nilearn.glm
: Generalized Linear Models¶
Analysing fMRI data using GLMs.
Classes¶
| The contrast class handles the estimation of statistical contrasts on a given model: student (t) or Fisher (F). |
| Results from an F contrast of coefficients in a parametric model. |
| Results from a t contrast of coefficients in a parametric model. |
| A regression model with an AR(p) covariance structure. |
| A simple ordinary least squares model. |
| Class to contain results from likelihood models. |
| Summarize the fit of a linear regression model. |
| Contain only information of the model fit necessary for contrast computation. |
Functions¶
| Compute the specified contrast given an estimated glm. |
| Compute the fixed effects, given images of effects and variance. |
| Convert a string describing a contrast to a contrast vector. |
| Return the Benjamini-Hochberg FDR threshold for the input z_vals. |
| Report the proportion of active voxels for all clusters defined by the input threshold. |
| Compute the required threshold level and return the thresholded map. |
nilearn.glm.first_level
¶
Classes¶
| Implement the General Linear Model for single run fMRI data. |
Functions¶
| Check that the provided DataFrame is indeed a valid design matrix descriptor, and returns a triplet of fields. |
| Convolve regressors with HRF model. |
| Create FirstLevelModel objects and fit arguments from a BIDS dataset. |
| Implement the Glover dispersion derivative HRF model. |
| Implement the Glover HRF model. |
| Implement the Glover time derivative HRF (dhrf) model. |
| Generate a design matrix from the input parameters. |
| Scaling of the data to have percent of baseline change along the specified axis. |
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nilearn.glm.second_level
¶
Classes¶
| Implement the General Linear Model for multiple subject fMRI data. |
Functions¶
| Set up a second level design. |
| Generate p-values corresponding to the contrasts provided based on permutation testing. |