I have a data frame with
n rows and
m columns where
m > 30.
My first column is an
age variable and the rest are medical conditions that are either on or off (binary).
Now I would like to compute the number of observations where none of the medical conditions is switched on i.e. the number of healthy patients. I thought I could use the
rowSums function to count observations wherever the row sum is zero (of course excluding the age variable) but I tried some functions and did not succeed.
Here is an example how it could work but always involving a lot of AND / OR statements which is not practical. I was looking for a non-loop solution.
example <- as.data.frame(matrix(data=c(40,1,1,1,36,1,0,1,56,0,0,1,43,0,0,0), nrow=4, ncol=4, byrow=T, dimnames <- list(c("row1","row2","row3", "row4"),c("Age","x","y","z"))))
Two impractical alternatives to arrive at desired outcome:
nrow(subset(example, x==0 & y==0 & z==0)) table(example$x==0 & example$y==0 & example$z==0)
What I actually wanted is sth like this: