1

I have a list as follows:

   tryout<- list(c("stomach:biopsy", ",colon:biopsy", ",stomach:biopsy"), 
        character(0), character(0), "oesophagus:biopsy", character(0), 
        character(0))

I want to replace the term "stomach:biopsy" with the number 1. I want to do this with case_when from dplyr

I have tried:

lapply(tryout, function(x) 
    x %>% 
           mutate(group = case_when( 
             grepl("stomach:biopsy",x ) ~ 1
           )))

but I get the error:

Error in UseMethod("mutate_") : 
  no applicable method for 'mutate_' applied to an object of class "character"

So how can I run the case_when for a nested list?

4

As there are lots of blanks elements, we can create an index that checks whether there are atleast one element. Subset the list and replace based on the pattern

i1 <- lengths(tryout) > 0 
tryout[i1] <-  lapply(tryout[i1], function(x) replace(x, x == 'stomach:biopsy', 1))

If it is a partial match, then use grep as in the OP's post

tryout[i1] <-  lapply(tryout[i1], function(x) 
           replace(x, grep('stomach:biopsy', x), 1))

Update

Based on the comments from OP, there are multiple patterns to be replaced. In that case, it is better to create a key/val dataset or named vector and then do a left_join/match etc. In this case, as it is a partial match, it would be better to make use of regex_left_join from fuzzyjoin

library(fuzzyjoin)
library(tidyverse)
# create a key/val tibble
d1 <- tibble(key = c("stomach:biopsy", "colon:biopsy", 
             "oesophagus:biopsy"), val = 1:3)

# loop through the list elements having at least one element
# left join with the key/val dataset
# pull the column of 'val'
# update the list elements
tryout[i1] <- map(tryout[i1], ~ 
                tibble(key = .x) %>%
                  regex_left_join(d1) %>%
                  pull(val))
  • So I guess if I want to replace several phrases this would do too but wouldn't case_when statements be more efficient? – Sebastian Zeki Jan 11 at 13:10
  • @SebastianZeki. If there are lots of phrases, then create a key/value dataset and do a simple join or match to replace it. Would be more efficient – akrun Jan 11 at 13:23
  • @SebastianZeki. Can you check the updated solution – akrun Jan 11 at 13:37
  • 1
    Great thanks @akrun. That was super helpful – Sebastian Zeki Jan 11 at 17:08
0

Check this solution:

library(tidyverse)

tryout <- 
  tibble(
    var = list(
      c("stomach:biopsy", ",colon:biopsy", ",stomach:biopsy"), 
      character(0),
      character(0),
      "oesophagus:biopsy",
      character(0), 
      character(0))
  )

tryout %>%
  mutate(var = map(var, ~case_when(
    .x == 'stomach:biopsy' ~ '1',
    TRUE ~ .x
  ))) %>%
  pull(var)

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