Document details

Expanding vaccine efficacy estimation with dynamic models fitted to cross-sectional prevalence data post-licensure

Author(s): Gjini, Erida ; Gomes, M. Gabriela M.

Date: 2016

Persistent ID: http://hdl.handle.net/10400.7/565

Origin: ARCA - Access to Research and Communication Annals

Subject(s): Vaccination model; Strain replacement; Co-infection; Competition; ODE parameter inference


Description

The efficacy of vaccines is typically estimated prior to implementation, on the basis of randomized controlled trials. This does not preclude, however, subsequent assessment post-licensure, while mass-immunization and nonlinear transmission feedbacks are in place. In this paper we show how cross-sectional prevalence data post-vaccination can be interpreted in terms of pathogen transmission processes and vaccine parameters, using a dynamic epidemiological model. We advocate the use of such frameworks for model-based vaccine evaluation in the field, fitting trajectories of cross-sectional prevalence of pathogen strains before and after intervention. Using SI and SIS models, we illustrate how prevalence ratios in vaccinated and non-vaccinated hosts depend on true vaccine efficacy, the absolute and relative strength of competition between target and non-target strains, the time post follow-up, and transmission intensity. We argue that a mechanistic approach should be added to vaccine efficacy estimation against multi-type pathogens, because it naturally accounts for inter-strain competition and indirect effects, leading to a robust measure of individual protection per contact. Our study calls for systematic attention to epidemiological feedbacks when interpreting population level impact. At a broader level, our parameter estimation procedure provides a promising proof of principle for a generalizable framework to infer vaccine efficacy post-licensure.

Document Type Journal article
Language English
Contributor(s) ARCA
CC Licence
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