OBJECTIVES: Digoxin is a well-known probe for the activity of P-glycoprotein. The objective of this work was to apply different methods for covariate selection in non-linear mixed-effect models to study the relationship between the pharmacokinetic parameters of digoxin and the genotype for two major exons located on the multi-drug-resistance 1 (MDR1) gene coding for P-glycoprotein. METHODS: Thirty-two healthy volunteers were recruited in three pharmacokinetic drug interaction studies. The data after a single oral administration of digoxin alone were pooled. All subjects were genotyped for the MDR1 C3435T and G2677T/A genotypes. The concentration-time profile of digoxin was established using 12-16 blood samples taken between 15 min and 72 h after administration. We modelled the pharmacokinetics of digoxin using non-linear mixed-effect models. Parameter estimation was performed using the stochastic approximation EM method (SAEM). We used three methods to select the covariate model: selection from a full model using Wald tests, forward inclusion using the log-likelihood ratio test and model selection using the Bayesian Information Criterion. RESULTS: The three covariate inclusion methods led to the same final model. Carriers of two T alleles for the C3435T polymorphism in exon 26 of MDR1 had a lower apparent volume of distribution than carriers of a C allele. The only other covariate effect was a shorter absorption time-lag in women. CONCLUSION: The apparent volume of distribution of digoxin is lower in TT subjects, probably reflecting differences in bioavailability. Non-linear mixed-effect models can be useful for detecting the influence of covariates on pharmacokinetic parameters.
OBJECTIVES:Digoxin is a well-known probe for the activity of P-glycoprotein. The objective of this work was to apply different methods for covariate selection in non-linear mixed-effect models to study the relationship between the pharmacokinetic parameters of digoxin and the genotype for two major exons located on the multi-drug-resistance 1 (MDR1) gene coding for P-glycoprotein. METHODS: Thirty-two healthy volunteers were recruited in three pharmacokinetic drug interaction studies. The data after a single oral administration of digoxin alone were pooled. All subjects were genotyped for the MDR1C3435T and G2677T/A genotypes. The concentration-time profile of digoxin was established using 12-16 blood samples taken between 15 min and 72 h after administration. We modelled the pharmacokinetics of digoxin using non-linear mixed-effect models. Parameter estimation was performed using the stochastic approximation EM method (SAEM). We used three methods to select the covariate model: selection from a full model using Wald tests, forward inclusion using the log-likelihood ratio test and model selection using the Bayesian Information Criterion. RESULTS: The three covariate inclusion methods led to the same final model. Carriers of two T alleles for the C3435T polymorphism in exon 26 of MDR1 had a lower apparent volume of distribution than carriers of a C allele. The only other covariate effect was a shorter absorption time-lag in women. CONCLUSION: The apparent volume of distribution of digoxin is lower in TT subjects, probably reflecting differences in bioavailability. Non-linear mixed-effect models can be useful for detecting the influence of covariates on pharmacokinetic parameters.
Authors: Andreas Johne; Karla Köpke; Thomas Gerloff; Ingrid Mai; Stephan Rietbrock; Christian Meisel; Sven Hoffmeyer; Reinhold Kerb; Martin F Fromm; Ulrich Brinkmann; Michel Eichelbaum; Jürgen Brockmöller; Ingolf Cascorbi; Ivar Roots Journal: Clin Pharmacol Ther Date: 2002-11 Impact factor: 6.875
Authors: C Verstuyft; S Morin; J Yang; M-A Loriot; V Barbu; R Kerb; U Brinkmann; P Beaune; P Jaillon; L Becquemont Journal: Ann Biol Clin (Paris) Date: 2003 May-Jun Impact factor: 0.459
Authors: Sukyung Woo; Erin R Gardner; Xiaohong Chen; Sandra B Ockers; Caitlin E Baum; Tristan M Sissung; Douglas K Price; Robin Frye; Richard L Piekarz; Susan E Bates; William D Figg Journal: Clin Cancer Res Date: 2009-02-15 Impact factor: 12.531
Authors: Robert J DiDomenico; Adam P Bress; Kwanta Na-Thalang; Yvonne Y Tsao; Vicki L Groo; Kelly L Deyo; Shitalben R Patel; Jeffrey R Bishop; Jerry L Bauman Journal: Pharmacotherapy Date: 2014-08-28 Impact factor: 4.705