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Nonlinear mixed effects models applied to cumulative concentration-response curves. | LitMetric

Nonlinear mixed effects models applied to cumulative concentration-response curves.

J Pharm Pharmacol

UPSP 5304 de Physiopathologie Animale et Pharmacologie Fonctionnelle, Ecole Nationale Vétérinaire, Agroalimentaire et de l'alimentation Nantes Atlantique, ONIRIS, Nantes, France.

Published: March 2010

AI Article Synopsis

  • The study explores improving analysis of cumulative concentration-response curves (CCRC) in drug effect research by using nonlinear mixed effects (nlme) models instead of traditional methods.
  • The analysis focused on data from experiments involving beta-adrenoceptor-induced relaxation in rat aorta, demonstrating that nlme models provide more accurate results compared to classical methods.
  • The findings suggest nlme models can effectively identify significant differences in pharmacological parameters even with smaller sample sizes, making them promising for future pharmacological research.

Article Abstract

Objectives: In experimental pharmacology, drug effect studies currently establish and analyse cumulative concentration-response curves (CCRC) under repeated measurements designs. Usually the CCRC parameters are estimated using the Hill's function in a nonlinear regression for independent data. The two-way analysis of variance is generally used to identify a statistical difference between the responses for two treatments but that analysis does not take into account the nonlinearity of the model and the heteroscedasticity (uneven distribution) of the data. We presently tested the possibility of finding a statistical solution for the nonlinear response in repeated measurements data using the nonlinear mixed effects (nlme) models.

Methods: Experimental data sets, originating from studies on beta-adrenoceptor-induced relaxation in rat thoracic aorta ring, were analysed using the nlme methods.

Key Findings: Comparison with classical methods showed the superiority of the nlme models approach. For each pharmacological parameter (E(m), n, pD(2)), a point estimate, a standard error and a confidence interval are returned by the nlme procedures respecting the assumption of independency and normality of the residuals.

Conclusions: Using the method presently described, it is now possible to detect significant differences for each pharmacological parameter estimated in different situations, even for designs with small samples size (i.e. at least six complete curves).

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Source
http://dx.doi.org/10.1211/jpp.62.03.0008DOI Listing

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