This example shows how to calculate the lengths of a set of streamlines and also how to compress the streamlines without considerably reducing their lengths or overall shape.
A streamline in DIPY_ is represented as a numpy array of size \((N imes 3)\) where each row of the array represents a 3D point of the streamline. A set of streamlines is represented with a list of numpy arrays of size \((N_i imes 3)\) for \(i=1:M\) where \(M\) is the number of streamlines in the set.
import numpy as np from dipy.tracking.distances import approx_polygon_track from dipy.tracking.streamline import set_number_of_points from dipy.tracking.utils import length import matplotlib.pyplot as plt from dipy.viz import window, actor
Let’s first create a simple simulation of a bundle of streamlines using a cosine function.
def simulated_bundles(no_streamlines=50, n_pts=100): t = np.linspace(-10, 10, n_pts) bundle =  for i in np.linspace(3, 5, no_streamlines): pts = np.vstack((np.cos(2 * t/np.pi), np.zeros(t.shape) + i, t )).T bundle.append(pts) start = np.random.randint(10, 30, no_streamlines) end = np.random.randint(60, 100, no_streamlines) bundle = [10 * streamline[start[i]:end[i]] for (i, streamline) in enumerate(bundle)] bundle = [np.ascontiguousarray(streamline) for streamline in bundle] return bundle bundle = simulated_bundles() print('This bundle has %d streamlines' % len(bundle))
This bundle has 50 streamlines
This bundle has 50 streamlines.
length function we can retrieve the lengths of each streamline.
Below we show the histogram of the lengths of the streamlines.
lengths = list(length(bundle)) fig_hist, ax = plt.subplots(1) ax.hist(lengths, color='burlywood') ax.set_xlabel('Length') ax.set_ylabel('Count') # plt.show() plt.legend() plt.savefig('length_histogram.png')
Length will return the length in the units of the coordinate system that
streamlines are currently. So, if the streamlines are in world coordinates then
the lengths will be in millimeters (mm). If the streamlines are for example in
native image coordinates of voxel size 2mm isotropic then you will need to
multiply the lengths by 2 if you want them to correspond to mm. In this example
we process simulated data without units, however this information is good to have
in mind when you calculate lengths with real data.
Next, let’s find the number of points that each streamline has.
n_pts = [len(streamline) for streamline in bundle]
Often, streamlines are represented with more points than what is actually
necessary for specific applications. Also, sometimes every streamline has a
different number of points, which could be a problem for some algorithms.
set_number_of_points can be used to set the number of points
of a streamline at a specific number and at the same time enforce that all the
segments of the streamline will have equal length.
bundle_downsampled = set_number_of_points(bundle, 12) n_pts_ds = [len(s) for s in bundle_downsampled]
Alternatively, the function
approx_polygon_track allows reducing the number
of points so that there are more points in curvy regions and less points in
less curvy regions. In contrast with
set_number_of_points it does not
enforce that segments should be of equal size.
bundle_downsampled2 = [approx_polygon_track(s, 0.25) for s in bundle] n_pts_ds2 = [len(streamline) for streamline in bundle_downsampled2]
approx_polygon_track can be thought as
methods for lossy compression of streamlines.
# Enables/disables interactive visualization interactive = False scene = window.Scene() scene.SetBackground(*window.colors.white) bundle_actor = actor.streamtube(bundle, window.colors.red, linewidth=0.3) scene.add(bundle_actor) bundle_actor2 = actor.streamtube(bundle_downsampled, window.colors.red, linewidth=0.3) bundle_actor2.SetPosition(0, 40, 0) bundle_actor3 = actor.streamtube(bundle_downsampled2, window.colors.red, linewidth=0.3) bundle_actor3.SetPosition(0, 80, 0) scene.add(bundle_actor2) scene.add(bundle_actor3) scene.set_camera(position=(0, 0, 0), focal_point=(30, 0, 0)) window.record(scene, out_path='simulated_cosine_bundle.png', size=(900, 900)) if interactive: window.show(scene)
From the figure above we can see that all 3 bundles look quite similar. However, when we plot the histogram of the number of points used for each streamline, it becomes obvious that we have managed to reduce in a great amount the size of the initial dataset.
fig_hist, ax = plt.subplots(1) ax.hist(n_pts, color='r', histtype='step', label='initial') ax.hist(n_pts_ds, color='g', histtype='step', label='set_number_of_points (12)') ax.hist(n_pts_ds2, color='b', histtype='step', label='approx_polygon_track (0.25)') ax.set_xlabel('Number of points') ax.set_ylabel('Count') # plt.show() plt.legend() plt.savefig('n_pts_histogram.png')
Finally, we can also show that the lengths of the streamlines haven’t changed considerably after applying the two methods of downsampling.
lengths_downsampled = list(length(bundle_downsampled)) lengths_downsampled2 = list(length(bundle_downsampled2)) fig, ax = plt.subplots(1) ax.plot(lengths, color='r', label='initial') ax.plot(lengths_downsampled, color='g', label='set_number_of_points (12)') ax.plot(lengths_downsampled2, color='b', label='approx_polygon_track (0.25)') ax.set_xlabel('Streamline ID') ax.set_ylabel('Length') # plt.show() plt.legend() plt.savefig('lengths_plots.png')
Total running time of the script: ( 0 minutes 0.398 seconds)