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Simple
Models of Influenza Progression within a Heterogeneous Population
> This paper has been published in the June 2007 issue of Operations Research and has been removed from this site.
by Richard
C. Larson, Center for Engineering Systems Fundamentals, Engineering
Systems Division, and Department of Civil and Environmental
Engineering, MIT
December
2006
Abstract
The focus of this
‘OR framing paper’ is to introduce the OR community
to the need for new mathematical modeling of an influenza
pandemic and its control. By reviewing relevant history and
literature, one key concern that emerges relates to how a
population’s heterogeneity may affect disease progression.
Another is to explore within a modeling framework ‘social
distancing’ as a disease progression control method,
where social distancing refers to steps aimed at reducing
the frequency and intensity of daily human to human contacts.
To depict social contact behavior of a heterogeneous population
susceptible to infection, a non-homogeneous probabilistic
mixing model is developed. Partitioning the population of
susceptibles into subgroups, based on frequency of daily human
contacts and infection propensities, a stylistic difference
equation model is then developed depicting the day-to-day
evolution of the disease. This simple model is then used to
develop a preliminary set of results. Two key findings are
(1) early exponential growth of the disease may be dominated
by susceptibles with high human contact frequencies and may
not be indicative of the general population’s susceptibility
to the disease; and (2) social distancing may be an effective
non-medical way to limit and perhaps even eradicate the disease.
Much more decision-focused research needs to be done before
any of these preliminary findings may be used in practice.
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