I am using the `drc`

package in `R`

to fit dose response curves (4-param logistic: LL.4) for biological assays. The data I collect is typically heteroscedastic (example image below). I am looking for ways to account for this when calling drm. I have found three possibilities that seem promising:

- Use the type="Poisson" parameter to drm. However, over- and under-dispersion are probable for many assays so this isn't likely to be a general solution
- Follow drm with a call to drc.boxcox. This seems to be more general and could work.
- Use the "varPower" tranform that used to be implemented in drc.multdrc and in drc.drm before it was commented out (search for "varPower" in the drm source). I could un-comment those sections to restore the varPower functionality.

My questions are, what is the most accepted way to handle this? Also, does anyone know why `varPower`

variance handling was removed from the `drc`

package?

**Example code:**

```
# Naive method
a <- drm(y~x,data=subs, fct=LL.4(),control=ctl, start=params)
#Poisson Method
a <- drm(y~x,data=subs, fct=LL.4(),control=ctl, start=params, type="Poisson")
#BOXCOX method
a <- drm(y~x,data=subs, fct=LL.4(),control=ctl, start=params)
a2 <- boxcox(a)
```

**Example Data:**