Mne bids pipeline: Difference between revisions
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===Start interactive session with scratch to render visualization offscreen=== |
===Start interactive session with scratch to render visualization offscreen=== |
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sinteractive --mem=6G --cpus-per-task=4 --gres=lscratch:50 #adjust mem and cpus accordingly |
sinteractive --mem=6G --cpus-per-task=4 --gres=lscratch:50 #adjust mem and cpus accordingly - subjects will run in parrallel |
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===Create BIDS data from data off the scanner=== |
===Create BIDS data from data off the scanner=== |
Revision as of 10:13, 20 May 2022
Skip Background
Intro
BIDS is a standard specification for neuroimaging/physiology data. This currently includes at least: MRI, fMRI, DTI, EEG, MEG, fNIRS (and possibly ECOG/sEEG). BIDS typically describes how RAW data is organized - and processed data is located in the bids_dir/derivatives/{AnalysisPackage}/{SUBJECT}/... The main advantage is that common code can be generated to process data organized in a standard format. Therefore, you should be able to import the bids data into any number of neurophysiological packages (MNE, Brainstorm, SPM, Fieldtrip, ...). Additionally, standardized processing packages known as BIDS apps can be used to process the data in the same way as long as the data is organized in BIDS.
BIDS (formal specs) >> MNE_BIDS (python neurophysiological BIDS) >> MNE_BIDS_PIPELINE (structured processing in MNE python according to BIDS definition)
BIDS website
https://bids-specification.readthedocs.io/en/stable/
MNE Bids
MNE bids is a python tool to make and access neurophysiological data. This tool is a branch of the MNE tools for neurophysiological analysis.
MNE Bids website
https://mne.tools/mne-bids/stable/index.html
MNE bids pipeline background
Mne bids pipeline website:
https://mne.tools/mne-bids-pipeline/
Full example:
https://mne.tools/mne-bids-pipeline/examples/ds000248.html
Processing
All processing is defined in the config.py file. This has hundreds of options to define the processing.
Here are some of the typical options: https://mne.tools/mne-bids-pipeline/settings/general.html
Here is the full list of options:
https://github.com/mne-tools/mne-bids-pipeline/blob/main/config.py
Example Config (copy into a config.py text file and use)
Modify for use with your data - at a minimum: bids_root, conditions
study_name = 'TESTSTudy' bids_root = 'YOUR_BIDS_DIR' #<< Modify l_freq = 1.0 h_freq = 100. epochs_tmin = -0.1 epochs_tmax = 0.2 baseline = (-0.1, 0.0) resample_sfreq = 300.0 ch_types = ['meg'] conditions = ['stim'] #<< list of conditions N_JOBS=4 #crop_runs = [0, 900] #Can be useful for long tasks that are ended early
Use on biowulf
!!If you run into any issues - please let Jeff Stout know so that the code can be updated!!
Start interactive session with scratch to render visualization offscreen
sinteractive --mem=6G --cpus-per-task=4 --gres=lscratch:50 #adjust mem and cpus accordingly - subjects will run in parrallel
Create BIDS data from data off the scanner
module load mne_scripts #Afni coregistered mri data make_meg_bids.py -meg_input_dir ${MEGFOLDER} -mri_brik AFNI_COREGED+orig.BRIK ## OR ## #Brainsight coregistered mri data make_meg_bids.py -meg_input_dir ${MEGFOLDER} -mri_bsight ${MRI_BSIGHT} -mri_bsight_elec ${MRI_BSIGHT_ELEC}
Freesurfer Processing
Already Processed
mkdir -p ${bids_dir}/derivatives/freesurfer/subjects #If this folder doesn't already exists cp -R ${SUBJECTS_DIR}/${SUBJID} ${bids_dir}/derivatives/freesurfer/subjects
Process Using MNE-BIDS-Pipeline
#add the following step to your processing #your sinteractive session must include --steps=freesurfer
Process data using MNE Bids Pipeline
module purge module load mne_bids_pipeline mne-bids-pipeline-run.py --config=CONFIG.py #Optional Flags #--steps=preprocessing,sensor,source,report or all (default) - Can be a list of steps or a single step #--subject=SUBJECTID(without the sub- prefix)
TEST DATA for biowulf
This section provides some test data to analyze using mne-bids-pipeline. Feel free to adjust parameters in the config.py after you run through the analysis the first time. All of the analysis parameters are defined in the config.py provided. Additional config.py parameters can be found above in Processing.
Start Interactive Session
sinteractive --mem=6G --cpus-per-task=4 --gres=lscratch:50
Copy and untar the data into your folder
cp -R /vf/users/MEGmodules/modules/bids_example_data_airpuff.tar ./ tar -xvf bids_example_data_airpuff.tar #Add the bids_root to your config file echo bids_root=\'$(pwd)/bids_example_data_airpuff\' >> $(pwd)/bids_example_data_airpuff/config.py
Load module and process the data
module load mne_bids_pipeline mne-bids-pipeline-run.py --config=$(pwd)/bids_example_data_airpuff/config.py
#Copy this path for the next step echo $(pwd)/bids_example_data_airpuff/derivatives/mne-bids-pipeline/sub-ON02747/ses-01/meg/sub-ON02747_ses-01_task-airpuff_report.html
#In another terminal download your results from biowulf scp ${USERNAME}@helix.nih.gov:${PathFromAbove} ./
Open sub-ON02747_ses-01_task-airpuff_report.html in an internet browser to view the report