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Using vaccine Immunostimulation/Immunodynamic modelling methods to inform vaccine dose decision-making.

Authors :
Rhodes SJ
Guedj J
Fletcher HA
Lindenstrøm T
Scriba TJ
Evans TG
Knight GM
White RG
Source :
NPJ vaccines [NPJ Vaccines] 2018 Sep 17; Vol. 3, pp. 36. Date of Electronic Publication: 2018 Sep 17 (Print Publication: 2018).
Publication Year :
2018

Abstract

Unlike drug dose optimisation, mathematical modelling has not been applied to vaccine dose finding. We applied a novel Immunostimulation/Immunodynamic mathematical modelling framework to translate multi-dose TB vaccine immune responses from mice, to predict most immunogenic dose in humans. Data were previously collected on IFN-γ secreting CD4+ T cells over time for novel TB vaccines H56 and H1 adjuvanted with IC31 in mice (1 dose groups (0.1-1.5 and 15 μg H56 + IC31), 45 mice) and humans (1 dose (50 μg H56/H1 + IC31), 18 humans). A two-compartment mathematical model, describing the dynamics of the post-vaccination IFN-γ T cell response, was fitted to mouse and human data, separately, using nonlinear mixed effects methods. We used these fitted models and a vaccine dose allometric scaling assumption, to predict the most immunogenic human dose. Based on the changes in model parameters by mouse H56 + IC31 dose and by varying the H56 dose allometric scaling factor between mouse and humans, we established that, at a late time point (224 days) doses of 0.8-8 μg H56 + IC31 in humans may be the most immunogenic. A 0.8-8 μg of H-series TB vaccines in humans, may be as, or more, immunogenic, as larger doses. The Immunostimulation/Immunodynamic mathematical modelling framework is a novel, and potentially revolutionary tool, to predict most immunogenic vaccine doses, and accelerate vaccine development.<br />Competing Interests: The authors declare no competing interests.

Details

Language :
English
ISSN :
2059-0105
Volume :
3
Database :
MEDLINE
Journal :
NPJ vaccines
Publication Type :
Academic Journal
Accession number :
30245860
Full Text :
https://doi.org/10.1038/s41541-018-0075-3