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Dyconnmap

A dynamic connectome mapping module in python.

From makism·Updated April 16, 2026·View on GitHub·

**dyconnmap** is A dynamic connectome mapping module in python. The project is written primarily in Python, distributed under the BSD 3-Clause "New" or "Revised" License license, first published in 2017. Key topics include: clustering, connectivity, connectome, dynamic, eeg.

Latest release: 1.0.4
March 15, 2021View Changelog →
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dyconnmap

A neuroimaging module for dynamic connectome mapping.

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dyconnmap (abbreviated from “dynamic connectome mapping”), a neuroimaging python module specifically designed for estimating the dynamic connectivity and analyzing complex brain networks; from neurophysiological data such as electroencephalogram (EEG), magnetoencephalography (MEG) and functional magnetic resonance imaging (fMRI) recordings. It includes numerous submodules to work with, such as chronnectomics and graph-theoretical algorithms, (symbolic) time series and statistical methods.

This is an ongoing effort to develop the module further and extend it by adding more algorithms related to graph analysis and statistical approaches. Considering the increasing acceptance and usage of python in analyzing neuroimaging data, we firmly believe that the module will be a great addition in every practitioner's toolbox engaged in brain connectivity analysis.

Built on NumPy, SciPy, matplotlib and networkx.

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Citation

If you use dyconnmap or dyfunconn in a published work, please consider citing.

<table align="center"> <tr> <td align="left">1.</td> <td align="left"> Marimpis, A. D., Dimitriadis, S. I., & Goebel, R. (2021). Dyconnmap: Dynamic connectome mapping—A neuroimaging python module. Human Brain Mapping, 42( 15), 4909– 4939. https://doi.org/10.1002/hbm.25589</td> </tr> <tr> <td align="left">2.</td> <td align="left">Marimpis, A. D., & Dimitriadis, S. I. (2017). dyfunncon: dynamic functional connectivity–a neuroimaging Python module. F1000Research, 6. https://doi.org/10.7490/f1000research.1114652.1</td> </tr> </table>

Sponsors

<table> <tr> <td align="left" width="200px">Nov 2017 - Apr 2021</td> <td>Brain Innovation B.V.</td> </tr> <tr> <td align="left" width="200px">Sept 2017</td> <td>BRAINTRAIN (Taking imaging into the therapeutic domain: Self-regulation of brain systems for mental disorders) research project (FP7-HEALTH).</td> </tr> </table>

Contributors

Showing top 3 contributors by commit count.

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This article is auto-generated from makism/dyconnmap via the GitHub API.Last fetched: 6/14/2026