Mindboggle-101 / code_postprocess_Mindboggle101_data.txt
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Add Mindboggle-101 volumetric subset (101 subjects, manual DKT31 cortical labels)
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"""
Post-process Mindboggle-101 volume images for distribution,
using Mindboggle, FreeSurfer, and FSL tools:
# Convert label volume from FreeSurfer to original space
# Extract brain by masking with manual cortical
and automated subcortical labels
# Remove subcortical labels
# Convert DKT31 to DKT25 labels
# Affine register T1-weighted brain to MNI152 brain
# Transfer whole-head images with affine transform
# Transfer labeled images with affine transform
(and nearest neighbor interpolation)
Authors: Arno Klein . arno@mindboggle.info . www.binarybottle.com
(c) 2013 Mindbogglers (www.mindboggle.info), under Apache License Version 2.0
"""
import os
# Paths, template, and label conversion files
mb101_path = '/hd2/Lab/Brains/Mindboggle101/'
mb_info_path = '/projects/Mindboggle/mindboggle/mindboggle/info/'
template = mb101_path+'MNI152space/MNI152_T1_1mm_brain.nii.gz'
relabel_file = os.path.join(mb_info_path, 'labels.volume.DKT31to25.txt')
# Loop through subjects
list_file = mb_info_path + 'atlases101.txt'
fid = open(list_file, 'r')
subjects = fid.readlines()
subjects = [''.join(x.split()) for x in subjects]
for subject in subjects:
print(">>> Process subject: {0}...".format(subject))
subject_path = mb101_path + 'subjects/' + subject + '/mri/'
# Identify original files
full_labels_orig = subject_path+'aparcNMMjt+aseg.nii.gz'
head = subject_path+'t1weighted.nii.gz'
# Name all output files
local_labels0 = 'labels.DKT31.manual+aseg.nii.gz'
full_labels = subject_path + local_labels0
local_labels = 'labels.DKT31.manual.nii.gz'
DKT31_labels = subject_path + local_labels
DKT25_labels = subject_path + 'labels.DKT25.manual.nii.gz'
brain = subject_path+'t1weighted_brain.nii.gz'
xfm_matrix = subject_path+'t1weighted_brain.MNI152.mat'
xfm_brain = subject_path+'t1weighted_brain.MNI152.nii.gz'
xfm_head = subject_path+'t1weighted.MNI152.nii.gz'
xfm_DKT25 = subject_path+'labels.DKT25.manual.MNI152.nii.gz'
xfm_DKT31 = subject_path+'labels.DKT31.manual.MNI152.nii.gz'
xfm_DKT31aseg = subject_path+'labels.DKT31.manual+aseg.MNI152.nii.gz'
# Convert label volume from FreeSurfer to original space
print("Convert label volume from FreeSurfer to original space...")
#if 'OASIS-TRT-20-' in subject or 'NKI-TRT-20-' in subject:
cmd = ' '.join(['mri_vol2vol --mov', full_labels_orig, '--targ', head,
'--regheader --o', full_labels])
#cmd = ' '.join(['mri_convert -rl', head, '-rt nearest',
# full_labels_orig, full_labels])
print(cmd); os.system(cmd)
# Extract brain by masking with labels using FreeSurfer
print("Extract brain by masking with labels using FreeSurfer...")
cmd = ' '.join(['mri_vol2vol --mov', full_labels, '--targ', head,
'--o temp.nii.gz --regheader'])
print(cmd); os.system(cmd)
cmd = ' '.join(['mri_mask', head, 'temp.nii.gz', brain])
#cmd = ' '.join(['/usr/bin/fsl4.1-fslmaths', head, '-mas', full_labels, brain])
print(cmd); os.system(cmd)
# Remove subcortical labels
print("Remove subcortical labels...")
from mindboggle.label.relabel import remove_volume_labels
labels_to_remove = range(1,300) # Remove noncortical (+aseg) labels
labels_to_remove.extend([1000,1001,2000,2001])
remove_volume_labels(full_labels, labels_to_remove)
cmd = ' '.join(['mv', local_labels0, DKT31_labels])
print(cmd); os.system(cmd)
# Convert DKT31 to DKT25 labels
print("Convert DKT31 to DKT25 labels...")
from mindboggle.utils.io_file import read_columns
from mindboggle.label.relabel import relabel_volume
old_labels, new_labels = read_columns(relabel_file, 2)
relabel_volume(DKT31_labels, old_labels, new_labels)
cmd = ' '.join(['mv', local_labels, DKT25_labels])
print(cmd); os.system(cmd)
# Affine register T1-weighted brain to MNI152 brain using FSL's flirt
print("Affine register T1-weighted brain to MNI152 brain using FSL's flirt...")
cmd = ' '.join(['flirt', '-in', brain, '-ref', template,
'-out', xfm_brain, '-omat', xfm_matrix])
print(cmd); os.system(cmd)
# Transfer whole-head images with affine transform using FSL's flirt
print("Transfer whole-head images with affine transform using FSL's flirt...")
cmd = ' '.join(['flirt', '-in', head, '-ref', template,
'-applyxfm -init', xfm_matrix, '-out', xfm_head])
print(cmd); os.system(cmd)
# Transfer labeled images with affine transform (and nearest neighbor interpolation)
print("Transfer labeled images with affine transform "
"(and nearest neighbor interpolation)...")
cmd = ' '.join(['flirt', '-in', DKT25_labels, '-ref', template,
'-applyxfm -init', xfm_matrix,
'-interp nearestneighbour -out', xfm_DKT25])
print(cmd); os.system(cmd)
cmd = ' '.join(['flirt', '-in', DKT31_labels, '-ref', template,
'-applyxfm -init', xfm_matrix,
'-interp nearestneighbour -out', xfm_DKT31])
print(cmd); os.system(cmd)
cmd = ' '.join(['flirt', '-in', full_labels, '-ref', template,
'-applyxfm -init', xfm_matrix,
'-interp nearestneighbour -out', xfm_DKT31aseg])
print(cmd); os.system(cmd)