I have the data frame containing longitudinal measurements of variables x
and y
, at various time points time
, in several subjects id
. However x
and y
have some missing values.
What I want is to aggregate the data frame so that for each id i get the first in time defined x
and y
value. x
and y
would be then at different time points but it does not matter.
testdf<-data.frame(id=c(rep("A",4),rep("B",4),rep("C",4) ), x=c(NA, NA, 1,2, 3, NA, NA, 1, 2, NA,NA, 5), y=rev(c(NA, NA, 1,2, 3, NA, NA, 1, 2, NA,NA, 5)), time=c(1,2,3,4,0.1,0.5,10,20,3,2,1,0.5))
So that testdf
would reduce to
id x y
1 A 1 5
2 B 3 1
3 C 5 1
UPDATE: Would it be possible for a solution that allows the data frame to have a large number of variables (a solution or a function where you don't have to explicitly defining thex
and y
variables in case the data frame has a large number of variables?