The primary aim of idmodelr
is to serve as an
interactive, R
based, educational resource. For users
interested in learning more, or aiming to conduct more involved analysis
there are a variety of great packages, courses, books and other
resources available. This vignette aims to signpost towards some of
these (focusing on those using R
). Pull requests containing
additional resources and/or pros and cons of current resources are
welcome.
pomp
provides a very general realization of nonlinear
partially-observed Markov processes (AKA nonlinear stochastic dynamical
systems). These are a generalization of linear state-space and hidden
Markov models to nonlinear, non-Gaussian processes in either discrete or
continuous time. In pomp, one can implement a model by specifying its
unobserved process and measurement components; the package uses these
functions in algorithms to simulate, analyse, and fit the model to
data.
pomp
models
may be hard to use with other tools.LibBi is used for state-space modelling and Bayesian inference on high-performance computer hardware, including multi-core CPUs, many-core GPUs (graphics processing units) and distributed-memory clusters. The staple methods of LibBi are based on sequential Monte Carlo (SMC), also known as particle filtering. These methods include particle Markov chain Monte Carlo (PMCMC) and SMC2. Other methods include the extended Kalman filter and some parameter optimisation routines. LibBi consists of a C++ template library, as well as a parser and compiler, written in Perl, for its own modelling language.
Alongside LibBi, RBi
provides an R
interface.
RBi
is under active development.LibBi
itself is no longer under active
development.LibBi
is relatively sparse and there
are few examples of more complex models.odin
implements a high-level language for describing and
implementing ordinary differential equations in R. It provides a “domain
specific language” (DSL) which looks like R but is compiled directly to
C. The actual solution of the differential equations is done with the
deSolve package, giving access to the excellent Livermore solvers
(lsoda, lsode, etc), or with dde for use with delay differential
equations.
odin
does not contain model fitting routines.EpiModel
is an R
package that provides
tools for simulating and analysing mathematical models of infectious
disease dynamics. Supported epidemic model classes include deterministic
compartmental models, stochastic individual contact models, and
stochastic network models. Disease types include SI, SIR, and SIS
epidemics with and without demography, with utilities available for
expansion to construct and simulate epidemic models of arbitrary
complexity.
Run as a two day short course at the University of Bristol, this course aims to cover the basics of infectious disease modelling both for those planning on implementing their own models and those planning to work with modellers. This course focuses on applied, policy relevant, modelling.
Whilst the full course is not available online the course website contains the majority of the course practicals.
The standard reference text on which many undergraduate and Msc. courses have been built. This book deals with infectious diseases in terms of the dynamics of their interaction with host populations. The book combines mathematical models with extensive use of epidemiological and other data. Whilst now a little dated this book is still a great resource for providing a firm introduction to infectious disease modelling.
Another standard reference text. This book provides a comprehensive introduction to the modeling of infectious diseases in humans and animals, focusing on recent developments as well as more traditional approaches. Code is provided for each model introduced and analyses are explained in detail. This book is aimed at readers with some background mathematical and computational knowledge.
This book is designed to be a practical study in infectious disease dynamics. The book offers an easy to follow implementation and analysis of mathematical epidemiology. It focuses on recent case studies in order to explore various conceptual, mathematical, and statistical issues. Whilst light on theory (you may need to supplement this with other resources) this book provides full R code and is accompanied by an R package.
This project aims to collate mathematical models of infectious disease transmission, with implementations in R, Python, and Julia.
It provides user submitted interactive notebooks.