perfusionregression.Rd
Estimate CBF using standard regression and optionally robust regression.
perfusionregression( mask_img, mat, xideal, nuis = NA, dorobust = 0, skip = 20, selectionValsForRegweights = NULL, useBayesian = 0 )
mask_img | Mask image selects the voxels where CBF will be estimated. Voxels corresponding to logical FALSE are not computed. |
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mat | Matrix with a column for every time-series voxel. Number of rows equals the number of time units in the series. |
xideal | 1D time-series signal to be used a ideal or model for regression. |
nuis | Nuisance parameters obtained from '.get_perfusion_predictors'. |
dorobust | Real value in interval from 0 to 1. If greater than 0, then robust regression will be performed. A typical value would be 0.95 i.e. use voxels with 95 percent confidence. |
skip | skip / stride over this number of voxels to increase speed |
selectionValsForRegweights | scalar function to guide parameter est. |
useBayesian | if greater than zero, use a bayesian prior w/this weight |
Success -- An object of type 'antsImage' containing the CBF estimate
for voxels corresponding to the mask input
Shrinidhi KL Avants BB
if (FALSE) { # # cbf <- perfusionregression( mask_img, mat, xideal , nuis ) }