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No visible boxplot with meta-analytical maps #167
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Hi, I'm not sure I understand. Which function are you using? |
Dear Mr. Hansen,
sry for the late reply concerning the functions. Was on holiday and
had no access to the analyses. Enclosed is the code we use with the
set-up and the first comparison with our meta-analytic map. It should
also include a screenshot with the result we got with the first
comparison as in the code.
Best regards
!pip install git+https://github.com/netneurolab/neuromaps
from neuromaps import transforms, nulls, datasets, plotting, images, resampling
print(len(datasets.available_annotations()))
import neuromaps.images
from neuromaps.stats import compare_images
import matplotlib.pyplot as plt
from neuromaps.datasets import available_annotations
gene = datasets.fetch_annotation(source='abagen')
ratio = datasets.fetch_annotation(source='hcps1200', desc='myelinmap')
thick = datasets.fetch_annotation(source='hcps1200', desc='thickness')
deve = datasets.fetch_annotation(source='hill2010', desc='devexp')
evo = datasets.fetch_annotation(source='hill2010', desc='evoexp')
inter = datasets.fetch_annotation(source='mueller2013', desc='intersubjvar')
cbf = datasets.fetch_annotation(source='raichle', desc='cbf')
cbv = datasets.fetch_annotation(source='raichle', desc='cbv')
oxy = datasets.fetch_annotation(source='raichle', desc='cmr02')
glc = datasets.fetch_annotation(source='raichle', desc='cmrglc')
nih = datasets.fetch_annotation(source='reardon2018', desc='scalingnih')
pnc = datasets.fetch_annotation(source='reardon2018', desc='scalingpnc')
cl1 = neuromaps.images.load_nifti('cl1_ALE.nii')
cl2 = neuromaps.images.load_nifti('cl2_ALE.nii')
cl3 = neuromaps.images.load_nifti('cl3_ALE.nii')
cl4 = neuromaps.images.load_nifti('cl4_ALE.nii')
cl5 = neuromaps.images.load_nifti('cl5_ALE.nii')
cl6 = neuromaps.images.load_nifti('cl6_ALE.nii')
neuromaps.datasets.fetch_all_atlases
cl_fsaverage = transforms.mni152_to_fsaverage(cl1, '10k')
print(cl_fsaverage)
print(images.load_data(cl_fsaverage).shape)
cl_rotated = nulls.alexander_bloch(cl_fsaverage, 'fsaverage', '10k', n_perm=1000)
print(cl_rotated.shape)
r, p, nulldist = compare_images(cl_fsaverage, gene, nulls=cl_rotated, return_nulls=True)
print('rho =' + str(r) + ', pspin = ' + str(p))
print(nulldist.shape)
plt.ion()
plt.figure()
plt.scatter(1, r)
plt.boxplot(nulldist)
plt.show()
|
Hi, if other maps work fine, then it's likely caused by the meta-analytic maps. However, we are unable to debug the issue without the map in question. You are welcome to upload the map (it could be a randomized map that produces the same error) so we might be able to see what's going on. Thanks. |
Hi, here one of the meta-analytic maps.zip. |
Description of issue
Hi,
I am currently trying to integrate neurompas into my meta-analysis. However, I have the problem that when I use the meta-analytical maps, it does not show me a boxplot in the graph, but it gives me the r and p-spin values. It does not give me an error message either. When i use an activation map from a task-based fMRI experiment, everything works fine. Is it possible that the binary values of the meta-analytical maps cannot be calculated correctly?
Thanks in advance
Code of Conduct
neuromaps
Code of ConductThe text was updated successfully, but these errors were encountered: