I have been trying to calculate confidence intervals for binomial distributions through the Hmisc R package. Specifically, I used the binconf function which does its job perfectly.

library(plyr)
library(Hmisc)

Student <- c("A", "B", "C")
TP <- c(13, 36, 43)
obs.pos <- c(16, 37, 48)

df <- data.frame(Student, TP, obs.pos)

df1 <- df %>% 
  plyr::mutate(Sen = binconf(TP, obs.pos, alpha = 0.05, method = "wilson", return.df = TRUE))

df1 %>% View()

#  Student TP obs.pos Sen.PointEst Sen.Lower Sen.Upper
#1       A 13      16    0.8125000 0.5699112 0.9340840
#2       B 36      37    0.9729730 0.8617593 0.9986137
#3       C 43      48    0.8958333 0.7783258 0.9546783

Unfortunately, I feel that the function creates a data frame within my original data frame and that does not allow me to apply basic functions on my output anymore. For instance, I cannot select columns (by using dplyr) or round digits because R is not able to find the created columns (such as Sen.PointEst, Sen.Lower, Sen.Upper). Below, the structure of my output.

df1 %>% str()

#'data.frame':  3 obs. of  4 variables:
# $ Student: Factor w/ 3 levels "A","B","C": 1 2 3
# $ TP     : num  13 36 43
# $ obs.pos: num  16 37 48
# $ Sen    :'data.frame':   3 obs. of  3 variables:
#  ..$ PointEst: num  0.812 0.973 0.896
#  ..$ Lower   : num  0.57 0.862 0.778
#  ..$ Upper   : num  0.934 0.999 0.955

I would like to have all the columns at the first level of my output so that I can easily apply all the normal functions to my output.

Thanks for any help!

up vote 1 down vote accepted

We have a column that is data.frame inside a data.frame. One option to flatten out the data.frame will be to call data.frame within do.call

dfN <- do.call(data.frame, df1) 

Or another option is to call the binconf within do

df %>% 
  do(data.frame(., Sen = binconf(.$TP, .$obs.pos, alpha = 0.05, method = "wilson")))
  • I like the second option but it returns an error if one cell in the output has NA value. This is the message that I got. Error in if (x > 0) x/(x + qf(1 - alpha/2, nu1, nu2) * (n - x + 1)) else 0 : missing value where TRUE/FALSE needed – Michael Matta Oct 11 at 16:20
  • @MichaelMatta If you do binconf(df$TP, obs.pos, alpha = 0.05, method = "wilson") it returns a matrix, with return.df = TRUE. I guess it won't work with NA values. Create an index and then update it. i.e. i1 <- !is.na(df$TP); binconf(df$TP[i1], obs.pos, alpha = 0.05, method = "wilson") – akrun Oct 11 at 16:24
  • I realized I didn't have missing value but real zeros. The issue was solved by replacing .$obs.pos to obs.pos within your code. Do you agree? – Michael Matta Oct 11 at 16:36
  • 1
    @MichaelMatta Yes, I completely forgot about that variable. you are right – akrun Oct 11 at 16:53

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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