I got following data frame,df, (fragment displayed here):

```
H2475 H2481 H2669 H2843 H2872 H2873 H2881 H2909
E1 94.470 26.481 15.120 18.490 16.189 11.422 14.886 0.512
E2 1.016 0.363 0.509 1.190 1.855 0.958 0.771 0.815
E3 9.671 0.637 0.571 0.447 0.116 0.452 0.403 0.003
E4 3.448 2.826 2.183 2.607 4.288 2.526 2.820 3.523
E5 2.548 1.916 1.126 1.553 1.089 1.228 0.887 1.065
```

what I want to do is to compute mean values of each row after removing two extreme values. For whole rows I used plyr:

```
library(plyr)
df.my_means <- adply(df, 1, transform, my_means = mean(as.matrix(df[i,]) ) )
```

It should be also OK to create some temporary data frame/matrix with min and max values replaced by NAs, but as a beginner I am not able to do it.

Thanks a lot for your help

**EDIT 1**

I was obviously unaware that **mean** has a trim option. I would like to have a solution where instead of **mean** I can plug in any other function. I.e.:

```
library(plyr)
library(e1071)
df.my_means <- adply(df, 1, transform, my_skew = skewness(as.matrix(df[i,]), , 3 ) )
```

I apologize if this breaks the question posting rules, but then having separate questions for mean, median etc. is counter-intuitive.

**EDIT 2**
Partial solution without plyr:

```
df.my_means <- apply(df ,1, function(x){y=x[order(x)]; (y[2:(length(y)-1)])})
```

This break the connection between column values.