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dplyr - R Replace Intermittent NA Values With Last Observation Carried Forward (NA.LOCF)

Background

I neeed to replace the NA's in my data frame by using different methods depending on the NA's nature. My data frame come from a study with repeated measures, where some of the Na's are a result of subjects dropping out while others are a result of intermittent missing measurements, defined as one or a sequence of multiple missing measurements, followed by a measured value. I will be referring to intermittent missing measurements as intermittent NA's.

Problem

I am having trouble testing whether the NA's are the result of intermittent missing measurements, and what functions I should use to replace these NA's with. I would ideally replace these intermittent NA's with the na.locf method. But I need Dropout NA's to be replaced with the baseline OR the last value observed, whichever is greater.

Examples

Example 1

Here is a clean example of NA's that I want to be treated as intermittent NA's with the na.locf imputation:

data.frame(visit=c(1,2,3,4,5,6,7,8,9,10),value=c(34,NA,NA,15,16,19,NA,12,23,31))

and how I want it the end result to be:

data.frame(visit=c(1,2,3,4,5,6,7,8,9,10),value=c(34,34,34,15,16,19,19,12,23,31))

Example 2

Here is a clean example of NA's (dropout NA's) that I want to be imputed by the previous non-NA observation OR the baseline value (visit 1), whichever is greatest:

data.frame(visit=c(1,2,3,4,5,6,7,8,9,10),value=c(34,22,18,15,16,19,NA,NA,NA,NA))

And how I want the end result to be:

data.frame(visit=c(1,2,3,4,5,6,7,8,9,10),value=c(34,22,18,15,16,19,34,34,34,34))

Example 3

Here is a complex example of a mixture of NA's which need different imputations, here where the previous non-NA observation is greater than the baseline observation (visit 1) for the dropout NA's:

data.frame(visit=c(1,2,3,4,5,6,7,8,9,10),value=c(34,NA,NA,42,16,19,NA,38,NA,NA))

How I need the result to be:

data.frame(visit=c(1,2,3,4,5,6,7,8,9,10),value=c(34,34,34,42,16,19,19,38,38,38))

Example 4

Another complex example where the baseline observation (visit 1) is greater than the previous non-NA value for the dropout NA's:

data.frame(visit=c(1,2,3,4,5,6,7,8,9,10),value=c(40,NA,NA,42,16,19,NA,38,NA,NA))

How I need the result to be:

data.frame(visit=c(1,2,3,4,5,6,7,8,9,10),value=c(40,40,40,42,16,19,19,38,40,40))

What I have tried

As suggested by @Gregor, upon me stating that this would solve my problems, it was possible to test for the presence of intermittent NA's with:

mutate(is.na(value) & !is.na(lead(value))

But this does not help me with imputing all intermittent NA's and in particular, intermittent NA's that are in a sequence (NA1,NA2,NA3,14), where only NA3 is returned as TRUE after running this test.

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We can use na.locf(..., fromLast = TRUE) to identify the trailing NA values and use pmax on them with the baseline. We'll demonstrate on the examples from your question in a nice all-together format:

# consolidate example data
dd = data.frame(
  example = rep(1:3, each = 10),
  visit = rep(1:10, 3),
  value = c(34,NA,NA,15,16,19,NA,12,23,31,
            34,22,18,15,16,19,NA,NA,NA,NA,
            34,NA,NA,42,16,19,NA,38,NA,NA),
  goal = c(34,34,34,15,16,19,19,12,23,31,
           34,22,18,15,16,19,34,34,34,34,
           34,34,34,42,16,19,19,38,38,38)
)

library(dplyr)
dd = dd %>% group_by(example) %>%
  mutate(to_fill = !is.na(zoo::na.locf(value, fromLast = TRUE, na.rm = FALSE)),
         result = if_else(to_fill,
                          zoo::na.locf(value, na.rm = FALSE),
                          pmax(first(value), zoo::na.locf(value, na.rm = FALSE))),
    )

all(dd$goal == dd$result)
# [1] TRUE

As you can see, the result matches the goal column perfectly.


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