A stochastic discrete time version of the susceptible-infected-recovered model for infectious diseases is developed. Disease is transmitted within and between communities when infected and susceptible individuals interact. Markov chain Monte Carlo methods are used to make inference about these unobserved populations and the unknown parameters of interest. The algorithm is designed specifically for modelling time series of reported measles cases although it can be adapted for other infectious diseases with permanent immunity. The application to observed measles incidence series motivates extensions to incorporate age structure as well as spatial epidemic coupling between communities
We consider a continuous-time Markov chain model of SIR disease dynamics with two levels of mixing. ...
The analysis of infectious disease data is usually complicated by the fact that real life epidemics ...
We present a novel way to model the spread of a multi-strain epidemic in a population as well as an ...
A stochastic discrete time version of the susceptible-infected-recovered model for infectious diseas...
A simple stochastic mathematical model is developed and investigated for the dynamics of measles ep...
A stochastic epidemic model is proposed which incorporates heterogeneity in the spread of a disease ...
Epidemic dynamics pose a great challenge to stochastic modelling because chance events are major det...
We propose a stochastic model for the analysis of time series of disease counts as collected in typi...
Stochastic epidemic models describe the dynamics of an epidemic as a disease spreads through a popul...
A stochastic epidemic model is proposed which incorporates heterogeneity in the spread of a disease ...
To forecast the time dynamics of an epidemic,we propose a discrete stochastic model that unifies an...
Before the development of mass-vaccination campaigns. measles exhibited persistent fluctuations (end...
Presentation given at the Southern Georgia Mathematics Conference. Abstract Booklet According to the...
Recently, mathematical models are used to describe epidemic disease spread. Epidemic disease transmi...
A key issue in the dynamical modelling of epidemics is the synthesis of complex mathematical models ...
We consider a continuous-time Markov chain model of SIR disease dynamics with two levels of mixing. ...
The analysis of infectious disease data is usually complicated by the fact that real life epidemics ...
We present a novel way to model the spread of a multi-strain epidemic in a population as well as an ...
A stochastic discrete time version of the susceptible-infected-recovered model for infectious diseas...
A simple stochastic mathematical model is developed and investigated for the dynamics of measles ep...
A stochastic epidemic model is proposed which incorporates heterogeneity in the spread of a disease ...
Epidemic dynamics pose a great challenge to stochastic modelling because chance events are major det...
We propose a stochastic model for the analysis of time series of disease counts as collected in typi...
Stochastic epidemic models describe the dynamics of an epidemic as a disease spreads through a popul...
A stochastic epidemic model is proposed which incorporates heterogeneity in the spread of a disease ...
To forecast the time dynamics of an epidemic,we propose a discrete stochastic model that unifies an...
Before the development of mass-vaccination campaigns. measles exhibited persistent fluctuations (end...
Presentation given at the Southern Georgia Mathematics Conference. Abstract Booklet According to the...
Recently, mathematical models are used to describe epidemic disease spread. Epidemic disease transmi...
A key issue in the dynamical modelling of epidemics is the synthesis of complex mathematical models ...
We consider a continuous-time Markov chain model of SIR disease dynamics with two levels of mixing. ...
The analysis of infectious disease data is usually complicated by the fact that real life epidemics ...
We present a novel way to model the spread of a multi-strain epidemic in a population as well as an ...