My question is the following of this question I asked some hours ago. Looking at this post will help a lot understanding the question that follows.

I make a model with 1 response variable and 2 explanatory variables, one of them being a factor.

In my model, the response variable is transformed. I'd like to display on a graph my variables but I want the explanatory variable not to be transformed. Moreover I'd like to add the predicted line given by my model which for this purpose should be back-transformed! And to add one more slight difficulty I'd like to do it on a ggplot.

My question is **how can I extend @Roland's solution to ggplot and to several explanatory variables?**

Here is an example:

set.seed(12)

```
resp = (rnorm(120)+20)^3.79
expl1 = rep(c(1,2,3,4),30)
expl2 = rep(1:3,40)
df = data.frame(resp=resp,expl1=expl1,expl2=expl2)
m=lm(resp~expl1*factor(expl2), data=df)
ggplot(data=df,aes(y=resp,x=expl1,shape=factor(expl2)))+geom_point() + geom_smooth(se=F)
```

Instead of the lines that are displayed I'd like to have the predicted values of my model after back-transformation. I could add `method='lm', formula =resp~expl1*factor(expl2)`

in `geom_smooth`

but whether I transform or not `resp`

I will the same problem. Either the line does not fit because transformed, or it doesn't correspond to my model.

Hope my question makes sense! Thanks for your help!