Omit rows containing specific column of NA

I want to know how to omit NA values in a data frame, but only in some columns I am interested in.

For example,

DF <- data.frame(x = c(1, 2, 3), y = c(0, 10, NA), z=c(NA, 33, 22))

but I only want to omit the data where y is NA, therefore the result should be

x  y  z
1 1  0 NA
2 2 10 33

na.omit seems delete all rows contain any NA.

Can somebody help me out of this simple question?

But if now I change the question like:

DF <- data.frame(x = c(1, 2, 3,NA), y = c(1,0, 10, NA), z=c(43,NA, 33, NA))

If I want to omit only x=na or z=na, where can I put the | in function?

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You could use the complete.cases function and put it into a function thusly:

DF <- data.frame(x = c(1, 2, 3), y = c(0, 10, NA), z=c(NA, 33, 22))

completeFun <- function(data, desiredCols) {
completeVec <- complete.cases(data[, desiredCols])
return(data[completeVec, ])
}

completeFun(DF, "y")
#   x  y  z
# 1 1  0 NA
# 2 2 10 33

completeFun(DF, c("y", "z"))
#   x  y  z
# 2 2 10 33
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Thanks, that's also what i found, complete.cases seems quite fit into the situation! – user1489975 Jun 29 '12 at 18:32
Hi, if the question become like the row y and z are all NA, what should i do to delete them? – user1489975 Jun 29 '12 at 19:32
@user1489975, I think that would be best answered as a separate question. But I have the feeling that someone has asked a similar one before. Perhaps search on SO first to see if there's anything helpful. – BenBarnes Jun 30 '12 at 8:13

Use is.na

DF <- data.frame(x = c(1, 2, 3), y = c(0, 10, NA), z=c(NA, 33, 22))
DF[!is.na(DF\$y),]
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Try this:

cc=is.na(DF\$y)
m=which(cc==c("TRUE"))
DF=DF[-m,]
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Use 'subset'

DF <- data.frame(x = c(1, 2, 3), y = c(0, 10, NA), z=c(NA, 33, 22))
subset(DF, !is.na(y))
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