main-educational/intro_nilearn
Introduction to neuroimaging machine learning tool Nilearn
This resource helps neuroimaging researchers and clinicians apply machine learning techniques to functional MRI (fMRI) data. It takes raw or preprocessed fMRI scans and guides you through analysis workflows to identify patterns related to brain activity or conditions. If you're a neuroscientist, radiologist, or cognitive psychologist working with fMRI, this is for you.
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Use this if you want to learn how to use machine learning to analyze functional MRI data for research or clinical applications.
Not ideal if you are looking for a general machine learning tutorial not specific to neuroimaging, or if you primarily work with structural MRI or other imaging modalities.
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TeX
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MIT
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Oct 24, 2024
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