Examples#
Warning
If you want to run the examples, make sure you execute them in a directory where you have write permissions, or you copy the examples into such a directory. If you install nilearn manually, make sure you have followed the instructions.
Basic tutorials#
Introductory examples that teach how to use nilearn.
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Basic nilearn example: manipulating and looking at data
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Intro to GLM Analysis: a single-run, single-subject fMRI dataset
Visualization of brain images#
See Plotting brain images for more details.
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Visualizing Megatrawls Network Matrices from Human Connectome Project
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Visualizing a probabilistic atlas: the default mode in the MSDL atlas
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Controlling the contrast of the background when plotting
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Visualizing multiscale functional brain parcellations
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Technical point: Illustration of the volume to surface sampling schemes
Decoding and predicting from brain images#
See Decoding and MVPA: predicting from brain images for more details.
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Voxel-Based Morphometry on Oasis dataset with Space-Net prior
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Decoding with FREM: face vs house vs chair object recognition
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Decoding with ANOVA + SVM: face vs house in the Haxby dataset
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The haxby dataset: different multi-class strategies
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Decoding of a dataset after GLM fit for signal extraction
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ROI-based decoding analysis in Haxby et al. dataset
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Different classifiers in decoding the Haxby dataset
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Encoding models for visual stimuli from Miyawaki et al. 2008
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Reconstruction of visual stimuli from Miyawaki et al. 2008
Functional connectivity#
See Clustering to parcellate the brain in regions, Extracting functional brain networks: ICA and related or Extracting times series to build a functional connectome for more details.
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Computing a connectome with sparse inverse covariance
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Extracting signals of a probabilistic atlas of functional regions
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Connectivity structure estimation on simulated data
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Group Sparse inverse covariance for multi-subject connectome
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Producing single subject maps of seed-to-voxel correlation
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Deriving spatial maps from group fMRI data using ICA and Dictionary Learning
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Regions extraction using dictionary learning and functional connectomes
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Comparing connectomes on different reference atlases
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Classification of age groups using functional connectivity
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Clustering methods to learn a brain parcellation from fMRI
GLM: First level analysis#
These are examples focused on showcasing first level models functionality and single subject analysis.
See Analyzing fMRI using GLMs for more details.
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Generate an events.tsv file for the NeuroSpin localizer task
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Analysis of an fMRI dataset with a Finite Impule Response (FIR) model
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First level analysis of a complete BIDS dataset from openneuro
GLM: Second level analysis#
These are examples focused on showcasing second level models functionality and group level analysis.
See Analyzing fMRI using GLMs for more details.
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Second-level fMRI model: true positive proportion in clusters
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Second-level fMRI model: two-sample test, unpaired and paired
Manipulating brain image volumes#
See Manipulating images: resampling, smoothing, masking, ROIs… for more details.
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Regions Extraction of Default Mode Networks using Smith Atlas
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Extracting signals from brain regions using the NiftiLabelsMasker
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Computing a Region of Interest (ROI) mask manually
Advanced statistical analysis of brain images#
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Multivariate decompositions: Independent component analysis of fMRI
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Massively univariate analysis of a calculation task from the Localizer dataset
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NeuroVault meta-analysis of stop-go paradigm studies
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Surface-based dataset first and second level analysis of a dataset
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Massively univariate analysis of a motor task from the Localizer dataset
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Massively univariate analysis of face vs house recognition
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Beta-Series Modeling for Task-Based Functional Connectivity and Decoding
Examples for experimental modules#
These are examples focused on showcasing experimental features and are subject to change without any notice.