Mathematical epidemiological models have a broad use, including both qualitative and quantitative applications. With the increasing availability of data, large-scale quantitative disease spread models can nowadays be formulated. Such models have a great potential, e.g., in risk assessments in public health. Their main challenge is model parameterization given surveillance data, a problem which often limits their practical usage. We offer a solution to this problem by developing a Bayesian methodology suitable to epidemiological models driven by network data. The greatest difficulty in obtaining a concentrated parameter posterior is the quality of surveillance data; disease measurements are often scarce and carry little information about the...
Control programmes against non-regulated infectious diseases of farm animals are widely implemented....
Mathematical modelling has become a useful and commonly-used tool in the analysis of infectious dise...
Abstract Probabilistic reasoning under uncertainty suits well to analysis of disease dynamics. The ...
Mathematical epidemiological models have a broad use, including both qualitative and quantitative ap...
Mathematical and computational epidemiological models are important tools in efforts to combat the s...
Computer simulations play a vital role in the modeling of infectious diseases. Different modeling re...
Quality decision making in public health and animal health surveillance relies on addressing the cha...
Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes,...
Disease monitoring plays a crucial role in the implementation of public health measures. The demogra...
Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes,...
This thesis is concerned with the development of Bayesian inference approach for the analysis of inf...
In an effort to provide regional decision support for the public healthcare, we design a data-driven...
Bayesian network analysis is a form of probabilistic modeling which derives from empirical data a di...
Regression models are the standard approaches used in infectious disease epidemiology, but have limi...
Early, reliable detection of disease outbreaks is a critical problem today. This paper reports an in...
Control programmes against non-regulated infectious diseases of farm animals are widely implemented....
Mathematical modelling has become a useful and commonly-used tool in the analysis of infectious dise...
Abstract Probabilistic reasoning under uncertainty suits well to analysis of disease dynamics. The ...
Mathematical epidemiological models have a broad use, including both qualitative and quantitative ap...
Mathematical and computational epidemiological models are important tools in efforts to combat the s...
Computer simulations play a vital role in the modeling of infectious diseases. Different modeling re...
Quality decision making in public health and animal health surveillance relies on addressing the cha...
Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes,...
Disease monitoring plays a crucial role in the implementation of public health measures. The demogra...
Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes,...
This thesis is concerned with the development of Bayesian inference approach for the analysis of inf...
In an effort to provide regional decision support for the public healthcare, we design a data-driven...
Bayesian network analysis is a form of probabilistic modeling which derives from empirical data a di...
Regression models are the standard approaches used in infectious disease epidemiology, but have limi...
Early, reliable detection of disease outbreaks is a critical problem today. This paper reports an in...
Control programmes against non-regulated infectious diseases of farm animals are widely implemented....
Mathematical modelling has become a useful and commonly-used tool in the analysis of infectious dise...
Abstract Probabilistic reasoning under uncertainty suits well to analysis of disease dynamics. The ...