rftResults.Rd
Returns RFT based statistical results for a single statistical image
rftResults( x, resels, fwhm, df, fieldType, RPVImg = NULL, k = 1, threshType = "pRFT", pval = 0.05, pp = 0.001, n = 1, statdir = NULL, verbose = FALSE )
x | statistical field image of class antsImage |
---|---|
resels | resel values for the mask |
fwhm | full width at half maxima |
df | degrees of freedom expressed as df = c(degrees of interest, degrees of error) |
fieldType |
|
RPVImg | resels per voxel image |
k | minimum desired cluster size (default = 1) |
threshType | a numeric value to threshTypeold the statistical field or a character of the following methods:
|
pval | the p-value for estimating the threshTypeold (default = .05) |
pp | the primary (initial) p-value for threshTypeolding (only used for FDR methods; default = .001) |
n | number of images in conjunction |
statdir | directory where output is saved (if not specified images are not saved) |
verbose | enables verbose output |
Outputs a statistical value to be used for threshTypeold a statistical field image
SetStats: set-level statistics and number of clusters
ClusterStats: cluster-level statistics and descriptors
PeakStats: peak-level statistics and descriptor"
LabeledClusters: image of labeled clusters
threshTypeold: the threshTypeold used
rftPval
is used to compute all family-wise error (FWE) corrected
statistics while p.adjust
is used to compute all false-discovery rate
based statistics. All statistics herein involve implementation of random
field theory (RFT) to some extent.
Both cluster-level and peak-level statistics are described by the
uncorrected
p-value along with the FDR and FWE corrected p-values for each cluster.
Peak-level statistics are described by the maximum statistical value in each
cluster and the comparable Z statistic. The ClusterStats table also contains
coordinates for each cluster and the number of voxels therein. By default
threshType = "pRFT"
and pval=.05. Alternatively, the user may use a
specific numeric value for threshTypeolding the statistical field.
statFieldThresh
more fully describes using appropriate threshTypeolds
for statistical fields and how pp
plays a role in FDR
threshTypeolding.
Chumbley J., (2010) Topological FDR for neuroimaging
Friston K.J., (1996) Detecting Activations in PET and fMRI: Levels of Inference and Power
Worsley K.J., (1992) A Three-Dimensional Statistical Analysis for CBF Activation Studies in Human Brain.
Zachary P. Christensen
if (FALSE) { mnit1 <- antsImageRead(getANTsRData('mni')) mask <- getMask(mnit1) ilist <- list() for (i in 1:10) { ilist <- lappend(ilist, antsImageClone(mnit1) * rnorm(1)) } response <- rnorm(10) imat <- imageListToMatrix(ilist, mask) residuals <- matrix(nrow = nrow(imat), ncol = ncol(imat)) tvals <- matrix(nrow = nrow(imat), ncol = ncol(imat)) for (i in 1:ncol(imat)) { fit <- lm(response ~ imat[, i]) tvals <- coefficients(fit)[2] residuals[, i] <- residuals(fit) } myfwhm <- estSmooth(residuals, mask, fit$df.residual) res <- resels(mask, myfwhm$fwhm) timg <- makeImage(mask, tvals) # threshold to create peak values with p-value of .05 (default) results1 <- rftResults(timg, res, myfwhm$fwhm, df, fieldType = "T", threshType = "pRFT", pval = .05) # threshold to create clusters with p-value of .05 results2 <- rftResults(timg, res, myfwhm$fwhm, df, fieldType = "T", threshType = "cRFT", pval = .05) # initial threshold at p-value of .001 followed by peak FDR threshTypeold at # p-value of .05 results3 <- rftResults(timg, res, myfwhm$fwhm, df, fieldType = "T", threshType = "pFDR", pval = .05, pp=.01) # initial threshold at p-value of .001 followed by cluster FDR threshold at # p-value of .05 results4 <- rftResults(timg, res, myfwhm$fwhm, df, fieldType = "T", threshType = "cFDR", pval = .05, pp = .01) # correcting for non-isotropic results5 <- rftResults(timg, res, myfwhm$fwhm, df, fieldType = "T", fwhm$RPVImg) }