flair-linear - Affine registration of FLAIR images to the MNI standard space¶
This pipeline performs a set of steps in order to affinely align FLAIR images to the MNI space using the ANTs software package [Avants et al., 2014].
These steps include:
- bias field correction using N4ITK [Tustison et al., 2010]
- affine registration to the MNI152NLin2009cSym template [Fonov et al., 2011, 2009] in MNI space with the SyN algorithm [Avants et al., 2008]
- cropping of the registered images to remove the background
Dependencies¶
If you only installed the core of Clinica, this pipeline needs the installation of ANTs on your computer.
Tip
Since clinica 0.9.0 you have the option to rely on ANTsPy
instead of ANTs to run this pipeline, which means that the installation of ANTs is not
required in this case. The ANTsPy package is installed with other Python dependencies of Clinica.
To use this options, you simply need to add the --use-antspy option flag to the command line (see below).
Note however that this is a new and not extensively tested option such that bugs or unexpected
results are possible. Please contact the Clinica developer team if you encounter issues.
Running the pipeline¶
The pipeline can be run with the following command line:
clinica run flair-linear [OPTIONS] BIDS_DIRECTORY CAPS_DIRECTORY
where:
BIDS_DIRECTORYis the input folder containing the dataset in a BIDS hierarchy.CAPS_DIRECTORYis the output folder containing the results in a CAPS hierarchy.
On default, cropped images (matrix size 169×208×179, 1 mm isotropic voxels) are generated to reduce the computing power required when training deep learning models.
Use the option --uncropped_image if you do not want to crop the image.
Finally, it is possible to use ANTsPy instead of ANTs by passing the --use-antspy flag.
Note
The arguments common to all Clinica pipelines are described in Interacting with clinica.
Tip
Do not hesitate to type clinica run flair-linear --help to see the full list of parameters.
Outputs¶
Results are stored in the following folder of the CAPS hierarchy: subjects/<participant_id>/<session_id>/flair_linear with the following outputs:
<source_file>_space-MNI152NLin2009cSym_res-1x1x1_FLAIR.nii.gz: FLAIR image affinely registered to theMNI152NLin2009cSymtemplate.- (optional)
<source_file>_space-MNI152NLin2009cSym_desc-Crop_res-1x1x1_FLAIR.nii.gz: FLAIR image registered to theMNI152NLin2009cSymtemplate and cropped. <source_file>_space-MNI152NLin2009cSym_res-1x1x1_affine.mat: affine transformation estimated with ANTs.
Describing this pipeline in your paper¶
Example of paragraph
These results have been obtained using the flair-linear pipeline of Clinica
[Routier et al., 2021;
Wen et al., 2020].
More precisely, bias field correction was applied using the N4ITK method
[Tustison et al., 2010].
Next, an affine registration was performed using the SyN algorithm
[Avants et al., 2008]
from ANTs [Avants et al., 2014]
to align each image to the MNI space with the ICBM 2009c nonlinear symmetric template
[Fonov et al., 2011,
2009].
(Optional) The registered images were further cropped to remove the background
resulting in images of size 169×208×179, with 1 mm isotropic voxels.
Tip
Easily access the papers cited on this page on Zotero.
Contact us !¶
- Check for past answers on Clinica Google Group
- Start a discussion on GitHub
- Report an issue on Github