Automated rejection and repair of epochs in M/EEG.
Project description
This repository hosts code to automatically reject trials and repair sensors for M/EEG data.
The documentation can be found under the following links:
for the stable release
for the latest (development) version
Dependencies
These are the dependencies to use autoreject:
Python (>=3.5)
numpy (>=1.8)
matplotlib (>=1.3)
scipy (>=0.16)
mne-python (>=0.14)
scikit-learn (>=0.18)
joblib
Two optional dependencies are tqdm (for nice progressbars) and h5py (for IO).
Cite
If you use this code in your project, please cite:
Mainak Jas, Denis Engemann, Federico Raimondo, Yousra Bekhti, and Alexandre Gramfort, "Automated rejection and repair of bad trials in MEG/EEG." In 6th International Workshop on Pattern Recognition in Neuroimaging (PRNI). 2016. Mainak Jas, Denis Engemann, Yousra Bekhti, Federico Raimondo, and Alexandre Gramfort. 2017. Autoreject: Automated artifact rejection for MEG and EEG data. NeuroImage, 159, 417-429.
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