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PHOTONAI Neuro
PHOTONAI Neuro is an add-on module to simplify machine learning analyses for multimodal Magnetic Resonance Imaging (MRI) with PHOTONAI. Overall, this module combines the functionality of the famous Nilearn package with the pipeline structure of PHOTONAI.
Project setup
Install the latest version directly via pip:
pip install photonai-neuro
Features
- Easy access to common brain masks and atlases.
- Simple syntax for building neuro-pipelines.
- All PHOTONAI advantages like hyperparemter optimization, model sharing, results visualization, and much more.
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