Description Usage Arguments Value Examples
This function is able to run a Generalized Mixed Effects Model (GAMM) using the gamm4() function. The analysis will run in all voxels within the mask and will return the model fit for each voxel.
1 2 |
image |
Input image of type 'nifti' or vector of path(s) to images. If multiple paths, the script will call mergeNifti() and merge across time. |
mask |
Input mask of type 'nifti' or path to mask. Must be a binary mask |
fourdOut |
To be passed to mergeNifti, This is the path and file name without the suffix to save the fourd file. Default (NULL) means script won't write out 4D image. |
formula |
Must be a formula passed to gamm4() |
randomFormula |
Random effects formula passed to gamm4() |
subjData |
Dataframe containing all the covariates used for the analysis |
mc.preschedule |
Argument to be passed to mclapply, whether or not to preschedule the jobs. More info in parallel::mclapply |
ncores |
Number of cores to use |
... |
Additional arguments passed to gamm4() |
Returns list of models fitted to each voxel over the masked images passed to function.
1 2 3 4 5 6 7 8 | image <- oro.nifti::nifti(img = array(1:1600, dim =c(4,4,4,25)))
mask <- oro.nifti::nifti(img = array(c(rep(0,14),1), dim = c(4,4,4,1)))
set.seed(1)
covs <- data.frame(x = runif(25), id = rep(1:5,5))
fm1 <- "~ s(x)"
randomFormula <- "~(1|id)"
models <- gammVoxel(image = image , mask = mask, formula = fm1, randomFormula = randomFormula,
subjData = covs, ncores = 1, REML=TRUE)
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