1

I have a df structured as below

month=c('jan','feb','jan','feb','feb','feb'),
therapyA=c(NA,'in person',NA,'teleheatlh',NA,'in person'),
therapyB=c('in person','in person',NA,'teleheatlh',NA,'in person'),
therapyC=c(NA,'in person','telehealth','teleheatlh',NA,'in person'),
therapyD=c(NA,'in person',NA,'teleheatlh','telehealth','in person'))

organization month   therapyA   therapyB   therapyC   therapyD
1            A   jan       <NA>  in person       <NA>       <NA>
2            A   feb  in person  in person  in person  in person
3            B   jan       <NA>       <NA> telehealth       <NA>
4            B   feb teleheatlh teleheatlh teleheatlh teleheatlh
5            C   feb       <NA>       <NA>       <NA> telehealth
6            D   feb  in person  in person  in person  in person

I would like to pivot the df in such as way as to get the results: meaning I'd like to use the current values as column names and concatenate all current column names that correalte. The results also need to stay grouped organization and month.

1            A   jan                            TherapyB                                <NA>
2            A   feb TherapyA,TherapyB,TherapyC,TherapyD                                <NA>
3            B   jan                                <NA>                            TherapyC
4            B   feb                                <NA> TherapyA,TherapyB,TherapyC,TherapyD
5            C   feb                                <NA>                            TherapyD
6            D   feb TherapyA,TherapyB,TherapyC,TherapyD                                <NA>

I have tried using dplyr::pivot_longer unsuccessfully. I have also tried using various base R operations, but was unable to get far without manually rewriting the whole df. Thank you for any input.

1 Answer 1

1

We reshape first to 'long' format with pivot_longer, then group by the columns, paste (toString) the column names and reshape back to 'wide' format (pivot_wider)

library(dplyr)
library(tidyr)
library(snakecase)
df %>% 
 mutate(rn = row_number()) %>% 
 pivot_longer(cols = starts_with('therapy'), values_drop_na = TRUE) %>% 
 group_by(rn, organization, month, value) %>%
 summarise(name = toString(to_upper_camel_case(name)), .groups = 'drop') %>% 
 pivot_wider(names_from = value, values_from = name) %>% 
 select(-rn)

-output

# A tibble: 6 × 4
  organization month `in person`                            telehealth                            
  <chr>        <chr> <chr>                                  <chr>                                 
1 A            jan   TherapyB                               <NA>                                  
2 A            feb   TherapyA, TherapyB, TherapyC, TherapyD <NA>                                  
3 B            jan   <NA>                                   TherapyC                              
4 B            feb   <NA>                                   TherapyA, TherapyB, TherapyC, TherapyD
5 C            feb   <NA>                                   TherapyD                              
6 D            feb   TherapyA, TherapyB, TherapyC, TherapyD <NA>           

data

df <- structure(list(organization = c("A", "A", "B", "B", "C", "D"), 
    month = c("jan", "feb", "jan", "feb", "feb", "feb"), therapyA = c(NA, 
    "in person", NA, "telehealth", NA, "in person"), therapyB = c("in person", 
    "in person", NA, "telehealth", NA, "in person"), therapyC = c(NA, 
    "in person", "telehealth", "telehealth", NA, "in person"), 
    therapyD = c(NA, "in person", NA, "telehealth", "telehealth", 
    "in person")), row.names = c(NA, -6L), class = "data.frame")
1
  • 1
    Thank you. I hadn't thought to put the toString function within summarise, i had it stuck in mutate. Also the trick to pivot-wider to break up the inperson/telehealth colnames.
    – M3Lba
    Aug 9, 2022 at 19:27

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.