simulate_idsurveillance_ode {DSAIDE} | R Documentation |
Simulation of a compartmental infectious disease transmission model illustrating the impact of ID surveillance
Description
This model allows for the exploration of the impact of ID surveillance on transmission dynamics
Usage
simulate_idsurveillance_ode(
S = 1000,
P = 1,
tmax = 200,
bP = 0,
bA = 0,
bI = 0.001,
gP = 0.5,
f = 0,
d = 0,
w = 0,
m = 0,
n = 0,
rP = 0,
rA = 0,
rI = 0.5
)
Arguments
S |
: initial number of susceptible hosts : numeric |
P |
: initial number of infected pre-symptomatic hosts : numeric |
tmax |
: maximum simulation time : numeric |
bP |
: rate of transmission from presymptomatic to susceptible host : numeric |
bA |
: rate of transmission from asymptomatic to susceptible host : numeric |
bI |
: rate of transmission from symptomatic to susceptible host : numeric |
gP |
: the rate at which presymptomatic hosts move to the next stage : numeric |
f |
: fraction of asymptomatic hosts : numeric |
d |
: rate at which infected hosts die : numeric |
w |
: the rate at which host immunity wanes : numeric |
m |
: the rate of births : numeric |
n |
: the rate of natural deaths : numeric |
rP |
: rate of pre-symptomatic host removal due to surveillance : numeric |
rA |
: rate of asymptomatic host removal due to surveillance : numeric |
rI |
: rate of symptomatic host removal due to surveillance : numeric |
Details
A compartmental ID model with several states/compartments is simulated as a set of ordinary differential equations. The function returns the output from the odesolver as a matrix, with one column per compartment/variable. The first column is time.
Value
This function returns the simulation result as obtained from a call to the deSolve ode solver.
Warning
This function does not perform any error checking. So if you try to do something nonsensical (e.g. negative values or fractions > 1), the code will likely abort with an error message.
Author(s)
Andreas Handel, Ronald Galiwango
See Also
The UI of the app 'Parasite Model', which is part of the DSAIDE package, contains more details.
Examples
# To run the simulation with default parameters just call the function:
result <- simulate_idsurveillance_ode()
# To choose parameter values other than the standard one,
# specify the parameters you want to change, e.g. like such:
result <- simulate_idsurveillance_ode(S = 2000, tmax = 100, f = 0.5)
# You should then use the simulation result returned from the function, like this:
plot(result$ts[ , "time"],result$ts[ , "S"],xlab='Time',ylab='Number Susceptible',type='l')