Special Issue: Epidemic and disease models

Guest Editors

Prof. Sereno Denis
Institut de Recherche pour le Développement (IRD), Montpellier, France
Email: denis.sereno@ird.fr


Prof. Cadot Emmanuelle
Institut de Recherche pour le Développement (IRD), Montpellier, France
Email: emmanuelle.cadot@ird.fr

Manuscript Topics

This special issue will delve into epidemic mathematical modeling issues considering changing environmental conditions, including climatic, social, and societal ones. Infectious disease models are used to understand the spread of a disease through populations. Modeling complex interactions has become increasingly important in informing effective public health strategies and interventions as global health threats evolve and emerge. Mathematical modeling, data analysis, and computational techniques can uncover novel insights and develop robust solutions to mitigate the impacts of infectious diseases while simultaneously addressing the underlying social and environmental factors that drive disparities in health outcomes. The special issue will primarily focus on vector-borne infections of zoonotic origin and aim to document mathematical models and numerical solutions to surpass common scientific knowledge. We invite scientific papers, opinion, and review addressing all aspects related to epidemic and modeling of vector-borne diseases.


Instructions for authors
https://www.aimspress.com/mbe/news/solo-detail/instructionsforauthors
Please submit your manuscript to online submission system
https://aimspress.jams.pub/

Paper Submission

All manuscripts will be peer-reviewed before their acceptance for publication. The deadline for manuscript submission is 30 January 2024

Published Papers({{count}})

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