Tracking with the Sparse Fascicle Model

Tracking requires a per-voxel model. Here, the model is the Sparse Fascicle Model (SFM), described in [Rokem2015]. This model reconstructs the diffusion signal as a combination of the signals from different fascicles (see also sfm-reconst).

from dipy.core.gradients import gradient_table
from dipy.data import get_sphere, get_fnames
from dipy.io.gradients import read_bvals_bvecs
from dipy.io.image import load_nifti, load_nifti_data
from dipy.direction.peaks import peaks_from_model
from dipy.io.streamline import save_trk
from dipy.io.stateful_tractogram import Space, StatefulTractogram
from dipy.reconst.csdeconv import auto_response_ssst
from dipy.reconst import sfm
from dipy.tracking import utils
from dipy.tracking.local_tracking import LocalTracking
from dipy.tracking.streamline import (select_random_set_of_streamlines,
                                      transform_streamlines,
                                      Streamlines)
from dipy.tracking.stopping_criterion import ThresholdStoppingCriterion
from dipy.viz import window, actor, colormap, has_fury
from numpy.linalg import inv

# Enables/disables interactive visualization
interactive = False

To begin, we read the Stanford HARDI data set into memory:

hardi_fname, hardi_bval_fname, hardi_bvec_fname = get_fnames('stanford_hardi')
label_fname = get_fnames('stanford_labels')

data, affine, hardi_img = load_nifti(hardi_fname, return_img=True)
labels = load_nifti_data(label_fname)
bvals, bvecs = read_bvals_bvecs(hardi_bval_fname, hardi_bvec_fname)
gtab = gradient_table(bvals, bvecs)

This data set provides a label map (generated using FreeSurfer), in which the white matter voxels are labeled as either 1 or 2:

white_matter = (labels == 1) | (labels == 2)

The first step in tracking is generating a model from which tracking directions can be extracted in every voxel.

For the SFM, this requires first that we define a canonical response function that will be used to deconvolve the signal in every voxel

response, ratio = auto_response_ssst(gtab, data, roi_radii=10, fa_thr=0.7)

We initialize an SFM model object, using this response function and using the default sphere (362 vertices, symmetrically distributed on the surface of the sphere):

sphere = get_sphere()
sf_model = sfm.SparseFascicleModel(gtab, sphere=sphere,
                                   l1_ratio=0.5, alpha=0.001,
                                   response=response[0])

We fit this model to the data in each voxel in the white-matter mask, so that we can use these directions in tracking:

pnm = peaks_from_model(sf_model, data, sphere,
                       relative_peak_threshold=.5,
                       min_separation_angle=25,
                       mask=white_matter,
                       parallel=True,
                       num_processes=2)

A ThresholdStoppingCriterion object is used to segment the data to track only through areas in which the Generalized Fractional Anisotropy (GFA) is sufficiently high.

stopping_criterion = ThresholdStoppingCriterion(pnm.gfa, .25)

Tracking will be started from a set of seeds evenly distributed in the white matter:

seeds = utils.seeds_from_mask(white_matter, affine, density=[2, 2, 2])

For the sake of brevity, we will take only the first 1000 seeds, generating only 1000 streamlines. Remove this line to track from many more points in all of the white matter

seeds = seeds[:1000]

We now have the necessary components to construct a tracking pipeline and execute the tracking

streamline_generator = LocalTracking(pnm, stopping_criterion, seeds, affine,
                                     step_size=.5)
streamlines = Streamlines(streamline_generator)

Next, we will create a visualization of these streamlines, relative to this subject’s T1-weighted anatomy:

t1_fname = get_fnames('stanford_t1')
t1_data, t1_aff = load_nifti(t1_fname)
color = colormap.line_colors(streamlines)

To speed up visualization, we will select a random sub-set of streamlines to display. This is particularly important, if you track from seeds throughout the entire white matter, generating many streamlines. In this case, for demonstration purposes, we select a subset of 900 streamlines.

plot_streamlines = select_random_set_of_streamlines(streamlines, 900)

if has_fury:
    streamlines_actor = actor.streamtube(
        list(transform_streamlines(plot_streamlines, inv(t1_aff))),
        colormap.line_colors(streamlines), linewidth=0.1)

    vol_actor = actor.slicer(t1_data)

    vol_actor.display(40, None, None)
    vol_actor2 = vol_actor.copy()
    vol_actor2.display(None, None, 35)

    scene = window.Scene()
    scene.add(streamlines_actor)
    scene.add(vol_actor)
    scene.add(vol_actor2)

    window.record(scene, out_path='tractogram_sfm.png', size=(800, 800))
    if interactive:
        window.show(scene)
tracking sfm
examples_built/13_fiber_tracking/tractogram_sfm.png

Sparse Fascicle Model tracks

Finally, we can save these streamlines to a ‘trk’ file, for use in other software, or for further analysis.

sft = StatefulTractogram(streamlines, hardi_img, Space.RASMM)
save_trk(sft, "tractogram_sfm_detr.trk")

References

[Rokem2015]

Ariel Rokem, Jason D. Yeatman, Franco Pestilli, Kendrick N. Kay, Aviv Mezer, Stefan van der Walt, Brian A. Wandell (2015). Evaluating the accuracy of diffusion MRI models in white matter. PLoS ONE 10(4): e0123272. doi:10.1371/journal.pone.0123272

Total running time of the script: ( 59 minutes 7.644 seconds)

Gallery generated by Sphinx-Gallery