Literature DB >> 22624503

Population pharmacokinetics and pharmacogenetics of everolimus in renal transplant patients.

Dirk Jan A R Moes1, Rogier R Press, Jan den Hartigh, Tahar van der Straaten, Johan W de Fijter, Henk-Jan Guchelaar.   

Abstract

BACKGROUND AND
OBJECTIVE: Everolimus is a novel macrolide immunosuppressant used in the prevention of acute and chronic rejection of solid organ transplants. Everolimus is being actively investigated worldwide as a non-nephrotoxic alternative for calcineurin inhibitors. Its highly variable pharmacokinetics and narrow therapeutic window make it difficult to maintain an adequate exposure to prevent serious adverse effects. The primary objective of this study was to improve prediction of everolimus systemic exposure in renal transplant patients by describing the pharmacokinetics of everolimus and identifying the influence of demographic factors and a selection of polymorphisms in genes coding for ABCB1, CYP3A5, CYP2C8 and PXR. The secondary objective of this study was to develop a limited sampling strategy to enable prediction of everolimus exposure in an efficient way and to compare it with the widely used trough blood concentration (C(trough)) monitoring.
METHODS: A total of 783 blood samples were obtained from 53 renal transplant patients who had been switched from a triple therapy of ciclosporin, mycophenolate mofetil and prednisolone to a calcineurin inhibitor-free dual therapy of everolimus (twice daily) and prednisolone. Everolimus blood concentrations were analysed in whole blood using liquid chromatography-tandem mass spectrometry during routine therapeutic drug monitoring targeting an area under the blood concentration-time curve from time zero to 12 hours (AUC(12)) of 120 μg · h/L. A population pharmacokinetic model was developed and demographic factors and genetic polymorphisms in genes coding for ABCB1, CYP3A5, CYP2C8 and PXR were included as covariates. In addition, a limited sampling strategy was developed.
RESULTS: Maintaining everolimus systemic exposure at an AUC(12) of 120 μg · h/L resulted in low rejection rates but considerable numbers of adverse events and toxicity. Everolimus pharmacokinetics were best described by a two-compartment model with lag-time (oral clearance = 17.9 L/h; volume of distribution of the central compartment after oral administration [V(1)/F] = 148 L and first-order absorption rate constant [k(a)] = 7.36 h-1). Ideal body weight was significantly related to V(1)/F. None of the selected polymorphisms in genes coding for enzymes involved in distribution and metabolism of everolimus had a significant influence on everolimus pharmacokinetics. The pharmacokinetic limited sampling model (C(trough) and whole blood drug concentration at 2 hours postdose [C(2)]) resulted in a significantly improved prediction of everolimus exposure compared with the widely used C(trough) monitoring.
CONCLUSION: A two-compartment pharmacokinetic model with lag-time describing the concentration-time profile of oral everolimus in renal transplant patients has been developed using pharmacokinetic modelling. Ideal body weight significantly influenced V(1)/F of everolimus; however, the selected polymorphisms in genes coding for ABCB1, CYP3A5, CYP2C8 and PXR had no clinically relevant effect on everolimus pharmacokinetics. Everolimus C(trough) and C(2) as a limited sampling model can be used to accurately estimate everolimus systemic exposure, an improvement over the widely used C(trough) monitoring.

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Year:  2012        PMID: 22624503     DOI: 10.2165/11599710-000000000-00000

Source DB:  PubMed          Journal:  Clin Pharmacokinet        ISSN: 0312-5963            Impact factor:   6.447


  43 in total

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5.  CYP3A5*3 influences sirolimus oral clearance in de novo and stable renal transplant recipients.

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6.  Influence of everolimus on steady-state pharmacokinetics of cyclosporine in maintenance renal transplant patients.

Authors:  Klemens Budde; Gustav Lehne; Michael Winkler; Lutz Renders; Arno Lison; Lutz Fritsche; Jean-Paul Soulillou; Per Fauchald; Hans-Hellmut Neumayer; Jaques Dantal
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7.  Longitudinal assessment of everolimus in de novo renal transplant recipients over the first post-transplant year: pharmacokinetics, exposure-response relationships, and influence on cyclosporine.

Authors:  J M Kovarik; B D Kahan; B Kaplan; M Lorber; M Winkler; M Rouilly; C Gerbeau; N Cambon; R Boger; C Rordorf
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8.  Optimal everolimus concentration is associated with risk reduction for acute rejection in de novo renal transplant recipients.

Authors:  Laurence Chan; Erica Hartmann; Diane Cibrik; Matthew Cooper; Leslie M Shaw
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9.  The effect of CYP3A5 and MDR1 polymorphic expression on cyclosporine oral disposition in renal transplant patients.

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10.  The role of CYP3A5 genotypes in dose requirements of tacrolimus and everolimus after heart transplantation.

Authors:  Daniela Kniepeiss; Wilfried Renner; Olivia Trummer; Doris Wagner; Andrä Wasler; Gholam A Khoschsorur; Martie Truschnig-Wilders; Karl-Heinz Tscheliessnigg
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  24 in total

Review 1.  Sex differences in transplantation.

Authors:  Jeremiah D Momper; Michael L Misel; Dianne B McKay
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2.  Radiation Enhancement of Head and Neck Squamous Cell Carcinoma by the Dual PI3K/mTOR Inhibitor PF-05212384.

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Review 3.  Pharmacogenetics and immunosuppressive drugs in solid organ transplantation.

Authors:  Teun van Gelder; Ron H van Schaik; Dennis A Hesselink
Journal:  Nat Rev Nephrol       Date:  2014-09-23       Impact factor: 28.314

Review 4.  Why We Need to Take a Closer Look at Genetic Contributions to CYP3A Activity.

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Journal:  Front Pharmacol       Date:  2022-06-16       Impact factor: 5.988

5.  A Limited Sampling Strategy to Estimate Exposure of Everolimus in Whole Blood and Peripheral Blood Mononuclear Cells in Renal Transplant Recipients Using Population Pharmacokinetic Modeling and Bayesian Estimators.

Authors:  Ida Robertsen; Jean Debord; Anders Åsberg; Pierre Marquet; Jean-Baptiste Woillard
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6.  mTOR Inhibitor Everolimus in Regulatory T Cell Expansion for Clinical Application in Transplantation.

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Journal:  Transplantation       Date:  2019-04       Impact factor: 4.939

7.  Role of pharmacogenomics in dialysis and transplantation.

Authors:  Kelly Birdwell
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8.  Racial comparisons of everolimus pharmacokinetics and pharmacodynamics in adult kidney transplant recipients.

Authors:  David J Taber; Lindsey Belk; Holly Meadows; Nicole Pilch; James Fleming; Titte Srinivas; John McGillicuddy; Charles Bratton; Kenneth Chavin; Prabhakar Baliga
Journal:  Ther Drug Monit       Date:  2013-12       Impact factor: 3.681

Review 9.  New perspectives on mTOR inhibitors (rapamycin, rapalogs and TORKinibs) in transplantation.

Authors:  Matthias Waldner; Daniel Fantus; Mario Solari; Angus W Thomson
Journal:  Br J Clin Pharmacol       Date:  2016-03-06       Impact factor: 4.335

Review 10.  Pharmacogenetics in kidney transplantation: recent updates and potential clinical applications.

Authors:  Laure Elens; Dennis A Hesselink; Ron H N van Schaik; Teun van Gelder
Journal:  Mol Diagn Ther       Date:  2012-12       Impact factor: 4.074

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