ArXiv TLDR

Epidemic Extinction in a Continuous SIRS Model with Vaccination

🐦 Tweet
2604.27312

Germano Hartmann Brill, Pablo Enrique Jurado Silvestrin, Sebastian Gonçalves

q-bio.PEphysics.soc-ph

TLDR

This paper studies epidemic extinction in a continuous SIRS model with vaccination, highlighting limitations of continuous models for fade-out.

Key contributions

  • Examines epidemic extinction in a continuous SIRS model with time-dependent vaccination.
  • Analyzes how infection, recovery, and immunity loss rates impact epidemic dynamics.
  • Identifies limitations of continuous models for accurately describing epidemic fade-out.
  • Suggests incorporating stochasticity for more realistic extinction predictions.

Why it matters

This work is crucial for understanding epidemic extinction, a key public health challenge. It highlights continuous models' limitations in predicting fade-out, advocating for stochasticity to develop more realistic disease control strategies.

Original Abstract

Epidemics have shaped human history, often with devastating consequences, motivating the development of mathematical models to understand and control their dynamics. Among the many aspects of epidemic behavior, the conditions that lead to epidemic extinction stand out as a central-if not the fundamental-question in epidemic modeling. In this work, we study epidemic extinction in a continuous SIRS (Susceptible-Infected-Recovered-Susceptible) model governed by a system of ordinary differential equations (ODEs). The model includes vaccination as a time-dependent process and considers the reinfection of recovered individuals through waning immunity. We analyze how different parameter regimes -- particularly infection, recovery, and immunity loss rates -- affect the persistence or extinction of the epidemic. Special attention is given to the limitations of continuous population models, in which the infected fraction can fall below the equivalent of a single individual, leading to nonphysical outcomes such as unrealistically long persistence or artificial secondary peaks. By comparing the continuous SIRS dynamics with expected real-world thresholds for extinction, we highlight the importance of incorporating stochasticity or discrete effects to accurately describe epidemic fade-out.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.