pickgene(data, geneID = 1:nrow(data), overalllevel = 0.05, npickgene = -1, marginal = FALSE, rankbased = TRUE, allrank = FALSE, meanrank = FALSE, offset = 0, modelmatrix = model.pickgene(faclevel, facnames, contrasts.fac, collapse, show, renorm), faclevel = ncol(data), facnames = letters[seq(length(faclevel))], contrasts.fac = "contr.poly", show = NULL, main = "", renorm = 1, drop.negative = FALSE, plotit = npickgene < 1, mfrow = c(nr, nc), mfcol = NULL, ylab = paste(shownames, "Trend"), ...)
1:nrow(x)
)0.05
)-1
allows
automatic selection)model.pickgene
if omittedsqrt(2)
to turn two-condition contrast into fold change)par()
plot arrangement by rows (default up to 6
per page; set to NULL to not change)par()
plot arrangement by columns (default is NULL)robustscale
pick
data frame elements have the following information:
score
data frame elements have the following:
A
are
replaced by qnorm(rank(A))
, followed by robustscale
estimation of center and spread. Then Bonferroni-style gene by gene
tests are performed and displayed graphically.
pickgene
## Not run:
# pickgene( data )
# ## End(Not run)
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