Infectious disease transmissionmodels require assumptions about how the pathogen spreads between individuals. These assumptions may be somewhat arbitrary, particularly when it comes to describing how transmission varies between individuals of different types or in different locations, and may in turn lead to incorrect conclusions or policy decisions. We develop a general Bayesian nonparametric framework for transmission modeling that removes the need to make such specific assumptions with regard to the infection process. We use multioutput Gaussian process prior distributions to model different infection rates in populations containing multiple types of individuals. Further challenges arise because the transmission process itself is unobser...
Earlier research has suggested that approximate Bayesian computation (ABC) makes it possible to fit ...
Mathematical modelling has become a useful and commonly-used tool in the analysis of infectious dise...
Likelihood-based inference for disease outbreak data can be very challenging due to the inherent dep...
Infectious disease transmissionmodels require assumptions about how the pathogen spreads between ind...
Simulating from and making inference for stochastic epidemic models are key strategies for understan...
Infectious diseases on farms pose both public and animal health risks, so understanding how they spr...
The vast majority of models for the spread of communicable diseases are parametric in nature and inv...
This thesis is concerned with the development of Bayesian inference approach for the analysis of inf...
For most pathogens, testing procedures can be used to distinguish between different strains with whi...
Abstract Epidemiological parameters for livestock diseases are often inferred from transmission expe...
<div><p>A class of discrete-time models of infectious disease spread, referred to as individual-leve...
Computer simulations play a vital role in the modeling of infectious diseases. Different modeling re...
The study of how transmissible an infectious pathogen is and what its main routes of transmission ar...
Despite intensive ongoing research, key aspects of the spatial-temporal evolution of the 2001 foot a...
Infectious disease often occurs in small, independent outbreaks in populations with varying characte...
Earlier research has suggested that approximate Bayesian computation (ABC) makes it possible to fit ...
Mathematical modelling has become a useful and commonly-used tool in the analysis of infectious dise...
Likelihood-based inference for disease outbreak data can be very challenging due to the inherent dep...
Infectious disease transmissionmodels require assumptions about how the pathogen spreads between ind...
Simulating from and making inference for stochastic epidemic models are key strategies for understan...
Infectious diseases on farms pose both public and animal health risks, so understanding how they spr...
The vast majority of models for the spread of communicable diseases are parametric in nature and inv...
This thesis is concerned with the development of Bayesian inference approach for the analysis of inf...
For most pathogens, testing procedures can be used to distinguish between different strains with whi...
Abstract Epidemiological parameters for livestock diseases are often inferred from transmission expe...
<div><p>A class of discrete-time models of infectious disease spread, referred to as individual-leve...
Computer simulations play a vital role in the modeling of infectious diseases. Different modeling re...
The study of how transmissible an infectious pathogen is and what its main routes of transmission ar...
Despite intensive ongoing research, key aspects of the spatial-temporal evolution of the 2001 foot a...
Infectious disease often occurs in small, independent outbreaks in populations with varying characte...
Earlier research has suggested that approximate Bayesian computation (ABC) makes it possible to fit ...
Mathematical modelling has become a useful and commonly-used tool in the analysis of infectious dise...
Likelihood-based inference for disease outbreak data can be very challenging due to the inherent dep...