# Find value in >10% of records with replicates (R)

I have a dataset where with patient reported side effects over the course of several visits. It looks like this in R:

``````data = data.frame("patient" = c("P1", "P1", "P1", "P2", "P2", "P2"),
``````

I would like to count the number of side effects that are reported by >10% of the patients, keep the side effect label for the side effects occurring for >10% of patients, and lump everything else into an other category. In the end it would look something like (but with a lot more data):

```SideEffect  Count
Dizzy         2
Other         1
```

I am having trouble calculating this because there are multiple records for the same patients. If they were no repeats I would use fct_lump from the dplyr library. Right now

My current progress:

``````data %>%
group_by(side) %>%
summarize("num.side.effect" = n_distinct(subject.ID)) %>%
mutate("condensed.side.effects" = ifelse(num.side.effect > 50,
``````

Which doesn't quite do what I want. Any suggestions?

• The percentage doesn't look right `data %>% group_by(side.effect) %>% group_by(Sideeffect = replace(as.character(side.effect), n()/nrow(.) < 0.2, "Other")) %>% summarise(Count = n_distinct(patient))` Commented Jul 3, 2018 at 0:06

We can change all other elements that doesn't satisfy the condition to 'Other' and get the `n_distinct` of 'patient'

``````library(dplyr)
data %>%
group_by(side.effect) %>%
group_by(Sideeffect =  replace(as.character(side.effect),
n()/nrow(.) < 0.2, "Other")) %>%
summarise(Count = n_distinct(patient))

# A tibble: 3 x 2
# Sideeffect Count
#  <chr>       <int>
#1 Dizzy           2