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SPARSE-MOD stands for SPAtial Resolution-SEnsitive Models of Outbreak Dynamics. Our goal with this R package is to offer a framework for simulating the dynamics of stochastic and spatially-explicit models of infectious disease. As we develop the package, our goal is to add more model structures and more user-control of the model dynamics. Our SPARSEMODr package offers several key features that should make it particularly relevant for pedogogical and practical use. See our COVID-19 model vignette and our SEIR model vignettefor detailed walk-throughs of how to run the model(s), to plot the output, and to simulate customized time-windows.
Spatially explicit models that allow user-defined meta-population characteristics and a customizable dispersal kernel.
Customizable process time-windows: The user
controls how model parameters can vary over time, such as the
transmission rate, or parameters that define the host migration
processes. We have created time_window objects
that allow
users to simulate, for example, time periods over which public health or
conservation interventions are implemented that can affect the contact
rates between hosts or the movement of hosts among populations.
Demographic stochasticity is built-in using a tau-leaping algorithm. This captures the random transmission processes that are important early in outbreaks and especially in small host populations.
Stochastic transmission is also built-in, allowing daily fluctuations in the transmission rate, which can help account for dynamics like super-spreading or super-shedding.
The transmission process can be simulated as frequency-dependent (i.e., contact rates are invariable to population density) or density-dependent (i.e., contact rates depend on population density). For density-dependent transmission, we allow the user to custom-define a (non-)linear relationship between local host density and the transmission rate (see below).
Models are coded in C++ and take advantage of Rcpp for rapid simulation of stochastic model trajectories across many focal populations.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.