The solution would appear to be the removal of missing values. There are two ways to remove missing values from the data set. You can either remove them using
na.omit() function explicitly before calling
princomp() or you can use a formula interface to
princomp() with an argument
na.action=na.omit. You have used the matrix interface to
na.action is not an option for the matrix interface, hence it does not work in your case. See ?princomp for more details.
Consider the following:
# Add one missing value to USArrests data set
# Does not work (matrix interface)
# Error in cov.wt(z) : 'x' must contain finite values only
# Does work (formula interface)
princomp(~., data=USArrests, na.action=na.omit)
# Does work (remove missing values before PCA)
So in your case something like:
pca = princomp(~., data=as.matrix(vt), na.action=na.omit)
should do the trick.