I calculated a linear mixed model using the packages lme4 and lsmeans with the lmer-function, where I have one dependent variable rv and the interacting factors treatment, time, age, and race. I'm interested in the response variable change over time, that's why I use the lstrends-function. So far so good. The problem is, I have to square root the response variable in order to fit the model properly. But the pairs-function only gives out a response to the square root of the rv, hard to interpret!

So I tried to back-transform the response variable after pairs:

```
model.lmer <- lmer(sqrt(rv) ~ treat*time*age*race + (1|individual), data=mydata)
model.lst <- lstrends(model.lmer, ~treat | age*race , var = "time", type="response")
pairs(mouse.lst, type="response")
```

This obviously doesn't work, as stated by the package itself:

```
# Transformed response
sqwarp.rg <- ref.grid(update(warp.lm, sqrt(breaks) ~ .))
summary(sqwarp.rg)
# Back-transformed results - compare with summary of 'warp.rg'
summary(sqwarp.rg, type = "response")
# But differences of sqrts can't be back-transformed
summary(pairs(sqwarp.rg, by = "wool"), type = "response")
# We can do it via regrid
sqwarp.rg2 <- regrid(sqwarp.rg)
summary(sqwarp.rg2) # same as for sqwarp.rg with type = "response"
pairs(sqwarp.rg2, by = "wool")
```

It could look like the following code:

```
summary(pairs(lsmeans(rg.regrid, ~ treat | race*age, trend="time")), type="response")
```

The problem is, I can't alter the reference grid for lstrends, just for lsmeans, because the first argument in lstrends or lsmeans with trend="time" requires the linear mixed effect model (model.lmer) intead of just the reference grid like in lsmeans, without the trend-argument... That's probably why I can't back-transform the data with

This here sums up my problem pretty well:

```
model.sqrt <- lmer(sqrt(rv) ~ time*treat*race*age, data=mydata)
rg <- ref.grid(model.sqrt)
rg.regrid <- regrid(rg)
summary(pairs(lsmeans(rg.regrid, ~treat | race*age*time), type = "response"))
```

Works perfectly.

```
summary(pairs(lsmeans(rg.regrid, ~treat | race*age, trend="time"), type = "response"))
```

Gives the following error:

```
Error in summary(pairs(lsmeans(rg.regrid, ~vns | gen * age, trend = "time"), :
error in evaluating the argument 'object' in selecting a method for function 'summary': Error in data[[var]] : subscript out of bounds
```

How to avoid the error and still be able to back-transform my data?