The neuromaps
toolbox is designed to help researchers make easy,
statistically-rigorous comparisons between brain maps (or brain annotations).
Documentation can be found here.
The accompanying paper is published in Nature Methods (postprint).
Check all the brain maps we have here!
- A growing library of brain maps ("annotations") in their original coordinate space, including microstructure, function, electrophysiology, receptors, and more
- Robust transforms between MNI-152, fsaverage, fsLR, and CIVET spaces
- Integrated spatial null models for statistically assessing correspondences between brain maps
Currently, neuromaps
works with Python 3.8+.
You can install stable versions of neuromaps
from PyPI with pip install neuromaps
.
However, we recommend installing from the source repository to get the latest features and bug fixes.
You can install neuromaps
from the source repository with pip install git+https://github.com/netneurolab/neuromaps.git
or by cloning the repository and installing from the local directory:
git clone https://github.com/netneurolab/neuromaps
cd neuromaps
pip install .
You will also need to have Connectome Workbench installed and available on your path in
order to use most of the transformation / resampling functionality of
neuromaps
.
Importantly, neuromaps
implements and builds on tools that have been previously developed, and we redistribute data that was acquired elsewhere.
If you use the neuromaps
toolbox, please ensure proper attribution of the original data sources. Here's a quick checklist:
- Cite the
neuromaps
paper. - Cite the original papers that publish the data you are using. A complete list with references for each brain annotation can be found in the documentation, or in this Google Sheet. We also provide a standalone bibliography file and a helper function to generate the citations.
- Cite the transformations used
- Volume-to-surface transformations (registration fusion): Buckner et al 2011 (original proposition) and Wu et al 2018 (first implementation of MNI152 to fsaverage transformation).
- Surface-to-surface transformations (multimodal surface matching): Robinson et al 2014 and Robinson et al 2018.
- Cite the spatial null models used (see API documentation)
This work is licensed under a
Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License cc-by-nc-sa
.
The full license can be found in the
LICENSE file in the neuromaps
distribution.