I have a `data.frame`

with counts per two `group`

s in three `cluster`

s to which I'm fitting a logistic regression (`binomial`

`glm`

with a `logit`

`link function`

), and plotting it all using `ggplot2`

's `geom_bar`

and `geom_smooth`

, and adding p-values using `ggpmisc`

's `stat_fit_tidy`

.

Here's how it looks like:

Data:

```
library(dplyr)
observed.probability.df <- data.frame(cluster = c("c1","c1","c2","c2","c3","c3"), group = rep(c("A","B"),3), p = c(0.4,0.6,0.5,0.5,0.6,0.4))
observed.data.df <- do.call(rbind,lapply(c("c1","c2","c3"), function(l){
do.call(rbind,lapply(c("A","B"), function(g)
data.frame(cluster = l, group = g, value = c(rep(0,1000*dplyr::filter(observed.probability.df, cluster == l & group != g)$p),rep(1,1000*dplyr::filter(observed.probability.df, cluster == l & group == g)$p)))
))
}))
observed.probability.df$cluster <- factor(observed.probability.df$cluster, levels = c("c1","c2","c3"))
observed.data.df$cluster <- factor(observed.data.df$cluster, levels = c("c1","c2","c3"))
observed.probability.df$group <- factor(observed.probability.df$group, levels = c("A","B"))
observed.data.df$group <- factor(observed.data.df$group, levels = c("A","B"))
```

Plot:

```
library(ggplot2)
library(ggpmisc)
ggplot(observed.probability.df, aes(x = group, y = p, group = cluster, fill = group)) +
geom_bar(stat = 'identity') +
geom_smooth(data = observed.data.df, mapping = aes(x = group, y = value, group = cluster), color = "black", method = 'glm', method.args = list(family = binomial(link = 'logit'))) +
stat_fit_tidy(data = observed.data.df, mapping = aes(x = group, y = value, group = cluster, label = sprintf("P = %.3g", stat(x_p.value))), method = 'glm', method.args = list(formula = y ~ x, family = binomial(link = 'logit')), parse = T, label.x = "center", label.y = "top") +
scale_x_discrete(name = NULL,labels = levels(observed.probability.df$group), breaks = sort(unique(observed.probability.df$group))) +
facet_wrap(as.formula("~ cluster")) + theme_minimal() + theme(legend.title = element_blank()) + ylab("Fraction of cells")
```

Suppose I have the expected probabilities for each `group`

and I'd like to add that as an `offset`

to `geom_smooth`

and `stat_fit_tidy`

`glm`

s. How do I do this?

Following this Cross Validated post, I added these offsets to `observed.data.df`

:

```
observed.data.df <- observed.data.df %>% dplyr::left_join(data.frame(group = c("A","B"), p = qlogis(c(0.45,0.55))))
```

And then tried to add the `offset(p)`

expression to `geom_smooth`

and `stat_fit_tidy`

:

```
ggplot(observed.probability.df, aes(x = group, y = p, group = cluster, fill = group)) +
geom_bar(stat = 'identity') +
geom_smooth(data = observed.data.df, mapping = aes(x = group, y = value, group = cluster), color = "black", method = 'glm', method.args = list(formula = y ~ x + offset(p), family = binomial(link = 'logit'))) +
stat_fit_tidy(data = observed.data.df, mapping = aes(x = group, y = value, group = cluster, label = sprintf("P = %.3g", stat(x_p.value))), method = 'glm', method.args = list(formula = y ~ x + offset(p), family = binomial(link = 'logit')), parse = T, label.x = "center", label.y = "top") +
scale_x_discrete(name = NULL,labels = levels(observed.probability.df$group), breaks = sort(unique(observed.probability.df$group))) +
facet_wrap(as.formula("~ cluster")) + theme_minimal() + theme(legend.title = element_blank()) + ylab("Fraction of cells")
```

But I get these warnings:

```
Warning messages:
1: Computation failed in `stat_smooth()`:
invalid type (closure) for variable 'offset(p)'
2: Computation failed in `stat_smooth()`:
invalid type (closure) for variable 'offset(p)'
3: Computation failed in `stat_smooth()`:
invalid type (closure) for variable 'offset(p)'
4: Computation failed in `stat_fit_tidy()`:
invalid type (closure) for variable 'offset(p)'
5: Computation failed in `stat_fit_tidy()`:
invalid type (closure) for variable 'offset(p)'
6: Computation failed in `stat_fit_tidy()`:
invalid type (closure) for variable 'offset(p)'
```

Indicating that this addition is not recognized and the plot comes out only with the bars:

Any idea how to add the offset term to the `geom_smooth`

and `stat_fit_tidy`

`glm`

s? Or even just to the `geom_smooth`

glm (commenting out the `stat_fit_tidy`

line)?

Alternatively, is it possible to add to the `geom_bar`

the predicted regression line, SE, and p-value obtained by fitting the `glm`

outside the `ggplot`

call (`fit <- glm(value ~ group + offset(p), data = observed.data.df, family = binomial(link = 'logit'))`

)?