Bugs and performance problems are to be expected, so use at your own risk. More tests and improvements will be added in the future. Comments and suggestions are welcome.
Automatic documentation is available online.
This code can also be tested directly from your browser using Binder, by clicking on the binder badge above.
This package can be installed easily using pip
:
pip install meegkit
Or you can clone this repository and run the following commands inside the python-meegkit
directory:
pip install -r requirements.txt
pip install .
Note : Use developer mode with the -e
flag (pip install -e .
) to be able to modify the sources even after install.
Some ASR variants require additional dependencies such as pymanopt
. To install meegkit with these optional packages, use:
pip install -e '.[extra]'
or:
pip install meegkit[extra]
Other available options are [docs]
(which installs dependencies required to build the documentation), or [tests]
(which install dependencies to run unit tests).
This is mostly a translation of Matlab code from the NoiseTools toolbox by Alain de Cheveigné. It builds on an initial python implementation by Pedro Alcocer.
Only CCA, SNS, DSS, STAR, ZapLine and robust detrending have been properly tested so far. TSCPA may give inaccurate results due to insufficient testing (contributions welcome!)
If you use this code, you should cite the relevant methods from the original articles:
[1] de Cheveigné, A. (2019). ZapLine: A simple and effective method to remove power line artifacts.
NeuroImage, 116356. https://doi.org/10.1016/j.neuroimage.2019.116356
[2] de Cheveigné, A. et al. (2019). Multiway canonical correlation analysis of brain data.
NeuroImage, 186, 728–740. https://doi.org/10.1016/j.neuroimage.2018.11.026
[3] de Cheveigné, A. et al. (2018). Decoding the auditory brain with canonical component analysis.
NeuroImage, 172, 206–216. https://doi.org/10.1016/j.neuroimage.2018.01.033
[4] de Cheveigné, A. (2016). Sparse time artifact removal.
Journal of Neuroscience Methods, 262, 14–20. https://doi.org/10.1016/j.jneumeth.2016.01.005
[5] de Cheveigné, A., & Parra, L. C. (2014). Joint decorrelation, a versatile tool for multichannel
data analysis. NeuroImage, 98, 487–505. https://doi.org/10.1016/j.neuroimage.2014.05.068
[6] de Cheveigné, A. (2012). Quadratic component analysis.
NeuroImage, 59(4), 3838–3844. https://doi.org/10.1016/j.neuroimage.2011.10.084
[7] de Cheveigné, A. (2010). Time-shift denoising source separation.
Journal of Neuroscience Methods, 189(1), 113–120. https://doi.org/10.1016/j.jneumeth.2010.03.002
[8] de Cheveigné, A., & Simon, J. Z. (2008a). Denoising based on spatial filtering.
Journal of Neuroscience Methods, 171(2), 331–339. https://doi.org/10.1016/j.jneumeth.2008.03.015
[9] de Cheveigné, A., & Simon, J. Z. (2008b). Sensor noise suppression.
Journal of Neuroscience Methods, 168(1), 195–202. https://doi.org/10.1016/j.jneumeth.2007.09.012
[10] de Cheveigné, A., & Simon, J. Z. (2007). Denoising based on time-shift PCA.
Journal of Neuroscience Methods, 165(2), 297–305. https://doi.org/10.1016/j.jneumeth.2007.06.003
The base code is inspired from the original EEGLAB inplementation [1], while the riemannian variant [2] was adapted from the rASR toolbox by Sarah Blum.
If you use this code, you should cite the relevant methods from the original articles:
[1] Mullen, T. R., Kothe, C. A. E., Chi, Y. M., Ojeda, A., Kerth, T., Makeig, S., et al. (2015).
Real-time neuroimaging and cognitive monitoring using wearable dry EEG. IEEE Trans. Bio-Med.
Eng. 62, 2553–2567. https://doi.org/10.1109/TBME.2015.2481482
[2] Blum, S., Jacobsen, N., Bleichner, M. G., & Debener, S. (2019). A Riemannian modification of
artifact subspace reconstruction for EEG artifact handling. Frontiers in human neuroscience,
13, 141.
The code is based on Matlab code from Mike X. Cohen [1]
If you use this, you should cite the following article:
[1] Cohen, M. X., & Gulbinaite, R. (2017). Rhythmic entrainment source separation: Optimizing analyses
of neural responses to rhythmic sensory stimulation. Neuroimage, 147, 43-56.
This code is based on the Matlab implementation from Masaki Nakanishi, and was adapted to python by Giuseppe Ferraro
If you use this, you should cite the following articles:
[1] M. Nakanishi, Y. Wang, X. Chen, Y.-T. Wang, X. Gao, and T.-P. Jung,
"Enhancing detection of SSVEPs for a high-speed brain speller using
task-related component analysis", IEEE Trans. Biomed. Eng, 65(1): 104-112,
2018.
[2] X. Chen, Y. Wang, S. Gao, T. -P. Jung and X. Gao, "Filter bank
canonical correlation analysis for implementing a high-speed SSVEP-based
brain-computer interface", J. Neural Eng., 12: 046008, 2015.
[3] X. Chen, Y. Wang, M. Nakanishi, X. Gao, T. -P. Jung, S. Gao,
"High-speed spelling with a noninvasive brain-computer interface",
Proc. Int. Natl. Acad. Sci. U. S. A, 112(44): E6058-6067, 2015.