nilearn

Brain analysis library

A comprehensive toolkit for analyzing brain imaging data using machine learning and statistical techniques.

Machine learning for NeuroImaging in Python

GitHub

1k stars
66 watching
617 forks
Language: Python
last commit: over 1 year ago
Linked from 3 awesome lists

brain-connectivitybrain-imagingbrain-mridecodingfmrimachine-learningmvpaneuroimagingpython

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