I am using plyr to calculate means and standard deviations in r. However, my grouping variable contains a combination of letters and numbers, so I need to either use some kind of wildcard in my grouping variable, or create a new grouping variable by removing the numbers from the original grouping variable. For example, with the following dataframe:

```
test5 <- structure(list(A = structure(1:6, .Label = c("JCT1", "JCT2",
"JCT3", "LFR1", "LFR2", "LFR3"), class = "factor"), B = c(4L,
5L, 3L, 7L, 3L, 6L), C = structure(c(1L, 1L, 1L, 2L, 2L, 2L), .Label = c("JCT",
"LFR"), class = "factor")), .Names = c("A", "B", "C"), class = "data.frame", row.names = c(NA,
-6L))
A B C
1 JCT1 4 JCT
2 JCT2 5 JCT
3 JCT3 3 JCT
4 LFR1 7 LFR
5 LFR2 3 LFR
6 LFR3 6 LFR
```

I can use the following code to calculate means and sd:

```
library(plyr)
ddply(test5,~A,summarise,mean=mean(B),sd=sd(B))
```

which gives a result like

```
A mean sd
1 JCT1 4 NA
2 JCT2 5 NA
3 JCT3 3 NA
4 LFR1 7 NA
5 LFR2 3 NA
6 LFR3 6 NA
```

However, I really need the groups to be `JCT`

and `LFR`

, so need to either 1) use a wildcard in the code (so groups are based on `JCT`

and `LFR`

, with the number being the wildcard), or 2) create a new column like `C`

in my original dataframe that has removed the numbers from column `A`

. So for example, if I could create this new column `C`

then I could use the code

```
ddply(test5,~C,summarise,mean=mean(B),sd=sd(B))
```

to produce my desired result of

```
C mean sd
1 JCT 4.000000 1.000000
2 LFR 5.333333 2.081666
```

Does anyone know of an easy way to do this? I thought I could use ifelse statements to somehow create a new column `C`

, but this would require a lot of code as I have many different values in my real dataframe. I am hoping there is a quicker way.

Thanks!