trftools.roi.mask_roi
- trftools.roi.mask_roi(key, src)
Create a boolean ROI based on anatomical labels
- Parameters:
key (str) – Label definition (see Notes).
src (SourceSpace | Path | str) – Source space to work with, or MRI-directory from which to load fsaverage.
- Return type:
[lh, rh]Boolean masks for both hemisphere (Trueinside the label).
Notes
Labels are defined based on a label name, and optional instructions for splitting the label.
The label name can be one of the pre-defined collections defined in
ROISat the top of this script, e.g.STG. It can also be the name of an aparc label, e.g.middletemporal.Splitting instructions is based on number of parts, followed by the parts to use (with zero-based index, from posterior to anterior). E.g.
STG301: split STG into 3 parts, and use the posterior 2/3rd (parts 0 and 1).Multiple such definitions can be combined with
+, e.g.STG+STS.Examples
Swarmplot for an ROI, assuming
eis an instance ofTRFExperiment:import seaborn from eelbrain import * import trftools.roi data = e.load_trfs(-1, 'gammatone-8', **WHOLEBRAIN_PARAMETERS) lh_roi, rh_roi = trftools.roi.mask_roi('STG301', data['det'].source) # Extract mean for left and right hemisphere dss = [] for hemi, roi in [['lh', lh_roi], ['rh', rh_roi]]: ds = data['subject',] ds['y'] = data['det'].mean(roi) ds[:, 'hemi'] = hemi dss.append(ds) roi_data = combine(dss) # Swarmplot df = roi_data.as_dataframe() fig = seaborn.swarmplot(df, y='y', x='hemi')