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Model‐Based Approach to Predict Adherence to Protocol During Antiobesity Trials

Development of antiobesity drugs is continuously challenged by high dropout rates during clinical trials. The objective was to develop a population pharmacodynamic model that describes the temporal changes in body weight, considering disease progression, lifestyle intervention, and drug effects. Mar...

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Autores principales: Sharma, Vishnu D., Combes, François P., Vakilynejad, Majid, Lahu, Gezim, Lesko, Lawrence J., Trame, Mirjam N.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5811797/
https://www.ncbi.nlm.nih.gov/pubmed/28858397
http://dx.doi.org/10.1002/jcph.994
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author Sharma, Vishnu D.
Combes, François P.
Vakilynejad, Majid
Lahu, Gezim
Lesko, Lawrence J.
Trame, Mirjam N.
author_facet Sharma, Vishnu D.
Combes, François P.
Vakilynejad, Majid
Lahu, Gezim
Lesko, Lawrence J.
Trame, Mirjam N.
author_sort Sharma, Vishnu D.
collection PubMed
description Development of antiobesity drugs is continuously challenged by high dropout rates during clinical trials. The objective was to develop a population pharmacodynamic model that describes the temporal changes in body weight, considering disease progression, lifestyle intervention, and drug effects. Markov modeling (MM) was applied for quantification and characterization of responder and nonresponder as key drivers of dropout rates, to ultimately support the clinical trial simulations and the outcome in terms of trial adherence. Subjects (n = 4591) from 6 Contrave(®) trials were included in this analysis. An indirect‐response model developed by van Wart et al was used as a starting point. Inclusion of drug effect was dose driven using a population dose‐ and time‐dependent pharmacodynamic (DTPD) model. Additionally, a population‐pharmacokinetic parameter‐ and data (PPPD)‐driven model was developed using the final DTPD model structure and final parameter estimates from a previously developed population pharmacokinetic model based on available Contrave(®) pharmacokinetic concentrations. Last, MM was developed to predict transition rate probabilities among responder, nonresponder, and dropout states driven by the pharmacodynamic effect resulting from the DTPD or PPPD model. Covariates included in the models and parameters were diabetes mellitus and race. The linked DTPD‐MM and PPPD‐MM was able to predict transition rates among responder, nonresponder, and dropout states well. The analysis concluded that body‐weight change is an important factor influencing dropout rates, and the MM depicted that overall a DTPD model‐driven approach provides a reasonable prediction of clinical trial outcome probabilities similar to a pharmacokinetic‐driven approach.
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spelling pubmed-58117972018-02-16 Model‐Based Approach to Predict Adherence to Protocol During Antiobesity Trials Sharma, Vishnu D. Combes, François P. Vakilynejad, Majid Lahu, Gezim Lesko, Lawrence J. Trame, Mirjam N. J Clin Pharmacol Modeling and Simulation Development of antiobesity drugs is continuously challenged by high dropout rates during clinical trials. The objective was to develop a population pharmacodynamic model that describes the temporal changes in body weight, considering disease progression, lifestyle intervention, and drug effects. Markov modeling (MM) was applied for quantification and characterization of responder and nonresponder as key drivers of dropout rates, to ultimately support the clinical trial simulations and the outcome in terms of trial adherence. Subjects (n = 4591) from 6 Contrave(®) trials were included in this analysis. An indirect‐response model developed by van Wart et al was used as a starting point. Inclusion of drug effect was dose driven using a population dose‐ and time‐dependent pharmacodynamic (DTPD) model. Additionally, a population‐pharmacokinetic parameter‐ and data (PPPD)‐driven model was developed using the final DTPD model structure and final parameter estimates from a previously developed population pharmacokinetic model based on available Contrave(®) pharmacokinetic concentrations. Last, MM was developed to predict transition rate probabilities among responder, nonresponder, and dropout states driven by the pharmacodynamic effect resulting from the DTPD or PPPD model. Covariates included in the models and parameters were diabetes mellitus and race. The linked DTPD‐MM and PPPD‐MM was able to predict transition rates among responder, nonresponder, and dropout states well. The analysis concluded that body‐weight change is an important factor influencing dropout rates, and the MM depicted that overall a DTPD model‐driven approach provides a reasonable prediction of clinical trial outcome probabilities similar to a pharmacokinetic‐driven approach. John Wiley and Sons Inc. 2017-08-31 2018-02 /pmc/articles/PMC5811797/ /pubmed/28858397 http://dx.doi.org/10.1002/jcph.994 Text en © 2017, The Authors. The Journal of Clinical Pharmacology published by Wiley Periodicals, Inc. on behalf of American College of Clinical Pharmacology This is an open access article under the terms of the Creative Commons Attribution‐NonCommercial (http://creativecommons.org/licenses/by-nc/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purposes.
spellingShingle Modeling and Simulation
Sharma, Vishnu D.
Combes, François P.
Vakilynejad, Majid
Lahu, Gezim
Lesko, Lawrence J.
Trame, Mirjam N.
Model‐Based Approach to Predict Adherence to Protocol During Antiobesity Trials
title Model‐Based Approach to Predict Adherence to Protocol During Antiobesity Trials
title_full Model‐Based Approach to Predict Adherence to Protocol During Antiobesity Trials
title_fullStr Model‐Based Approach to Predict Adherence to Protocol During Antiobesity Trials
title_full_unstemmed Model‐Based Approach to Predict Adherence to Protocol During Antiobesity Trials
title_short Model‐Based Approach to Predict Adherence to Protocol During Antiobesity Trials
title_sort model‐based approach to predict adherence to protocol during antiobesity trials
topic Modeling and Simulation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5811797/
https://www.ncbi.nlm.nih.gov/pubmed/28858397
http://dx.doi.org/10.1002/jcph.994
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