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http://dx.doi.org/10.5351/KJAS.2012.25.4.633

Estimation of Relative Potency with the Parallel-Line Model  

Lee, Tae-Won (Department of Information and Mathematics, Korea University)
Publication Information
The Korean Journal of Applied Statistics / v.25, no.4, 2012 , pp. 633-640 More about this Journal
Abstract
Biological methods are described for the assay of certain substances and preparations whose potency cannot be adequately assured by chemical or physical analysis. The principle applied through these assays is of a comparison with a standard preparation to determine how much of the examined substance produces the same biological effects as a given quantity (the Unit) of the standard preparation. In these dilution assays, to estimate the relative potencies of the unknown preparations to the standard preparations, it is necessary to compare dose-response relationships of standard and unknown preparations. The dose-response relationship in the dilution assay is non-linear and sigmoid when a wide range of doses is applied. The parallel line model (applied to the dose region with the steepest slope) is used to estimate the relative potency. In this paper, the statistical theory in the parallel line model is explained with an application to a dilution assay data. The parallel line method is implemented in a SAS program and is available at the author's homepage(http://cafe.daum.net/go.analysis).
Keywords
Relative potency; dilution assay; parallel line model; SAS program;
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  • Reference
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