This example covers the normalization of data. Some people prefer to normalize the data during the preprocessing, just before smoothing. I prefer to do the 1st-level analysis completely in subject space and only normalize the contrasts for the 2nd-level analysis. But both approaches are fine.
For the current example, we will take the computed 1st-level contrasts from the previous experiment (again once done with fwhm=4mm and fwhm=8mm) and normalize them into MNI-space. To show two different approaches, we will do the normalization once with ANTs and once with SPM.
Before we can start with the ANTs example, we first need to download the already computed deformation field. The data can be found in the derivatives/fmriprep
folder of the dataset and can be downloaded with the following datalad
command:
%%bash
datalad get -J 4 -d /data/ds000114 /data/ds000114/derivatives/fmriprep/sub-0[2345789]/anat/*h5
Note: This might take a while, as datalad needs to download ~710MB of data
We're using the precomputed warp field from fmriprep, as this step otherwise would take up to 10 hours or more for all subjects to complete. If you're nonetheless interested in computing the warp parameters with ANTs yourself, without using fmriprep, either check out the script ANTS_registration.py or even quicker, use RegistrationSynQuick, Nipype's implementation of antsRegistrationSynQuick.sh
.
The normalization with ANTs requires that you first compute the transformation matrix that would bring the anatomical images of each subject into template space. Depending on your system this might take a few hours per subject. To facilitate this step, the transformation matrix is already computed for the T1 images.
The data for it can be found under:
!ls /data/ds000114/derivatives/fmriprep/sub-*/anat/*h5
Now, let's start with the ANTs normalization workflow!
First, we need to import all the modules we later want to use.
from os.path import join as opj
from nipype import Workflow, Node, MapNode
from nipype.interfaces.ants import ApplyTransforms
from nipype.interfaces.utility import IdentityInterface
from nipype.interfaces.io import SelectFiles, DataSink
from nipype.interfaces.fsl import Info
It's always a good idea to specify all parameters that might change between experiments at the beginning of your script. And remember that we decided to run the group analysis without subject sub-01
, sub-06
and sub-10
because they are left-handed (see this section).
experiment_dir = '/output'
output_dir = 'datasink'
working_dir = 'workingdir'
# list of subject identifiers (remember we use only right handed subjects)
subject_list = ['02', '03', '04', '05', '07', '08', '09']
# task name
task_name = "fingerfootlips"
# Smoothing widths used during preprocessing
fwhm = [4, 8]
# Template to normalize to
template = '/data/ds000114/derivatives/fmriprep/mni_icbm152_nlin_asym_09c/1mm_T1.nii.gz'
Note if you're not using the corresponding docker image, than the template
file might not be in your data
directory. To get mni_icbm152_nlin_asym_09c
, either download it from this website, unpack it and move it to /data/ds000114/derivatives/fmriprep/
or run the following command in a cell:
%%bash
curl -L https://files.osf.io/v1/resources/fvuh8/providers/osfstorage/580705089ad5a101f17944a9 \
-o /data/ds000114/derivatives/fmriprep/mni_icbm152_nlin_asym_09c.tar.gz
tar xf /data/ds000114/derivatives/fmriprep/mni_icbm152_nlin_asym_09c.tar.gz \
-C /data/ds000114/derivatives/fmriprep/.
rm /data/ds000114/derivatives/fmriprep/mni_icbm152_nlin_asym_09c.tar.gz
Initiate all the different interfaces (represented as nodes) that you want to use in your workflow.
# Apply Transformation - applies the normalization matrix to contrast images
apply2con = MapNode(ApplyTransforms(args='--float',
input_image_type=3,
interpolation='BSpline',
invert_transform_flags=[False],
num_threads=1,
reference_image=template,
terminal_output='file'),
name='apply2con', iterfield=['input_image'])
Specify where the input data can be found & where and how to save the output data.
# Infosource - a function free node to iterate over the list of subject names
infosource = Node(IdentityInterface(fields=['subject_id', 'fwhm_id']),
name="infosource")
infosource.iterables = [('subject_id', subject_list),
('fwhm_id', fwhm)]
# SelectFiles - to grab the data (alternativ to DataGrabber)
templates = {'con': opj(output_dir, '1stLevel',
'sub-{subject_id}/fwhm-{fwhm_id}', '???_00??.nii'),
'transform': opj('/data/ds000114/derivatives/fmriprep/', 'sub-{subject_id}', 'anat',
'sub-{subject_id}_t1w_space-mni152nlin2009casym_warp.h5')}
selectfiles = Node(SelectFiles(templates,
base_directory=experiment_dir,
sort_filelist=True),
name="selectfiles")
# Datasink - creates output folder for important outputs
datasink = Node(DataSink(base_directory=experiment_dir,
container=output_dir),
name="datasink")
# Use the following DataSink output substitutions
substitutions = [('_subject_id_', 'sub-')]
subjFolders = [('_fwhm_id_%ssub-%s' % (f, sub), 'sub-%s_fwhm%s' % (sub, f))
for f in fwhm
for sub in subject_list]
subjFolders += [('_apply2con%s/' % (i), '') for i in range(9)] # number of contrast used in 1stlevel an.
substitutions.extend(subjFolders)
datasink.inputs.substitutions = substitutions
Create a workflow and connect the interface nodes and the I/O stream to each other.
# Initiation of the ANTs normalization workflow
antsflow = Workflow(name='antsflow')
antsflow.base_dir = opj(experiment_dir, working_dir)
# Connect up the ANTs normalization components
antsflow.connect([(infosource, selectfiles, [('subject_id', 'subject_id'),
('fwhm_id', 'fwhm_id')]),
(selectfiles, apply2con, [('con', 'input_image'),
('transform', 'transforms')]),
(apply2con, datasink, [('output_image', 'norm_ants.@con')]),
])
It always helps to visualize your workflow.
# Create ANTs normalization graph
antsflow.write_graph(graph2use='colored', format='png', simple_form=True)
# Visualize the graph
from IPython.display import Image
Image(filename=opj(antsflow.base_dir, 'antsflow', 'graph.png'))
Now that everything is ready, we can run the ANTs normalization workflow. Change n_procs
to the number of jobs/cores you want to use.
antsflow.run('MultiProc', plugin_args={'n_procs': 4})
The normalization with SPM12 is rather straightforward. The only thing we need to do is run the Normalize12 module. So let's start!
First, we need to import all the modules we later want to use.
from os.path import join as opj
from nipype.interfaces.spm import Normalize12
from nipype.interfaces.utility import IdentityInterface
from nipype.interfaces.io import SelectFiles, DataSink
from nipype.algorithms.misc import Gunzip
from nipype import Workflow, Node
It's always a good idea to specify all parameters that might change between experiments at the beginning of your script. And remember that we decided to run the group analysis without subject sub-01
, sub-06
and sub-10
because they are left-handed (see this section).
experiment_dir = '/output'
output_dir = 'datasink'
working_dir = 'workingdir'
# list of subject identifiers
subject_list = ['02', '03', '04', '05', '07', '08', '09']
# task name
task_name = "fingerfootlips"
# Smoothing withds used during preprocessing
fwhm = [4, 8]
template = '/opt/spm12-r7219/spm12_mcr/spm12/tpm/TPM.nii'
Initiate all the different interfaces (represented as nodes) that you want to use in your workflow.
# Gunzip - unzip the anatomical image
gunzip = Node(Gunzip(), name="gunzip")
# Normalize - normalizes functional and structural images to the MNI template
normalize = Node(Normalize12(jobtype='estwrite',
tpm=template,
write_voxel_sizes=[1, 1, 1]),
name="normalize")
Specify where the input data can be found & where and how to save the output data.
# Infosource - a function free node to iterate over the list of subject names
infosource = Node(IdentityInterface(fields=['subject_id', 'fwhm_id']),
name="infosource")
infosource.iterables = [('subject_id', subject_list),
('fwhm_id', fwhm)]
# SelectFiles - to grab the data (alternativ to DataGrabber)
templates = {'con': opj(output_dir, '1stLevel',
'sub-{subject_id}/fwhm-{fwhm_id}', '???_00??.nii'),
'anat': opj('/data/ds000114/derivatives', 'fmriprep', 'sub-{subject_id}',
'anat', 'sub-{subject_id}_t1w_preproc.nii.gz')}
selectfiles = Node(SelectFiles(templates,
base_directory=experiment_dir,
sort_filelist=True),
name="selectfiles")
# Datasink - creates output folder for important outputs
datasink = Node(DataSink(base_directory=experiment_dir,
container=output_dir),
name="datasink")
# Use the following DataSink output substitutions
substitutions = [('_subject_id_', 'sub-')]
subjFolders = [('_fwhm_id_%ssub-%s' % (f, sub), 'sub-%s_fwhm%s' % (sub, f))
for f in fwhm
for sub in subject_list]
substitutions.extend(subjFolders)
datasink.inputs.substitutions = substitutions
Create a workflow and connect the interface nodes and the I/O stream to each other.
# Specify Normalization-Workflow & Connect Nodes
spmflow = Workflow(name='spmflow')
spmflow.base_dir = opj(experiment_dir, working_dir)
# Connect up SPM normalization components
spmflow.connect([(infosource, selectfiles, [('subject_id', 'subject_id'),
('fwhm_id', 'fwhm_id')]),
(selectfiles, normalize, [('con', 'apply_to_files')]),
(selectfiles, gunzip, [('anat', 'in_file')]),
(gunzip, normalize, [('out_file', 'image_to_align')]),
(normalize, datasink, [('normalized_files', 'norm_spm.@files'),
('normalized_image', 'norm_spm.@image'),
]),
])
It always helps to visualize your workflow.
# Create SPM normalization graph
spmflow.write_graph(graph2use='colored', format='png', simple_form=True)
# Visualize the graph
from IPython.display import Image
Image(filename=opj(spmflow.base_dir, 'spmflow', 'graph.png'))
Now that everything is ready, we can run the SPM normalization workflow. Change n_procs
to the number of jobs/cores you want to use.
spmflow.run('MultiProc', plugin_args={'n_procs': 4})
Now that we ran the normalization with ANTs and SPM, let us compare their output.
from nilearn.plotting import plot_stat_map
%matplotlib inline
anatimg = '/data/ds000114/derivatives/fmriprep/mni_icbm152_nlin_asym_09c/1mm_T1.nii.gz'
First, let's compare the normalization of the anatomical images:
plot_stat_map(
'/data/ds000114/derivatives/fmriprep/sub-02/anat/sub-02_t1w_space-mni152nlin2009casym_preproc.nii.gz',
title='anatomy - ANTs (normalized to ICBM152)', bg_img=anatimg,
threshold=200, display_mode='ortho', cut_coords=(-50, 0, -10));
plot_stat_map(
'/output/datasink/norm_spm/sub-02_fwhm4/wsub-02_t1w_preproc.nii',
title='anatomy - SPM (normalized to SPM\'s TPM)', bg_img=anatimg,
threshold=200, display_mode='ortho', cut_coords=(-50, 0, -10));
And what about the contrast images for Finger > others?
plot_stat_map(
'/output/datasink/norm_ants/sub-02_fwhm8/con_0005_trans.nii', title='contrast5 - fwhm=8 - ANTs',
bg_img=anatimg, threshold=2, vmax=5, display_mode='ortho', cut_coords=(-39, -37, 56));
plot_stat_map(
'/output/datasink/norm_spm/sub-02_fwhm8/wcon_0005.nii', title='contrast5 - fwhm=8 - SPM',
bg_img=anatimg, threshold=2, vmax=5, display_mode='ortho', cut_coords=(-39, -37, 56));
from nilearn.plotting import plot_glass_brain
plot_glass_brain(
'/output/datasink/norm_ants/sub-02_fwhm8/con_0005_trans.nii', colorbar=True,
threshold=3, display_mode='lyrz', black_bg=True, vmax=6, title='contrast5 - fwhm=8 - ANTs')
plot_glass_brain(
'/output/datasink/norm_spm/sub-02_fwhm8/wcon_0005.nii', colorbar=True,
threshold=3, display_mode='lyrz', black_bg=True, vmax=6, title='contrast5 - fwhm=8 - SPM');