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Open Scripts and pipelines from the Multimodal Imaging and Connectome Analysis Lab at the Montreal Neurological Institute

Home Page: http://mica-mni.github.io

License: GNU General Public License v3.0

Python 13.52% Shell 0.07% MATLAB 26.86% R 0.41% M 0.03% HTML 2.90% Jupyter Notebook 56.20%
neuroimaging connectomics multimodal histology machine-learning multi-scale networks neuroscience gradients

micaopen's Introduction

micaopen

Open Software from the MICA lab (http:/mica-mni.github.io), other useful tools, and supplementary data that accompanies some of our recent publications.

Main tools

MPC: tool for microstructure profile covariance analysis, which can generate subject specific networks from histological reconstructions as well as myelin sensitive MRI data, used for the analysis of microstructural gradients. For further details, see our paper: Paquola et al. 2019 PLoS Biology (https://doi.org/10.1371/journal.pbio.3000284)

gradients_volumetric: The gradients contained within this repo were created as part of Paquola et al.(2019) then projected to volumetric MNI152 space for wider use.

BigBrain: BigBrain histological profiles and statistical profile moments. Please cite Paquola et al., (2019) when using the Big Brain profiles (https://doi.org/10.1371/journal.pbio.3000284)

BrainSpace: BrainSpace is a lightweight cross-platform toolbox primarily intended for macroscale gradient mapping and analysis of neuroimaging and connectome level data. BrainSpace is available in Python and MATLAB. For further details, see Vos de Wael, Benkarim et al. (2019) biorxiv (https://www.biorxiv.org/content/10.1101/761460v1) and http://brainspace.readthedocs.io

diffusion_map_embedding: this code implements diffusion map embedding technique in Matlab, used in our hippocampal subfield connectivity gradient paper: Vos de Wael et al., 2018 PNAS (https://www.pnas.org/content/115/40/10154.abstract). These tools have now become part of BrainSpace.

a_moment_of_change: This repository is a companion to our preprint "Shifts in myeloarchitecture characterise adolescent development of cortical gradients" (https://www.biorxiv.org/content/10.1101/706341v2). In the repo, we provide preprocessed data used in the analysis as well as the script to reproduce the primary figures

SurfStat: Contains SurfStat (Chicago version) for surface- and volume-based statistical analysis and visualization. Documentation links are here: http://math.mcgill.ca/~keith/surfstat or http://mica-mni.github.io/surfstat. Also contains addons from the micalab and tutorial data.

Other goodies

mica_powertools: extra scripts from the MICA lab, loosely documented at this point but perhaps soon unified, better documented, and toolboxed

dcm_sorter: python code to sort a dicom directory into subfolders

autism_hierarchy: videos of step wise functional connectivity analysis performed in connectome manifolds. For furter detauks see Hong et al., 2019 Nat Comms, link here https://www.nature.com/articles/s41467-019-08944-1

The micaopen tools result from the dedication and collaboration of all members of the lab, notably Casey Paquola, Reinder Vos de Wael, Oualid Benkarim, Sara Lariviere, Raul Cruces, Bo-Yong Park, Jessica Royer, Shahin Tavakol, Seok-Jun Hong, and Boris Bernhardt.

micaopen's People

Contributors

camin-neuro avatar caseypaquola avatar hansfauer avatar multiscale-neurodevelopment avatar neuroimagingdatascience avatar reindervosdewael avatar royj23 avatar shoobidoo avatar yezhouwang avatar

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micaopen's Issues

"SJH_1015_32k_fs_LR.mat" not found

Hi, professor
I would like to run the code provided in GradientDispersion which needs the micasoft dependency. Where can I download the micasoft, or the if you can provide the file "SJH_1015_32k_fs_LR.mat" would also works. Thanks a lot.

Data for MPC

Hello! I'd like to replicate what was done in the 2019 paper and generate the MPC matrix from BigBrain data. I'm confused about the data organization, however, since there seems to be a discrepancy between what the scripts need and what the data folder in the repo looks like.

Is the data in the repo preprocessed? What is a subject list (for script 1) supposed to look like? What's the input data to these scripts generally supposed to look like?

Thank you!

Error importing run_sf_prediction

I am interested in testing the model from the recent publication on prediction of functional connectivity from the structural connectome. I set up a Singularity image based on the Python 3.8 image with the dependencies listed in this repo, but I run into this error when trying to import the function as suggested:

>>> from utils import run_sf_prediction
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/opt/micaopen/sf_prediction/utils.py", line 10, in <module>
    from pymanopt.manifolds import Rotations
ImportError: cannot import name 'Rotations' from 'pymanopt.manifolds' (/usr/local/lib/python3.8/site-packages/pymanopt/manifolds/__init__.py)

Is there a specific version of pymanopt that is required to run this code?
Any help would be greatly appreciated!

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