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Dynamics of Single-City Influenza with Seasonal Forcing: From Regularity to Chaos
Author(s) -
John H. M. Thornley,
J. France
Publication year - 2012
Publication title -
isrn biomathematics
Language(s) - English
Resource type - Journals
ISSN - 2090-7702
DOI - 10.5402/2012/471653
Subject(s) - outbreak , seasonal influenza , forcing (mathematics) , basic reproduction number , influenza a virus subtype h5n1 , representation (politics) , disease , biology , demography , climatology , econometrics , geography , infectious disease (medical specialty) , virology , virus , mathematics , environmental health , medicine , covid-19 , population , pathology , sociology , politics , political science , law , geology
Seasonal and epidemic influenza continue to cause concern, reinforced by connections between human and avian influenza, and H1N1 swine influenza. Models summarize ideas about disease mechanisms, help understand contributions of different processes, and explore interventions. A compartment model of single-city influenza is developed. It is mechanism-based on lower-level studies, rather than focussing on predictions. It is deterministic, without non-disease-status stratification. Categories represented are susceptible, infected, sick, hospitalized, asymptomatic, dead from flu, recovered, and one in which recovered individuals lose immunity. Most categories are represented with sequential pools with first-order kinetics, giving gamma-function progressions with realistic dynamics. A virus compartment allows representation of environmental effects on virus lifetime, thence affecting reproductive ratio. The model's behaviour is explored. It is validated without significant tuning against data on a school outbreak. Seasonal forcing causes a variety of regular and chaotic behaviours, some being typical of seasonal and epidemic flu. It is suggested that models use sequential stages for appropriate disease categories because this is biologically realistic, and authentic dynamics is required if predictions are to be credible. Seasonality is important indicating that control measures might usefully take account of expected weather.

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