I'm the maintainer of `ICC`

and I want to thank you for the excellent discussion. I know this is a very late reply, but I just updated the package and the new version (`v2.3.0`

) should fix the "ugly" code and the problem encountered by the OP. See examples in this gist.

I just wanted to post this here in case anyone was searching with a similar problem. Thanks again, sorry for the delay.

Here is the content of the gist:

# ICC non-standard evaluation examples

The ICC package for R calculates the intraclass correlation coefficient (ICC) from a one-way analysis of variance. Recently, the package was updated to better execute R's non-standard evaluation within each function (version 2.3.0 and higher). The package functions should now be able to handle a range of possible scenarios for calling the functions in, what I hope, is a less grotesque and more standard way of writing R functions. To demonstrate, below are some of those scenarios. Note, the examples use the `ICCbare`

function, but the way in which the function arguments are supplied will apply to all of the functions in `ICC`

.

First, load the package (and make sure the version is >2.3.0)

```
library(ICC)
packageVersion("ICC")
```

## Columns of a `data.frame`

Here we supply the column names and the `data.frame`

that contains the data to calculate the ICC. We will use the `ChickWeight`

data fame.

```
data(ChickWeight)
ICCbare(x = Chick, y = weight, data = ChickWeight)
#$ICC
#[1] 0.1077609
```

## Iterating through columns of a `data.frame`

In this case, we might have a `data.frame`

in which we want to estimate the ICC for a number of different types of measurements that each has the same grouping or factor variable (e.g., `x`

). The extreme of this might be in a simulation or bootstrapping scenario or even with some fancy high-throughput phenotyping/data collection. The point being, we want to automate the calculation of the ICC for each column.

First, we will simulate our own dataset with 3 traits to use in the example:

```
set.seed(101)
n <- 15 # number of individuals/groups/categories/factors
k <- 3 # number of measures per 'n'
va <- 1 # variance among
icc <- 0.6 # expected ICC
vw <- (va * (1 - icc)) / icc # solve for variance within
simdf <- data.frame(ind = rep(LETTERS[1:n], each = k),
t1 = rep(rnorm(n, 10, sqrt(va)), each = k) + rnorm(n*k, 0, sqrt(vw)),
t2 = rep(rnorm(n, 10, sqrt(va)), each = k) + rnorm(n*k, 0, sqrt(vw)),
t3 = rep(rnorm(n, 10, sqrt(va)), each = k) + rnorm(n*k, 0, sqrt(vw)))
```

Two ways to run through the columns come to mind: iteratively pass the name of each column or iteratively pass the column index. I will demonstrate both below. I do these in `for`

loops so it is easier to see, but an easy extension would be to vectorise this by using something from the `apply`

family of functions. First, passing the name:

```
for(i in names(simdf)[-1]){
cat(i, ":")
tmp.icc <- ICCbare(x = ind, y = i, data = simdf)
cat(tmp.icc, "\n")
}
#t1 : 0.60446
#t2 : 0.6381197
#t3 : 0.591065
```

or even like this:

```
for(i in 1:3){
cat(paste0("t", i), ": ")
tmp.icc <- ICCbare(x = ind, y = paste0("t", i), data = simdf)
cat(tmp.icc, "\n")
}
#t1 : 0.60446
#t2 : 0.6381197
#t3 : 0.591065
```

Alternatively, pass the column index:

```
for(i in 2:ncol(simdf)){
cat(names(simdf)[i], ": ")
tmp.icc <- ICCbare(x = ind, y = simdf[, i], data = simdf)
cat(tmp.icc, "\n")
}
#t1 : 0.60446
#t2 : 0.6381197
#t3 : 0.591065
```

## Passing a character as an argument is deprecated

Note that the function will still work if a character is passed directly (e.g., `"t1"`

), albeit with a `warning`

. The warning just means that this may no longer work in future versions of the package. For example:

```
ICCbare(x = ind, y = "t1", data = simdf)
#[1] 0.60446
#Warning message:
#In ICCbare(x = ind, y = "t1", data = simdf) :
# passing a character string to 'y' is deprecated since ICC version
# 2.3.0 and will not be supported in future versions. The argument
# to 'y' should either be an unquoted column name of 'data' or an object
```

Note, however, that an expression evaluating to a character (e.g., `paste0("t", 1)`

) doesn't throw the `warning`

, which is nice!

`ICCbare`

correctly (didn't install the package), you are supposed to pass`character`

s for the column names. Is that not the case? Your example of usage outside a loop seems to indicate that non-standard evaluation is used instead. Is that really the case and doesn't`ICCbare(x = "group", y = "variable1", data = dat)`

work?`ICCbare(x = "group", y = "variable1", data = dat)`

does indeed work. However, I am not quite sure how that helps for my "loop problem"?`for(i in 1:10) ICCbare("group", names(dat)[i], data = dat)`

?`for (i in names(dat)) ICCbare("group", i, data = dat)`

should work as well.2more comments