Mining Small Routine Clinical Data: A Population Pharmacokinetic Model and Optimal Sampling Times of Capecitabine and its Metabolites

Purpose: The present study was performed to demonstrate that small amounts of routine clinical data allow to generate valuable knowledge. Concretely, the aims of this research were to build a joint population pharmacokinetic model for capecitabine and three of its metabolites (5-DFUR, 5-FU and 5-FU...

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Main Authors: Esther Oyaga-Iriarte, Asier Insausti, Lorea Bueno, Onintza Sayar, Azucena Aldaz
Format: Article
Language:English
Published: Canadian Society for Pharmaceutical Sciences 2019-04-01
Series:Journal of Pharmacy & Pharmaceutical Sciences
Online Access:https://journals.library.ualberta.ca/jpps/index.php/JPPS/article/view/30392
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spelling doaj-467015ab40c745648e8817eb899dadb22020-11-25T03:04:33ZengCanadian Society for Pharmaceutical SciencesJournal of Pharmacy & Pharmaceutical Sciences1482-18262019-04-0122110.18433/jpps30392Mining Small Routine Clinical Data: A Population Pharmacokinetic Model and Optimal Sampling Times of Capecitabine and its MetabolitesEsther Oyaga-Iriarte0Asier Insausti1Lorea Bueno2Onintza Sayar3Azucena Aldaz4Pharmamodelling SL, Pamplona, Spain.Pharmamodelling SL, Pamplona, SpainPharmamodelling SL, Pamplona, SpainPharmamodelling SL, Pamplona, SpainService of Hospital Pharmacy, Clinica Universidad de Navarra, Pio XII 36, Pamplona, Spain. Purpose: The present study was performed to demonstrate that small amounts of routine clinical data allow to generate valuable knowledge. Concretely, the aims of this research were to build a joint population pharmacokinetic model for capecitabine and three of its metabolites (5-DFUR, 5-FU and 5-FUH2) and to determine optimal sampling times for therapeutic drug monitoring. Methods: We used data of 7 treatment cycles of capecitabine in patients with metastatic colorectal cancer. The population pharmacokinetic model was built as a multicompartmental model using NONMEM and was internally validated by visual predictive check. Optimal sampling times were estimated using PFIM 4.0 following D-optimality criterion. Results: The final model was a multicompartmental model which represented the sequential transformations from capecitabine to its metabolites 5-DFUR, 5-FU and 5-FUH2 and was correctly validated. The optimal sampling times were 0.546, 0.892, 1.562, 4.736 and 8 hours after the administration of the drug. For its correct implementation in clinical practice, the values were rounded to 0.5, 1, 1.5, 5 and 8 hours after the administration of the drug. Conclusions: Capecitabine, 5-DFUR, 5-FU and 5-FUH2 can be correctly described by the joint multicompartmental model presented in this work. The aforementioned times are optimal to maximize the information of samples. Useful knowledge can be obtained for clinical practice from small databases. https://journals.library.ualberta.ca/jpps/index.php/JPPS/article/view/30392
collection DOAJ
language English
format Article
sources DOAJ
author Esther Oyaga-Iriarte
Asier Insausti
Lorea Bueno
Onintza Sayar
Azucena Aldaz
spellingShingle Esther Oyaga-Iriarte
Asier Insausti
Lorea Bueno
Onintza Sayar
Azucena Aldaz
Mining Small Routine Clinical Data: A Population Pharmacokinetic Model and Optimal Sampling Times of Capecitabine and its Metabolites
Journal of Pharmacy & Pharmaceutical Sciences
author_facet Esther Oyaga-Iriarte
Asier Insausti
Lorea Bueno
Onintza Sayar
Azucena Aldaz
author_sort Esther Oyaga-Iriarte
title Mining Small Routine Clinical Data: A Population Pharmacokinetic Model and Optimal Sampling Times of Capecitabine and its Metabolites
title_short Mining Small Routine Clinical Data: A Population Pharmacokinetic Model and Optimal Sampling Times of Capecitabine and its Metabolites
title_full Mining Small Routine Clinical Data: A Population Pharmacokinetic Model and Optimal Sampling Times of Capecitabine and its Metabolites
title_fullStr Mining Small Routine Clinical Data: A Population Pharmacokinetic Model and Optimal Sampling Times of Capecitabine and its Metabolites
title_full_unstemmed Mining Small Routine Clinical Data: A Population Pharmacokinetic Model and Optimal Sampling Times of Capecitabine and its Metabolites
title_sort mining small routine clinical data: a population pharmacokinetic model and optimal sampling times of capecitabine and its metabolites
publisher Canadian Society for Pharmaceutical Sciences
series Journal of Pharmacy & Pharmaceutical Sciences
issn 1482-1826
publishDate 2019-04-01
description Purpose: The present study was performed to demonstrate that small amounts of routine clinical data allow to generate valuable knowledge. Concretely, the aims of this research were to build a joint population pharmacokinetic model for capecitabine and three of its metabolites (5-DFUR, 5-FU and 5-FUH2) and to determine optimal sampling times for therapeutic drug monitoring. Methods: We used data of 7 treatment cycles of capecitabine in patients with metastatic colorectal cancer. The population pharmacokinetic model was built as a multicompartmental model using NONMEM and was internally validated by visual predictive check. Optimal sampling times were estimated using PFIM 4.0 following D-optimality criterion. Results: The final model was a multicompartmental model which represented the sequential transformations from capecitabine to its metabolites 5-DFUR, 5-FU and 5-FUH2 and was correctly validated. The optimal sampling times were 0.546, 0.892, 1.562, 4.736 and 8 hours after the administration of the drug. For its correct implementation in clinical practice, the values were rounded to 0.5, 1, 1.5, 5 and 8 hours after the administration of the drug. Conclusions: Capecitabine, 5-DFUR, 5-FU and 5-FUH2 can be correctly described by the joint multicompartmental model presented in this work. The aforementioned times are optimal to maximize the information of samples. Useful knowledge can be obtained for clinical practice from small databases.
url https://journals.library.ualberta.ca/jpps/index.php/JPPS/article/view/30392
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