|
Size: 3469
Comment:
|
Size: 4169
Comment:
|
| Deletions are marked like this. | Additions are marked like this. |
| Line 88: | Line 88: |
| The --morph option produces source estimates morphed to the average brain (necessary for grand-averaging). If you don't use it, source estimates will be computed on individual cortical surfaces. Some degree of smoothing (--smooth) is necessary for display. The baseline definition (--bmin/bmax) can be omitted if input data are already appropriately baseline-corrected. Note that this option will not baseline-correct the source estimates. |
|
| Line 97: | Line 104: |
"Subject1, Subject2..." etc. are the sub-directories in the subjects' MRI directories (created by Freesurfer). The paths to these subdirectories have to be specified in the environment variables, e.g. "setenv SUBJECTS_DIR /mymridirectory/". |
Compute the Source Estimates (mne_make_movie)
Applying the Inverse Operator
This script applies the inverse operator to MEG data and outputs the current estimates. The current estimates are morphed to the [#averagebrain average brain] (see below), for [#grandaverage grand-averaging] (see further below). The results (*.stc-files) can be viewed in mne_analyze, and read into Matlab using mne_read_stc_file. You can get infos on your stc-files (e.g. maximum value, relevant for scaling your display) using mne_process_stc.
The main ingredients are
* the inverse operator
* the averaged MEG data (fiff-files)
* the average cortical surface (see below)
The parameters below are reasonable choices for standard analyses. However, these Wiki pages are not supposed to substitute the [http://www.nmr.mgh.harvard.edu/meg/manuals/MNE-manual-2.6.pdf MNE manual], [http://imaging.mrc-cbu.cam.ac.uk/meg/MEGpapers reading papers], and [http://imaging.mrc-cbu.cam.ac.uk/imaging/ImagersInterestGroup discussions] with more experienced researchers.
#
## Your variables
datapath='<myMEGdatapath>' # root directory for your MEG data
MRIpath='/myMRIdirectory/' # where your MRI subdirectories are
outpath='/myoutpath' # path for output files
#condition names as used in file names to which inverse operator shall be applied
conds=('cond1' 'cond2' 'cond3')
# subjects names used for MRI data
subjects=(\
'Subject1' \
'Subject2' \
'Subject3' \
)
# MEG IDs (your directory structure may differ)
subj_pre=(\
'meg10_0001' \
'meg10_0002' \
'meg10_0003' \
)
# MEG subdirectories (your directory structure may differ)
subj_dir=(\
'100001' \
'100002' \
'100003' \
)
## Processing:
nsubjects=${#subjects[*]}
lastsubj=`expr $nsubjects - 1`
nconds=${#conds[*]}
lastcond=`expr $nconds - 1`
for m in `seq 0 ${lastsubj}`
do
echo " "
echo " Computing movies for SUBJECT ${subjects[m]}"
echo " "
for c in `seq 0 ${lastcond}`
do
# Current Estimates
mne_make_movie \
--subject {subjects[m]} \
--inv ${datapath}/${subj_pre[m]}/${subj_dir[m]}/YourName_1L-MEG-loose0.2-inv.fif \
--meas ${datapath}/${subj_pre[m]}/${subj_dir[m]}/${conds[c]}.fif \
--morph average \
--smooth 5 \
--bmin -100 \
--bmax 0 \
--stc ${outpath}/${subj_pre[m]}_${conds[c]}
done # conditions
done # subjectsThe --morph option produces source estimates morphed to the average brain (necessary for grand-averaging). If you don't use it, source estimates will be computed on individual cortical surfaces.
Some degree of smoothing (--smooth) is necessary for display.
The baseline definition (--bmin/bmax) can be omitted if input data are already appropriately baseline-corrected. Note that this option will not baseline-correct the source estimates.
Computing the Average Cortical Surface
# make_average_subject --subjects Subject1 Subject2 Subject3
"Subject1, Subject2..." etc. are the sub-directories in the subjects' MRI directories (created by Freesurfer). The paths to these subdirectories have to be specified in the environment variables, e.g. "setenv SUBJECTS_DIR /mymridirectory/".
Grand-averaging STC-files
For grand-averaging, STC-files should have been created using the --morph option in mne_make_movie (see above). You can then average them using the command
mne_average_estimates --desc <descriptionfile.txt>
where descriptionfile.txt is of the form
stc /yourpath/filetoaverage1.stc stc /yourpath/filetoaverage2.stc stc /yourpath/filetoaverage3.stc deststc <youroutputfile>
You can create description files for every average you want to compute, and execute them in one script
# mne_average_estimates --desc <descriptionfile1.txt> mne_average_estimates --desc <descriptionfile2.txt> mne_average_estimates --desc <descriptionfile3.txt>
