CHAPTER 19 Other Useful Kinds of Regression 285
Using equivalent functions to fit the
parameters you really want
It’s inconvenient, annoying, and error-prone to have to perform manual calcula-
tions on the parameters you obtain from nonlinear regression output. It’s so much
extra work to read the output that contains the estimates you need, likeC 0 and the
ke rate constant, then manually calculate the parameters you want, like Vd and λ.
It’s even more work to obtain the SEs. Wouldn’t it be nice if you could get Vd and
λ and their SEs directly from the nonlinear regression program? Well, in many
cases, you can!
Because nonlinear regression involves algebra, some fancy math footwork can
help you out. Very often, you can re-express the formula in an equivalent form
that directly involves calculating the parameters you actually want to know.
Here’s how it works for the PK example we use in the preceding sections.
Algebra tells you that because V
Dose C
d
/
0, then C
Dose Vd
0
/
. So why not use
Dose /Vd instead of C 0 in the formula you’re fitting? If you do, it becomes
Conc
Dose v
e
d
k Time
e
. And you can go even further than that. It turns out that
a first-order exponential-decline formula can be written either as e k Time
e
or as the
algebraically equivalent form 2
1 2
Time t /
.
FIGURE 19-8:
Nonlinear model
fitted to drug
concentration
data.
© John Wiley & Sons, Inc.