I am trying to calculate several binomial proportion confidence intervals. My data are in a data frame, and though I can successfully extract the estimate from the object returned by prop.test, the conf.int variable seems to be null when run on the data frame.


cases <- c(50000, 1000, 10, 2343242)
population <- c(100000000, 500000000, 100000, 200000000)

df <- as.data.frame(cbind(cases, population))
df %>% mutate(rate = prop.test(cases, population, conf.level=0.95)$estimate)

This appropriately returns

    cases population       rate
1   50000      1e+08 0.00050000
2    1000      5e+08 0.00000200
3      10      1e+05 0.00010000
4 2343242      2e+08 0.01171621

However, when I run

df %>% mutate(confint.lower= prop.test(cases, pop, conf.level=0.95)$conf.int[1])

I sadly get

Error in mutate_impl(.data, dots) : 
  Column `confint.lower` is of unsupported type NULL

Any thoughts? I know alternative ways to calculate the binomial proportion confidence interval, but I would really like to learn how to use dplyr well.

Thank you!

  • 1
    @akrun my apologies -- vestigial evidence of real data vs my attempt to share a reproducible chunk. I edited the code. Thanks.
    – PBB
    Jun 21, 2018 at 21:04
  • What is sumcases? :)
    – SeGa
    Jun 21, 2018 at 21:08
  • if we dig into the help page for ?prop.test in the Value section the description for conf.int tells us "a confidence interval for the true proportion if there is one group, or for the difference in proportions if there are 2 groups and p is not given, or NULL otherwise" so you need to test either one or two groups to generate a nonNULL value for you conf.int, not the 4 groups that are currently being tested
    – Nate
    Jun 21, 2018 at 21:10
  • 1
    @Nate I saw that, but I thought that dplyr would be doing a sort of row-wise call of prop.test and thus the rows would each be considered individually, and the first part of your quoted section ("a confidence interval for the true proportion if there is one group") would apply. Am I misunderstanding dplyr?
    – PBB
    Jun 21, 2018 at 21:26
  • 1
    Try library(purrr) ; library(dplyr) ; df %>% mutate(confint.lower = map2(.x = cases, .y = population, .f = ~ prop.test(.x, .y, conf.level=0.95)$conf.int[1])). I haven't really dug into the htest class to figure out why your version isn't working, but this should. EDIT: Actually, on quick reflection, it's probably not working because prop.test isn't vectorized. Jun 21, 2018 at 21:34

2 Answers 2


You can use dplyr::rowwise() to group on rows:

df %>%
    rowwise() %>%
    mutate(lower_ci = prop.test(cases, pop, conf.level=0.95)$conf.int[1])

By default dplyr takes the column names and treats them like vectors. So vectorized functions, like @Jake Fisher mentioned above, just work without rowwise() added.

This is what I would do to catch all of the confidence interval components at once:

df %>%
    rowwise %>%
    mutate(tst = list(broom::tidy(prop.test(cases, pop, conf.level=0.95)))) %>%
  • 2
    Amazing, thank you so much Nate and @JakeFisher . Thanks for providing both an explanation as well as helpful code -- much appreciated.
    – PBB
    Jun 21, 2018 at 22:00
  • 1
    Very clean code that works perfectly well, thank you! May 21, 2021 at 12:27

As of version 1.0.0, rowwise() is no longer being questioned.

As of version 0.8.3 of dplyr, the lifecycle status of the rowwise() function is "questioning".

As an alternative, I would rather recommend the use of purrr::map2() to achieve the goal:

df %>%
  mutate(rate = map2(cases, pop, ~ prop.test(.x, .y, conf.level=0.95) %>%
                                     broom::tidy())) %>%

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