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Being new to R I am having difficulties to bootstrap an ICC output. I first managed to calculate a "normal" ICC using the package ICC without any problems (ICCbare(subject, variable, icc)), but when I tried to get some bootstrapped estimates it became worse...

I started by

icc_boot<-function(icc, i)ICCbare(subject [i], variable [i], icc)

And entered the icc_boot in the bootstrap as shown below:

testicc<-boot(icc, icc_boot, 1000)

However I got an error message saying that "undefined columns selected", where did I go wrong?

Here is a small output of my data

structure(list(subject_id = c(2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2001, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2002, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2003, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2004, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2005, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 2006, 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2031, 2031, 2031, 2031, 2031, 2031, 2031, 2031, 2031, 2031, 2031, 2031, 2031, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2032, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033, 2033), interval_0_epochs = c(7139, 7964, 7775, 6756, 6075, 7184, 7965, 4730, 5957, 7574, 5649, 6496, 9266, 5052, 7090, 7680, 6992, 7151, 6022, 6592, 7310, 7785, 6714, 7311, 7636, 7015, 7482, 8860, 6997, 9034, 9553, 8326, 10015, 10252, 8463, 8612, 8388, 7648, 9503, 9978, 8014, 7125, 8261, 8818, 7733, 9518, 9099, 9368, 8468, 8899, 8984, 10304, 10064, 10398, 9193, 9331, 6866, 7423, 7745, 8525, 7362, 9115, 9509, 8804, 8726, 8668, 8361, 8513, 7670, 9077, 7375, 8148, 5897, 5507, 6321, 7695, 6222, 9024, 7096, 6490, 6319, 6142, 5225, 6081, 6314, 6391, 7319, 7598, 7921, 7324, 9289, 8792, 7980, 6650, 9045, 7896, 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  • R functions are usually defined as function(arguments){do something with arguments}. Perhaps this is not the case with ICC. What is the index i for? – martin Oct 20 '13 at 15:26
  • Thanks for a quick response! The function is basically copied from "discovering statistics using R" however then it was used to create a bootstrap function but for a correlation. The i stands for index and means that the data should be used as is. there is also possibilities to use weights (w), and frequencies (f) in the boot package. But I am not sure if the fucntion is correct when I want to bootstrap ICC. – Begga Oct 20 '13 at 16:32
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In defining the statistic for the boot function 'The first argument passed will always be the original data. The second will be a vector of indices..' See ?boot

An example:

library(ICC)
library(MASS)
library(boot)

# Data
Sigma <- matrix(c(10,3,3,2),2,2)
df <- data.frame(mvrnorm(n=20, rep(0, 2), Sigma))

#ICC on data
m.df <- reshape(df , dir = "long" , varying = list(1:2))
ICCbare(id , X1 , data = m.df)

# Bootstrap function ---------------------------------------------
boot.fun <- function(dat , i) {
  newdf <- dat[i , ]
  m.newdf <- reshape(newdf , dir = "long" , varying = list(1:2) , new.row.names=1:40)  
  ICCbare(id , X1 , data = m.newdf)$ICC
}

boo1 <- boot(df , boot.fun , 2000)
boot.ci(boo1)

EDIT: Based on your data, this would be my approach. Hopefully someone will present a nicer solution. As you data is already in long format i would transform it to wide so that the within-subject correlations are preserved when resampling (there must be a way to sample in the long format).

If your data is df.

#ICC on your data
ICCbare(subject_id , interval_0_epochs , data = df)

# Reshape your data to wide - preserve wothin subject correlation when resampling
df$time <- ave(df$subject_id, list(df$subject_id), FUN=seq_along)
w.df <- reshape(df , timevar = "time" , idvar = "subject_id"  , direction = "wide" )  

# Quick check ---------------------------------------------------------
l.df <- reshape(w.df , direction = "long")
# Define new grouping factor for repeat id's when resamples (later)
l.df$grp <- 1:27
ICCbare(grp , interval_0_epochs.1 , data = l.df)$ICC #same as before

# Bootstrap function ---------------------------------------------
boot.fun <- function(dat , i) {
 newdf <- dat[i , ]
 m.newdf <- reshape(newdf , dir = "long", new.row.names = seq((ncol(dat)-1)*nrow(dat))) 
 m.newdf$grp <- seq(nrow(dat))
 ICCbare(grp , interval_0_epochs.1 , data = m.newdf)$ICC
}

boo1 <- boot(w.df , boot.fun , 2000)
boot.ci(boo1)
  • Thanks! Please have patience with an R-ookie... Your example worked like a charm, however when I tried to add my data it failed. Changing the first part (ICC on data) with my data went fine m.df <- reshape(my_data , dir = "long" , varying = list(1:2)) ICCbare(my_id , my_X1 , data = m.df), but I failed miserably when I tried to figure out where to insert it in the Bootstrap function example. I tried pretty much every possible combination but two types of error messages came up either NROW(rval)]) or undefined columns selected. What went wrong? – Begga Oct 21 '13 at 18:34
  • Hmm...try new.row.names = seq(nrow(newdf)). Are you able to share your data? If so can you post the output of dput(my_data) to an edit of your question. – user20650 Oct 21 '13 at 20:04
  • I've added some representative data from my file. – Begga Oct 22 '13 at 15:26
  • Thanks, i have edited answer .HTH – user20650 Oct 22 '13 at 23:00
  • Thanks a lot! One small observation, when I copy and paste your code into r-commander and changes df to the name of my data it doesnt work But when I change the name of my data to df it works. Weird, but as long as ot works I am satisfied. And I dont care about an 'ugly' solution when it works! – Begga Oct 23 '13 at 14:15

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