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Modeling and Simulation of the Pharmacokinetics and Target Engagement of an Antagonist Monoclonal Antibody to Interferon‐γ–Induced Protein 10, BMS‐986184, in Healthy Participants to Guide Therapeutic Dosing

BMS‐986184 is a human, second‐generation, anti–interferon‐γ–induced protein 10 (IP‐10) monoclonal antibody. In this study the pharmacokinetics and target engagement (TE) of BMS‐986184 in healthy participants were characterized using population‐based target‐mediated drug disposition (TMDD) modeling a...

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Autores principales: Cai, Weiguo, Leil, Tarek A., Gibiansky, Leonid, Krishna, Murli, Zhang, Hongwei, Gu, Huidong, Sun, Huadong, Throup, John, Banerjee, Subhashis, Girgis, Ihab
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7496395/
https://www.ncbi.nlm.nih.gov/pubmed/32068354
http://dx.doi.org/10.1002/cpdd.784
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author Cai, Weiguo
Leil, Tarek A.
Gibiansky, Leonid
Krishna, Murli
Zhang, Hongwei
Gu, Huidong
Sun, Huadong
Throup, John
Banerjee, Subhashis
Girgis, Ihab
author_facet Cai, Weiguo
Leil, Tarek A.
Gibiansky, Leonid
Krishna, Murli
Zhang, Hongwei
Gu, Huidong
Sun, Huadong
Throup, John
Banerjee, Subhashis
Girgis, Ihab
author_sort Cai, Weiguo
collection PubMed
description BMS‐986184 is a human, second‐generation, anti–interferon‐γ–induced protein 10 (IP‐10) monoclonal antibody. In this study the pharmacokinetics and target engagement (TE) of BMS‐986184 in healthy participants were characterized using population‐based target‐mediated drug disposition (TMDD) modeling and data from a first‐in‐human study (NCT02864264). The results of the first‐in‐human study and the model generated were used to conduct stochastic simulations of a virtual population of healthy participants to predict pharmacokinetic exposures and TE responses for different dosage regimens. A 2‐compartment, 2‐target, TMDD structural model, assuming quasi‐steady‐state and stimulated production on treatment, was developed by simultaneous fitting of the total drug, serum‐free IP‐10, and serum total IP‐10 concentration data, with the second unobservable target contribution to drug elimination described by the Michaelis‐Menten elimination term. Model evaluation confirmed agreement between model predictions and observed data. Simulation of a virtual population of healthy individuals demonstrated that steady state was reached at the eighth dosing interval, and that around 150 mg subcutaneously every other week could be a suitable target dosage regimen for future clinical trials. Integrated modeling strategies such as this can be used to help guide rational clinical trial development of drugs with TMDD, leading to improved dose selection and greater patient benefits.
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spelling pubmed-74963952020-09-25 Modeling and Simulation of the Pharmacokinetics and Target Engagement of an Antagonist Monoclonal Antibody to Interferon‐γ–Induced Protein 10, BMS‐986184, in Healthy Participants to Guide Therapeutic Dosing Cai, Weiguo Leil, Tarek A. Gibiansky, Leonid Krishna, Murli Zhang, Hongwei Gu, Huidong Sun, Huadong Throup, John Banerjee, Subhashis Girgis, Ihab Clin Pharmacol Drug Dev Articles BMS‐986184 is a human, second‐generation, anti–interferon‐γ–induced protein 10 (IP‐10) monoclonal antibody. In this study the pharmacokinetics and target engagement (TE) of BMS‐986184 in healthy participants were characterized using population‐based target‐mediated drug disposition (TMDD) modeling and data from a first‐in‐human study (NCT02864264). The results of the first‐in‐human study and the model generated were used to conduct stochastic simulations of a virtual population of healthy participants to predict pharmacokinetic exposures and TE responses for different dosage regimens. A 2‐compartment, 2‐target, TMDD structural model, assuming quasi‐steady‐state and stimulated production on treatment, was developed by simultaneous fitting of the total drug, serum‐free IP‐10, and serum total IP‐10 concentration data, with the second unobservable target contribution to drug elimination described by the Michaelis‐Menten elimination term. Model evaluation confirmed agreement between model predictions and observed data. Simulation of a virtual population of healthy individuals demonstrated that steady state was reached at the eighth dosing interval, and that around 150 mg subcutaneously every other week could be a suitable target dosage regimen for future clinical trials. Integrated modeling strategies such as this can be used to help guide rational clinical trial development of drugs with TMDD, leading to improved dose selection and greater patient benefits. John Wiley and Sons Inc. 2020-02-18 2020 /pmc/articles/PMC7496395/ /pubmed/32068354 http://dx.doi.org/10.1002/cpdd.784 Text en © 2020 Bristol‐Myers Squibb Company. Clinical Pharmacology in Drug Development published by Wiley Periodicals, Inc. on behalf of American College of Clinical Pharmacology This is an open access article under the terms of the 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 Articles
Cai, Weiguo
Leil, Tarek A.
Gibiansky, Leonid
Krishna, Murli
Zhang, Hongwei
Gu, Huidong
Sun, Huadong
Throup, John
Banerjee, Subhashis
Girgis, Ihab
Modeling and Simulation of the Pharmacokinetics and Target Engagement of an Antagonist Monoclonal Antibody to Interferon‐γ–Induced Protein 10, BMS‐986184, in Healthy Participants to Guide Therapeutic Dosing
title Modeling and Simulation of the Pharmacokinetics and Target Engagement of an Antagonist Monoclonal Antibody to Interferon‐γ–Induced Protein 10, BMS‐986184, in Healthy Participants to Guide Therapeutic Dosing
title_full Modeling and Simulation of the Pharmacokinetics and Target Engagement of an Antagonist Monoclonal Antibody to Interferon‐γ–Induced Protein 10, BMS‐986184, in Healthy Participants to Guide Therapeutic Dosing
title_fullStr Modeling and Simulation of the Pharmacokinetics and Target Engagement of an Antagonist Monoclonal Antibody to Interferon‐γ–Induced Protein 10, BMS‐986184, in Healthy Participants to Guide Therapeutic Dosing
title_full_unstemmed Modeling and Simulation of the Pharmacokinetics and Target Engagement of an Antagonist Monoclonal Antibody to Interferon‐γ–Induced Protein 10, BMS‐986184, in Healthy Participants to Guide Therapeutic Dosing
title_short Modeling and Simulation of the Pharmacokinetics and Target Engagement of an Antagonist Monoclonal Antibody to Interferon‐γ–Induced Protein 10, BMS‐986184, in Healthy Participants to Guide Therapeutic Dosing
title_sort modeling and simulation of the pharmacokinetics and target engagement of an antagonist monoclonal antibody to interferon‐γ–induced protein 10, bms‐986184, in healthy participants to guide therapeutic dosing
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7496395/
https://www.ncbi.nlm.nih.gov/pubmed/32068354
http://dx.doi.org/10.1002/cpdd.784
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