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Calibration and Validation of a Mechanistic COVID‐19 Model for Translational Quantitative Systems Pharmacology – A Proof‐of‐Concept Model Development for Remdesivir.

Authors :
Samieegohar, Mohammadreza
Weaver, James L.
Howard, Kristina E.
Chaturbedi, Anik
Mann, John
Han, Xiaomei
Zirkle, Joel
Arabidarrehdor, Ghazal
Rouse, Rodney
Florian, Jeffry
Strauss, David G.
Li, Zhihua
Source :
Clinical Pharmacology & Therapeutics; Oct2022, Vol. 112 Issue 4, p882-891, 10p
Publication Year :
2022

Abstract

With the ongoing global pandemic of coronavirus disease 2019 (COVID‐19), there is an urgent need to accelerate the traditional drug development process. Many studies identified potential COVID‐19 therapies based on promising nonclinical data. However, the poor translatability from nonclinical to clinical settings has led to failures of many of these drug candidates in the clinical phase. In this study, we propose a mechanism‐based, quantitative framework to translate nonclinical findings to clinical outcome. Adopting a modularized approach, this framework includes an in silico disease model for COVID‐19 (virus infection and human immune responses) and a pharmacological component for COVID‐19 therapies. The disease model was able to reproduce important longitudinal clinical data for patients with mild and severe COVID‐19, including viral titer, key immunological cytokines, antibody responses, and time courses of lymphopenia. Using remdesivir as a proof‐of‐concept example of model development for the pharmacological component, we developed a pharmacological model that describes the conversion of intravenously administered remdesivir as a prodrug to its active metabolite nucleoside triphosphate through intracellular metabolism and connected it to the COVID‐19 disease model. After being calibrated with the placebo arm data, our model was independently and quantitatively able to predict the primary endpoint (time to recovery) of the remdesivir clinical study, Adaptive Covid‐19 Clinical Trial (ACTT). Our work demonstrates the possibility of quantitatively predicting clinical outcome based on nonclinical data and mechanistic understanding of the disease and provides a modularized framework to aid in candidate drug selection and clinical trial design for COVID‐19 therapeutics. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00099236
Volume :
112
Issue :
4
Database :
Complementary Index
Journal :
Clinical Pharmacology & Therapeutics
Publication Type :
Academic Journal
Accession number :
159062630
Full Text :
https://doi.org/10.1002/cpt.2686