There's probably lots of ways and probably add on packages to deal with this. I'd suggest you try this first:
Here's a way you could do what your asking for using the
scale function that can standardize vectors.
#create a data set with outliers
dat <- data.frame(sapply(seq_len(5), function(i)
sample(c(1:50, 100:101), 200, replace=TRUE)))
#standardize each column (we use it in the outdet function)
#create function that looks for values > +/- 2 sd from mean
outdet <- function(x) abs(scale(x)) >= 2
#index with the function to remove those values
dat[!apply(sapply(dat, outdet), 1, any), ]
So in answering your question yes there is an easy way in that the code to do this could be boiled down to 1 line of code:
dat[!apply(sapply(dat, function(x) abs(scale(x)) >= 2), 1, any), ]
And I'm guessing there's a package that may do this and more. The
sos package is terrific (IMHO) for finding functions to do what you want.