consider the following example:

```
require(MuMIn)
data(Cement)
d <- data.frame(Cement)
idx <- seq(11,13)
cor1 <- list()
for (i in 1:length(idx)){
d2 <- d[1:idx[i],]
cor1[[i]] <- cor.test(d2$X1,d2$X2, method = "pearson")
}
out <- lapply(cor1, function(x) c(x$estimate, x$conf.int, x$p.value))
```

Here I calculate the correlation for a dataset within an iteration loop.

I know want to generate one data.frame made up of the values in the list 'out'. I try using

```
df <- do.call(rbind.data.frame, out)
```

but the result does not seem right:

```
> df
c.0.129614123011664..0.195326511912326..0.228579470307565.
1 0.1296141
2 0.1953265
3 0.2285795
c..0.509907346173941...0.426370467476045...0.368861726657293.
1 -0.5099073
2 -0.4263705
3 -0.3688617
c.0.676861607564929..0.691690831088494..0.692365536706126.
1 0.6768616
2 0.6916908
3 0.6923655
c.0.704071702633775..0.542941653020805..0.452566184329491.
1 0.7040717
2 0.5429417
3 0.4525662
```

This is not what I am after.

How can I generate a data.frame that has the first column expressing which list the cor.test was calcuated i.e. 1 to 3 in this case, the second column referring to the $estimate and then $conf.int and %p.value resulting in a five column data.frame.