I have a dataframe `model.vars`

containing discretized data on which to perform logistical regression, as follows:

```
for(i in varnames)
{
modelformula = paste("dep_var~ ", as.factor(i))
modelfits[[i]] = glm(as.formula(modelformula),
data=model.vars ,na.action="na.exclude",
family=binomial(link = "logit"))
}
```

This gets in turn converted to a dataframe using

```
fits = ldply(modelfits, function(x) {
as.data.frame((coef(summary(x))),
row.names=varnames)})
```

However, the resulting output stored in `modelfits`

does not contain a column specifying the relevant level labels for each discretized variable. Rather, I get something like

```
.id Estimate Std. Error zscore Pr(>|z|) abs.zscore
1 Twenty_80.age -0.6911487 0.2813814 -2.456270 1.403875e-02 2.4562
2 Ten_80_10.age -1.0021909 0.2682952 -3.735403 1.874144e-04 3.735403
3 Twenty_80.score -0.7023356 0.3315694 -2.118216 3.415679e-02 2.118216
```

Unfortunately, we need the output as a dataframe (not a list). What would be the best way to add, say, an extra column giving us the level labels? For example, printing out the raw `modelfits`

variable has statements like:

```
Coefficients:
(Intercept) Twenty_80.score[ 11, 19) Twenty_80.score[ 19, 31) Twenty_80.score[ 31,312]
```

I would like these listed in the `fits`

dataframe above as well.