User guide#
- Introduction
- Decoding and MVPA: predicting from brain images
- An introduction to decoding
- Choosing the right predictive model for neuroimaging
- FREM: fast ensembling of regularized models for robust decoding
- SpaceNet: decoding with spatial structure for better maps
- Searchlight : finding voxels containing information
- Running scikit-learn functions for more control on the analysis
- Functional connectivity and resting state
- Extracting times series to build a functional connectome
- Connectome extraction: inverse covariance for direct connections
- Extracting functional brain networks: ICA and related
- Region Extraction for better brain parcellations
- Fetching movie-watching based functional datasets
- Brain maps using Dictionary learning
- Visualization of Dictionary learning maps
- Region Extraction with Dictionary learning maps
- Visualization of Region Extraction results
- Computing functional connectivity matrices
- Visualization of functional connectivity matrices
- Validating results
- Clustering to parcellate the brain in regions
- Plotting brain images
- Different plotting functions
- Different display modes
- Available Colormaps
- Adding overlays, edges, contours, contour fillings, markers, scale bar
- Displaying or saving to an image file
- Surface plotting
- Interactive plots
- Analyzing fMRI using GLMs
- Manipulation brain volumes with nilearn
- Input and output: neuroimaging data representation
- Manipulating images: resampling, smoothing, masking, ROIs…
- From neuroimaging volumes to data matrices: the masker objects
- The concept of “masker” objects
NiftiMasker
: applying a mask to load time-series- Extraction of signals from regions:
NiftiLabelsMasker
,NiftiMapsMasker
- Extraction of signals from seeds:
NiftiSpheresMasker
- Advanced usage: manual pipelines and scaling up