A new approach to evaluate regression models during validation of bioanalytical assays
Journal of Pharmaceutical and Biomedical Analysis 41(1): 219-227
Article 2005 English
Authors
TS
Thida Singtoroj
JT
Joel Tärning
AA
Anna Annerberg
Abstract
1 min read
The quality of bioanalytical data is highly dependent on using an appropriate regression model for calibration curves. Non-weighted linear regression has traditionally been used but is not necessarily the optimal model. Bioanalytical assays generally benefit from using either data transformation and/or weighting since variance normally increases with concentration. A data set with calibrators ranging from 9 to 10000ng/mL was used to compare a new approach with the traditional approach for selecting an optimal regression model. The new approach used a combination of relative residuals at each calibration level together with precision and accuracy of independent quality control samples over 4 days to select and justify the best regression model. The results showed that log–log transformation without weighting was the simplest model to fit the calibration data and ensure good predictability for this data set.
Alexander Pate, Matthew Sperrin, Richard D. Riley, Niels Peek, Tjeerd van Staa, Jamie C. Sergeant, Mamas A. Mamas, Professor Gregory Lip, Martín O ́Flaherty, Michael Barrowman, Iain Buchan, Glen P. Martin
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