I'm trying to add a ribbon based on predictions from a gamm model, this seems a little harder than intended, as gamm is somewhat different from gam.

I first tried directly with geom_stat, but that will not work (and will not use my entire model, which also includes several other covariates)

```
library(tidyverse); library(mgcv)
dt = cbind(V1=scale(sample(1000)),
Age=rnorm(n = 1000, mean = 40, sd = 10),
ID=rep(seq(1:500),each=2) %>% as.data.frame()
# Works fine ----
dt %>% ggplot(aes(x=Age, y=V1)) +
stat_smooth(method="gam", formula= y~s(x,bs="cr"))
# Fails horribly :P
dt %>% ggplot(aes(x=Age, y=V1)) +
stat_smooth(method="gamm", formula= y~s(x,bs="cr"))
Maximum number of PQL iterations: 20
iteration 1
Warning message:
Computation failed in `stat_smooth()`:
no applicable method for 'predict' applied to an object of class "c('gamm', 'list')"
```

I've tried using the predict function on the model$gamm, but I'm not sure how to use this, and how to make the CI ribbon

```
dt.model = gamm(V1 ~ s(Age, bs="cr") + s(ID, bs = 're'), data=dt, family="gaussian", discrete=T)
dt$pred = predict(dt.model$gam)
dt %>% ggplot(aes(x = Age, y = V1)) +
geom_line(aes(group=ID), alpha=.3) +
geom_point(alpha=.2) +
geom_smooth(aes(y=pred))
```

I recognise this is shitty example data because this is a stupid shape. But I'd like to be able to add a ribbon with the CI along the line as predicted by the model.fit. And I'd prefer to do this in ggplot, particularly as I want a spagetti plot in the background.