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This page describes how to perform seed-based functional connectivity (FC) analysis in FSFAST. This is an extension of the task-based analysis for which there is much more documentation. It may be worth your time to study some of the preprocessing and task-based analysis as found in [[http://surfer.nmr.mgh.harvard.edu/pub/docs/freesurfer.fsfast.ppt|FS-FAST powerpoint]] This page describes how to perform seed-based functional connectivity (FC) analysis in FSFAST. This is an extension of the task-based analysis for which there is much more documentation. It may be worth your time to study some of the preprocessing and task-based analysis as found in [[http://surfer.nmr.mgh.harvard.edu/pub/docs/freesurfer.fsfast.ppt|FS-FAST powerpoint]] and the [[http://surfer.nmr.mgh.harvard.edu/fswiki/FsFastTutorial|FS-FAST tutorial]].
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dcmunpack -src dicomdir/subject/ALLDICOMS -targ fcMRI_dir/subject -fsfast -run 3 bold nii.gz f.nii.gz -run 4 bold nii.gz f.nii.gz dcmunpack -src dicomdir -targ sessionid -fsfast -run 3 bold nii.gz f.nii.gz -run 4 bold nii.gz f.nii.gz
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 * Have all fMRI dicoms linked into "ALLDICOMS" directory
 * Arguement for "-targ" specifies output directory
 * -run 3 bold nii.gz f.nii.gz will unpack run 3 fmri to fcMRI_dir/subject/bold/003/f.nii.gz
 * Have all fMRI dicoms for this subject in the dicomdir folder or subfolders under this folder
 * Arguement for "-targ" specifies output directory here called "sessionid". This should be unique to the subject (and visit if longitudinal). This is called the session folder.
 * -run 3 bold nii.gz f.nii.gz will unpack run 3 fmri to sessionid/bold/003/f.nii.gz
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*STEP 2: Link to FreeSurfer anatomical analysis: Create "subjectname" text file in the session directory. Write in it the subject's recon directory name (as labeld in $SUBJECTS_DIR).

C. Create a sessid file (text file with list of your sessions) in your Study DIR (optional)
*STEP 2: Link to FreeSurfer anatomical analysis. This is done by creating a text file called sessionid/subjectname with the name of the FreeSurfer anatomical folder as created with recon-all and found in $SUBJECTS_DIR.
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preproc-sess -s <subjid> -fwhm <#> preproc-sess -s sessionid -fwhm 10 -surface fsaverage lhrh
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A. By default this will do motion correction, smoothing & brain masking By default this will do motion correction, masking, registration to the anatomical, sampling to the surface, and surface smoothing. The sampling is done onto the surface of the lh and rh hemispheres of fsaverage. Note that eventhough the time series data are sampled onto fsaverage, the FC seeds are derived from the indvidual anatomy as shown below.
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B. Quality Check (plot-twf-sess) *STEP 4:
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C.Examine additions to FSFAST hierarchy (in each run of bold dir): There are two methods of deriving a seed region:
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 ||f.nii ||(Raw fMRI data) ||
 ||fmc.nii ||(Motion corrected-MC) ||
 ||fmcsm5.nii ||(MC & smoothed) ||
 ||fmc.mcdat ||(Text file with the MC parameters (AFNI)) ||
 ||brain.mgz ||(Binary mask of the brain) ||



NOTE: you ''may'' need to convert the file "fmcpr.mgz" to fmcpr.nii using [[http://surfer.nmr.mgh.harvard.edu/fswiki/mri_convert|mri_convert]]

Found in each bold scan dir. Sample cmd:

mri_convert session/bold/002/fmcpr.mgz session/bold/002/fmcpr.nii

mri_convert session/bold/003/fmcpr.mgz session/bold/003/fmcpr.nii



Next, I'll outline two methods of deriving a seed region:

1) To use a full-size Freesurfer parcellation from aparc+aseg.mgz, continue with STEP 4 on this page.
1) To use a full-size Freesurfer parcellation from aparc+aseg.mgz, continue with STEP 5 on this page.
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*STEP 4: Use fcseed-config to record the parameters you wish to pass to your connectivity analysis. *STEP 5: Use fcseed-config to configure the parameters you wish to pass to your connectivity analysis.
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This example will use the FreeSurfer cortical segmentation for the left posterior cingulate (segID: 1010). For seed regions, we recommend generating the mean signal timecourse by using "-mean" This example will use the FreeSurfer cortical segmentation for the left posterior cingulate (segID: 1010) as defined for this individual. For seed regions, we recommend generating the mean signal timecourse by using "-mean". Note that this does not perform any analysis, it just creates a text file with the configuration.
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Sample cmd (mean seed region timecourse):

fcseed-sess -s <session> -cfg mean.L_Posteriorcingulate.config
{{{fcseed-sess -s sessionid -cfg mean.L_Posteriorcingulate.config}}}
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 . fcseed-sess -s <session> -cfg wm.config  . fcseed-sess -s sessionid -cfg wm.config

About

This page describes how to perform seed-based functional connectivity (FC) analysis in FSFAST. This is an extension of the task-based analysis for which there is much more documentation. It may be worth your time to study some of the preprocessing and task-based analysis as found in FS-FAST powerpoint and the FS-FAST tutorial.

*STEP 1: Unpack Data into the FSFAST Hierarchy using dcmunpack (run with -help for more documentation):

Sample cmd:

dcmunpack -src dicomdir -targ sessionid -fsfast -run 3 bold nii.gz f.nii.gz -run 4 bold nii.gz f.nii.gz

In this sample command...

  • Have all fMRI dicoms for this subject in the dicomdir folder or subfolders under this folder
  • Arguement for "-targ" specifies output directory here called "sessionid". This should be unique to the subject (and visit if longitudinal). This is called the session folder.
  • -run 3 bold nii.gz f.nii.gz will unpack run 3 fmri to sessionid/bold/003/f.nii.gz
  • To get a list of runs, run dcmunpack -src dicomdir/subject/ALLDICOMS
  • Use "-fsfast" to generate fsfast hierarchy shown in the image below

fsfast-hierarchy.jpg

*STEP 2: Link to FreeSurfer anatomical analysis. This is done by creating a text file called sessionid/subjectname with the name of the FreeSurfer anatomical folder as created with recon-all and found in $SUBJECTS_DIR.

*STEP 3: Pre-process your bold data using preproc-sess preproc-sess

Sample cmd:

preproc-sess -s sessionid -fwhm 10 -surface fsaverage lhrh

By default this will do motion correction, masking, registration to the anatomical, sampling to the surface, and surface smoothing. The sampling is done onto the surface of the lh and rh hemispheres of fsaverage. Note that eventhough the time series data are sampled onto fsaverage, the FC seeds are derived from the indvidual anatomy as shown below.

*STEP 4:

There are two methods of deriving a seed region:

1) To use a full-size Freesurfer parcellation from aparc+aseg.mgz, continue with STEP 5 on this page.

2) To split the full Freesurfer parcellation into multiple seeds ("split parcellation"), follow the additional steps here - and resume with step 5 on this page...

*STEP 5: Use fcseed-config to configure the parameters you wish to pass to your connectivity analysis.

Sample command: fcseed-config -segid 1010 -fcname mean.L_Posteriorcingulate.dat -fsd bold -mean -cfg mean.L_Posteriorcingulate.config

This example will use the FreeSurfer cortical segmentation for the left posterior cingulate (segID: 1010) as defined for this individual. For seed regions, we recommend generating the mean signal timecourse by using "-mean". Note that this does not perform any analysis, it just creates a text file with the configuration.

*STEP 5: Pass the config text file to fcseed-sess to generate time-course information for your chosen seed region (or for nuisance variable signal).

fcseed-sess  -s sessionid -cfg mean.L_Posteriorcingulate.config

Sample cmd (mean waveforms for nuisance regressors, but PCA also possible with -pca):

for white matter:

  • fcseed-config -wm -fcname wm.dat -fsd bold -cfg wm.config
  • fcseed-sess -s sessionid -cfg wm.config

for ventricles + CSF:

  • fcseed-config -vcsf -fcname vcsf.dat -fsd bold -mean -cfg vcsf.config
  • fcseed-sess -s <session> -cfg vcsf.config

  • NOTE: Once a config file is created it may be used for multiple sessions

*STEP 5: Use mkanalysis-sess to setup an analysis for your FC data

Sample cmd:

mkanalysis-sess -a <analysisname>

  • -surface fsaverage <hemi> -notask -taskreg mean.L_Posteriorcingulate.dat 1 -nuisreg vcsfreg.dat 1 -nuisreg wmreg.dat 1 -nuisreg global.waveform.dat 1 -fwhm 5 -fsd bold -TR <TR> -mcextreg -polyfit 5 -nskip 4

Note: if you do not want to regress out the global signal, then do not include it in the mkanalysis-sess command.

*STEP 6: Use selxavg3-sess to run the subject-level analysis outlined by the above mkanalysis-sess cmd.

  • selxavg3-sess -s <session> -a <analysisname>

*STEP 7: Choose the contrast file (generated in each session's contrast directory) that you wish to analyze on a group level:

  • # ces.mgz - contrast effect size (contrast matrix * regression coef) # cesvar.mgz - variance of contrast effect size # sig.mgz - significance map (-log10(p)) # pcc.mgz - partial correlation coefficient map

*STEP 8: To continue with a group-level analysis, try one of the methods below:

  • Method 1:
    • create fsgd file containing all sessions of interest
    • Concatenate contrast files using mri_concat

    • Run group analysis using mri_glmfit

    Should also be possible with: Method 2: Should also be possible with: Method 3:

FsFastFunctionalConnectivityWalkthrough (last edited 2024-01-16 14:11:01 by DougGreve)