I am new to R. I was hoping to replace the missing values for X in the data. How can I replace the missing values of "X" when "Time" = 1 or 2 with the value of "X" when "Time" = 3 for the same "SubID" and the same "Day"

SubID: subject number

Day: each subject's day number (1,2,3...21)

Time: morning marked as 1, afternoon marked as 2, and evening marked as 3

X: only has a valid value when Time is 3, others are missing.

SubID Day  Time   X    
 1    1     1     NA
 1    1     2     NA
 1    1     3     7.4
 1    2     1     NA
 1    2     3     6.2
 2    1     1     NA
 2    1     2     NA
 2    1     3     7.1
 2    2     3     5.9
 2    2     2     NA
 2    2     1     NA

I was able to go as far as the following codes in zoo. I have very limited experience in R. Thank you in advance!

data2 <- transform(data1, x = na.aggregate(x,by=SubID,FUN=sum,na.rm = T))

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  • Are you restricted to using the zoo package? I feel like this could be accomplished easily with data.table. – josemz Mar 15 at 0:50
  • Thanks for responding! No, I don't have to use the zoo package, I just don't know how to do this with other packages or functions. How should I use data.table to achieve the result? – Susan Mar 15 at 1:07
  • I'm on my phone but I think this works library(data.table); setDT(data1)[order(-Time), Xf := zoo::na.locf(X), by=.(SubID, Day)] – josemz Mar 15 at 1:42
  • @josemz Thank you! The codes ran but nothing changes in the NA values. Any suggestions? Anything I missed? – Susan Mar 15 at 1:58
  • The code should have added a new column Xf with the NAs filled. It didn't? – josemz Mar 15 at 2:22

Here's the explanation of my comment:

      Xf := na.locf(X),
      by = .(SubID, Day)]

Ok so the setDT function makes the data1 object a data.table. Then order(-Time) orders data1 with respect to Time in descending order (because of the -). Xf := na.locf(X) creates a new column Xf by reference (which means you don't have to assign this back to data1) as na.locf(X) which is a function in the zoo package that fills the NAs forward with the previous value (in this case filling 2 and 1 with the value in 3). The last line specifies that we want to do this grouped by SubID and Day.

Hope it's clearer now, feel free to ask if you have further doubts.

  • Can I ask a follow-up question? How can I fill the missing values of X when Time equals to 3 with the means of X for each SubID? What I should I add to the existing codes to make it work? data2 <- transform(data1, x = na.aggregate(x,by=SubID,FUN=mean,na.rm = T)) – Susan yesterday
  • Do you mean you have missing values in X where Time equals 3 and you want to fill them with the mean of the values in X where Time equals 1 or 2, for each SubID? – josemz 10 hours ago
  • I mean I have missing values in X when Time equals to 3 and I would like them to be filled with the means of the values in other X when Time equals 3 (while ignoring the missing values in X when Time equals to 1 or 2)? – Susan 9 hours ago
  • So if you want to use the same fill value for all records you can compute that value first: fill_value <- mean(data1$X[data1$Time == 3], na.rm = TRUE) and then you can use it to fill the missing values where Time equals 3 like this: data1[data1$Time == 3 & is.na(data1$X), "X"] <- fill_value. – josemz 9 hours ago

You can sort the data by descending time and then use X[1].


df <- tibble(SubID=1, Day=1, Time=c(1,2,3), X=c(NA, NA, 2.2))

df <- df %>%
    group_by(SubID, Day) %>%
    arrange(desc(Time)) %>%
            is.na(X) ~ X[1],
            TRUE ~ X)

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