Compartmental Modeling: an influenza epidemic

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Compartmental Modeling: an influenza epidemic AiS Challenge Summer Teacher Institute 2003 Richard Allen

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Page 1: Compartmental Modeling:        an influenza epidemic

Compartmental Modeling: an influenza epidemic

AiS Challenge Summer Teacher Institute

2003Richard Allen

Page 2: Compartmental Modeling:        an influenza epidemic

Compartment Modeling

Compartment systems provide a systematic way of modeling physical and biological processes.In the modeling process, a problem is broken up into a collection of connected “black boxes” or “pools”, called compartments. A compartment is defined by a characteristic material (chemical species, biological entity) occupying a given volume.

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Compartment Modeling

A compartment system is usually open; it exchanges material with its environment

I

k01 k02

k21

k12

q1 q2

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Applications

Water pollution

Nuclear decay

Chemical kinetics

Population migration

Pharmacokinetics

Epidemiology

Economics – water resource management

Medicine Metabolism of

iodine and other metabolites

Potassium transport in heart muscle

Insulin-glucose kinetics

Lipoprotein kinetics

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Discrete Model: time line

q0 q1 q2 q3 … qn |---------|----------|------- --|---------------|---> t0 t1 t2 t3 … tn

t0, t1, t2, … are equally spaced times at which the variable Y is determined: dt = t1 – t0 = t2 – t1 = … .

q0, q1, q2, … are values of the variable Y at times t0, t1, t2, … .

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SIS Epidemic Model

Sj+1 = Sj + dt*[- a*Sj*Ij + b*Ij]

Ij+1 = Ij + dt*[+a* Sj*Ij - b* Ij]

tj+1 = tj + dt

t0, S0 and I0 given

S IInfectedsSusceptibles

a*S*I

b*S

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SIR Epidemic model

Sj+1 = Sj + dt*[+U - c *Sj*Ij - d *Sj]

Ij+1 = Ij + dt*[+c*Sj*Ij - d*Ij - e*Ij]

Rj+1 = Rj + dt*[+e*Ij - d*Rj]

tj+1 = tj + dt; t0, S0, I0, and R0 given

S RInfectedsSusceptibleI

Recovered

U

Infectedc*S*I

d d d

e*I

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Flu Epidemic in a Boarding School

In 1978, a study was conducted and reported in British Medical Journal (3/4/78) of an outbreak of the flu virus in a boy’s boarding school.

The school had a population of 763 boys; of these 512 were confined to bed during the epidemic, which lasted from 1/22/78 until 2/4/78. One infected boy initiated the epidemic.

At the outbreak, none of the boys had previously had flu, so no resistance was present.

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Flu Epidemic (cont.)

Our epidemic model uses the1927 Kermack-McKendrick SIR model: 3 compartments – Sus-ceptibles (S), Infecteds (I), and Recovereds (R)

Once infected and recovered, a patient has immunity, hence can’t re-enter the susceptible or infected group.

A constant population is assumed, no immigration into or emigration out of the school.

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Flu Epidemic (cont.)

Let the infection rate, inf = 0.00218 per day, and the removal rate, rec = 0.5 per day - average infectious period of 2 days.

S RInfecteds

ISusceptibles RecoveredsInfedteds

inf*S*I rem*I S I R

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Flu Epidemic (cont.)

Model equations

Sj+1 = Sj + dt*inf*Sj*IjIj+1 = Ij + dt*[inf*Sj*Ij – rec*Ij]Rj+1 = Rj + dt*rec*IjS0 = 762, I0 = 1, R0 = 0inf = 0.00218, rec = 0.5

S RInfectedsSusceptible

IRecoveredInfected

Inf*S*I rem*I

epidemicmodel

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Possible Extensions

Examine the impact of vaccinating students prior to the start of the epidemic. Assume 10% of the susceptible boys are vac-

cinated each day – some getting the shot while the epidemic is happening in order not to get sick (instant immunity).

Experiment with the 10% rate to determine how it changes the intensity and duration of the epidemic.

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References

http://www.sph.umich.edu/geomed/mods/compart/

http://www.shodor.org/master/

http://www.sph.umich.edu/geomed/mods/compart/docjacquez/node1.html