Stochastic analysis of epidemics on adaptive time varying networks

Bhushan Kotnis and Joy Kuri
Phys. Rev. E 87, 062810 – Published 19 June 2013

Abstract

Many studies investigating the effect of human social connectivity structures (networks) and human behavioral adaptations on the spread of infectious diseases have assumed either a static connectivity structure or a network which adapts itself in response to the epidemic (adaptive networks). However, human social connections are inherently dynamic or time varying. Furthermore, the spread of many infectious diseases occur on a time scale comparable to the time scale of the evolving network structure. Here we aim to quantify the effect of human behavioral adaptations on the spread of asymptomatic infectious diseases on time varying networks. We perform a full stochastic analysis using a continuous time Markov chain approach for calculating the outbreak probability, mean epidemic duration, epidemic reemergence probability, etc. Additionally, we use mean-field theory for calculating epidemic thresholds. Theoretical predictions are verified using extensive simulations. Our studies have uncovered the existence of an “adaptive threshold,” i.e., when the ratio of susceptibility (or infectivity) rate to recovery rate is below the threshold value, adaptive behavior can prevent the epidemic. However, if it is above the threshold, no amount of behavioral adaptations can prevent the epidemic. Our analyses suggest that the interaction patterns of the infected population play a major role in sustaining the epidemic. Our results have implications on epidemic containment policies, as awareness campaigns and human behavioral responses can be effective only if the interaction levels of the infected populace are kept in check.

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  • Received 15 March 2013

DOI:https://doi.org/10.1103/PhysRevE.87.062810

©2013 American Physical Society

Authors & Affiliations

Bhushan Kotnis* and Joy Kuri

  • Indian Institute of Science, Department of Electronic Systems Engineering, Bangalore 560012, India

  • *bkotnis@dese.iisc.ernet.in
  • kuri@dese.iisc.ernet.in

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Issue

Vol. 87, Iss. 6 — June 2013

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