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BrainSpace is an open-access toolbox that allows for the identification and analysis of gradients from neuroimaging and connectomics datasets | available in both Python and Matlab |

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BrainSpace

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PyPI - Python Version

BrainSpace is a lightweight cross-platform toolbox primarily intended for macroscale gradient mapping and analysis of neuroimaging and connectome level data. The current version of BrainSpace is available in Python and MATLAB, programming languages widely used by the neuroimaging and network neuroscience communities. The toolbox also contains several maps that allow for exploratory analysis of gradient correspondence with other brain-derived features, together with tools to generate spatial null models.

For installation instructions, examples and documentation of BrainSpace see our documentation.

Happy gradient analysis!

License

The BrainSpace source code is available under the BSD (3-Clause) license.

Support

If you have problems installing the software or questions about usage and documentation, or something else related to BrainSpace, you can post to the Issues section of our repository.

Paper

If you consider using BrainSpace, please cite our manuscript: Vos de Wael R, Benkarim O, Paquola C, Lariviere S, Royer J, Tavakol S, Xu T, Hong S, Langs G, Valk S, Misic B, Milham M, Margulies D, Smallwood J, Bernhardt B (2020). BrainSpace: a toolbox for the analysis of macroscale gradients in neuroimaging and connectomics datasets. Commun Biol 3, 103.

Core development team

  • Reinder Vos de Wael, MICA Lab - Montreal Neurological Institute
  • Oualid Benkarim, MICA Lab - Montreal Neurological Institute
  • Boris Bernhardt, MICA Lab - Montreal Neurological Institute

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BrainSpace is an open-access toolbox that allows for the identification and analysis of gradients from neuroimaging and connectomics datasets | available in both Python and Matlab |

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  • Python 83.6%
  • MATLAB 16.4%