This question already has an answer here:

What is the convenient way to select the rows of several variables in a data table, that have **at least one NA value**. I found a way, but it is not convenient if there are many variables to select from.

Here is the working example:

```
library(data.table)
# Create a data table
DT <- data.table(V1=1:5, V2=LETTERS[1:5])
# Insert some missing values
DT[c(1,3),V1 := NA]
DT[c(1,2),V2 := NA]
# Check the output
print(DT)
V1 V2
1: NA NA
2: 2 NA
3: NA C
4: 4 D
5: 5 E
# Select if there is at least one NA:
# My solution:
myDT <- DT[is.na(V1) | is.na(V2), ]
# Check output
print(myDT)
V1 V2
1: NA NA
2: 2 NA
3: NA C
```

So this solution works but **is not convenient if there are many more variables** (V1, V2, V3, ...).

Is there a better way to do it ?