Statistical Analysis of an SEIR Epidemic Model


Autoria(s): Ndanguza Rusatsi, Denis
Data(s)

08/06/2009

08/06/2009

2009

Resumo

This thesis was focussed on statistical analysis methods and proposes the use of Bayesian inference to extract information contained in experimental data by estimating Ebola model parameters. The model is a system of differential equations expressing the behavior and dynamics of Ebola. Two sets of data (onset and death data) were both used to estimate parameters, which has not been done by previous researchers in (Chowell, 2004). To be able to use both data, a new version of the model has been built. Model parameters have been estimated and then used to calculate the basic reproduction number and to study the disease-free equilibrium. Estimates of the parameters were useful to determine how well the model fits the data and how good estimates were, in terms of the information they provided about the possible relationship between variables. The solution showed that Ebola model fits the observed onset data at 98.95% and the observed death data at 93.6%. Since Bayesian inference can not be performed analytically, the Markov chain Monte Carlo approach has been used to generate samples from the posterior distribution over parameters. Samples have been used to check the accuracy of the model and other characteristics of the target posteriors.

Identificador

http://www.doria.fi/handle/10024/45432

URN:NBN:fi-fe200902101169

Idioma(s)

en

Palavras-Chave #model solution #analysis #estimates #Markov Chain Monte Carlo #posterior distribution
Tipo

Pro gradu

Pro gradu thesis