compcor.Rd
Compcors the input matrix using SVD and returns the result.
compcor( fmri, ncompcor = 4, variance_extreme = 0.975, mask = NULL, randomSamples = 1, returnv = FALSE, returnhighvarmat = FALSE, returnhighvarmatinds = FALSE, highvarmatinds = NA, scale = TRUE )
fmri | input fmri image or matrix |
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ncompcor | n compcor vectors |
variance_extreme | high variance threshold e.g 0.95 for 95 percent |
mask | optional mask for image |
randomSamples | take this many random samples to speed things up |
returnv | return the spatial vectors |
returnhighvarmat | bool to return the high variance matrix |
returnhighvarmatinds | bool to return the high variance matrix indices |
highvarmatinds | index list |
scale | scale the matrix of high variance voxels, default FALSE. note that you may get slightly different results by scaling the input matrix before passing into this function. |
dataframe of nuisance predictors is output
Avants BB