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A drug‐disease model for predicting survival in an Ebola outbreak

REGN‐EB3 (Inmazeb) is a cocktail of three human monoclonal antibodies approved for treatment of Ebola infection. This paper describes development of a mathematical model linking REGN‐EB3’s inhibition of Ebola virus to survival in a non‐human primate (NHP) model, and translational scaling to predict...

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Autores principales: Toroghi, Masood Khaksar, Al‐Huniti, Nidal, Davis, John D., DiCioccio, A. Thomas, Rippley, Ronda, Baum, Alina, Kyratsous, Christos A., Sivapalasingam, Sumathi, Kantrowitz, Joel, Kamal, Mohamed A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9579403/
https://www.ncbi.nlm.nih.gov/pubmed/35895082
http://dx.doi.org/10.1111/cts.13383
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author Toroghi, Masood Khaksar
Al‐Huniti, Nidal
Davis, John D.
DiCioccio, A. Thomas
Rippley, Ronda
Baum, Alina
Kyratsous, Christos A.
Sivapalasingam, Sumathi
Kantrowitz, Joel
Kamal, Mohamed A.
author_facet Toroghi, Masood Khaksar
Al‐Huniti, Nidal
Davis, John D.
DiCioccio, A. Thomas
Rippley, Ronda
Baum, Alina
Kyratsous, Christos A.
Sivapalasingam, Sumathi
Kantrowitz, Joel
Kamal, Mohamed A.
author_sort Toroghi, Masood Khaksar
collection PubMed
description REGN‐EB3 (Inmazeb) is a cocktail of three human monoclonal antibodies approved for treatment of Ebola infection. This paper describes development of a mathematical model linking REGN‐EB3’s inhibition of Ebola virus to survival in a non‐human primate (NHP) model, and translational scaling to predict survival in humans. Pharmacokinetic/pharmacodynamic data from single‐ and multiple‐dose REGN‐EB3 studies in infected rhesus macaques were incorporated. Using discrete indirect response models, the antiviral mechanism of action was used as a forcing function to drive the reversal of key Ebola disease hallmarks over time, for example, liver and kidney damage (elevated alanine [ALT] and aspartate aminotransferases [AST], blood urea nitrogen [BUN], and creatinine), and hemorrhage (decreased platelet count). A composite disease characteristic function was introduced to describe disease severity and integrated with the ordinary differential equations estimating the time course of clinical biomarkers. Model simulation results appropriately represented the concentration‐dependence of the magnitude and time course of Ebola infection (viral and pathophysiological), including time course of viral load, ALT and AST elevations, platelet count, creatinine, and BUN. The model estimated the observed survival rate in rhesus macaques and the dose of REGN‐EB3 required for saturation of the pharmacodynamic effects of viral inhibition, reversal of Ebola pathophysiology, and survival. The model also predicted survival in clinical trials with appropriate scaling to humans. This mathematical investigation demonstrates that drug‐disease modeling can be an important translational tool to integrate preclinical data from an NHP model recapitulating disease progression to guide future translation of preclinical data to clinical study design.
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spelling pubmed-95794032022-10-19 A drug‐disease model for predicting survival in an Ebola outbreak Toroghi, Masood Khaksar Al‐Huniti, Nidal Davis, John D. DiCioccio, A. Thomas Rippley, Ronda Baum, Alina Kyratsous, Christos A. Sivapalasingam, Sumathi Kantrowitz, Joel Kamal, Mohamed A. Clin Transl Sci Research REGN‐EB3 (Inmazeb) is a cocktail of three human monoclonal antibodies approved for treatment of Ebola infection. This paper describes development of a mathematical model linking REGN‐EB3’s inhibition of Ebola virus to survival in a non‐human primate (NHP) model, and translational scaling to predict survival in humans. Pharmacokinetic/pharmacodynamic data from single‐ and multiple‐dose REGN‐EB3 studies in infected rhesus macaques were incorporated. Using discrete indirect response models, the antiviral mechanism of action was used as a forcing function to drive the reversal of key Ebola disease hallmarks over time, for example, liver and kidney damage (elevated alanine [ALT] and aspartate aminotransferases [AST], blood urea nitrogen [BUN], and creatinine), and hemorrhage (decreased platelet count). A composite disease characteristic function was introduced to describe disease severity and integrated with the ordinary differential equations estimating the time course of clinical biomarkers. Model simulation results appropriately represented the concentration‐dependence of the magnitude and time course of Ebola infection (viral and pathophysiological), including time course of viral load, ALT and AST elevations, platelet count, creatinine, and BUN. The model estimated the observed survival rate in rhesus macaques and the dose of REGN‐EB3 required for saturation of the pharmacodynamic effects of viral inhibition, reversal of Ebola pathophysiology, and survival. The model also predicted survival in clinical trials with appropriate scaling to humans. This mathematical investigation demonstrates that drug‐disease modeling can be an important translational tool to integrate preclinical data from an NHP model recapitulating disease progression to guide future translation of preclinical data to clinical study design. John Wiley and Sons Inc. 2022-08-17 2022-10 /pmc/articles/PMC9579403/ /pubmed/35895082 http://dx.doi.org/10.1111/cts.13383 Text en © 2022 Regeneron Pharmaceuticals. Clinical and Translational Science published by Wiley Periodicals LLC on behalf of American Society for Clinical Pharmacology and Therapeutics. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Research
Toroghi, Masood Khaksar
Al‐Huniti, Nidal
Davis, John D.
DiCioccio, A. Thomas
Rippley, Ronda
Baum, Alina
Kyratsous, Christos A.
Sivapalasingam, Sumathi
Kantrowitz, Joel
Kamal, Mohamed A.
A drug‐disease model for predicting survival in an Ebola outbreak
title A drug‐disease model for predicting survival in an Ebola outbreak
title_full A drug‐disease model for predicting survival in an Ebola outbreak
title_fullStr A drug‐disease model for predicting survival in an Ebola outbreak
title_full_unstemmed A drug‐disease model for predicting survival in an Ebola outbreak
title_short A drug‐disease model for predicting survival in an Ebola outbreak
title_sort drug‐disease model for predicting survival in an ebola outbreak
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9579403/
https://www.ncbi.nlm.nih.gov/pubmed/35895082
http://dx.doi.org/10.1111/cts.13383
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