-
- Posts: 7
- Joined: Sat Dec 05, 2009 4:41 pm
I have been qualifing a RP-HPLC using UV dual wavelength detection for impurities and assay. The impurities is run at 205 nm, while the assay is run at 293 nm (a maximum for the API). I have great linearity at the higher wavelength (80-120% linear range), but when I run linearity at the lower wavelength the best r^2s are from cubic regression lines.
The chalenge of this method was to get sensitivity from 0.005-15% the nominal sample concentration as one of the starting materials and one of the intermediates are genotoxic (AMES +).
I get accptable r^2s using linear regression, as well as good % recovery using the RRFs calculated from the linear regression lines for the linearity run.
However, upon running intermediate precision, my % recoveries were high (~114-115%) even for the API. But the w/w assays all came out around 100%. Thus, I went back and looked at my regression lines using log transformations on both axies and saw that the linear regression line deviating from the data points at the lower concentrations.
Phew...Now my question is this:
I am not a familiar with non-linear regression curves, but need to know if there is a way to calculate RRFs using cubic regression lines.
