Early, reliable detection of disease outbreaks is a critical problem today. This paper reports an investigation of the use of causal Bayesian networks to model spatio-temporal patterns of a non-contagious disease (respiratory anthrax infection) in a population of people. The number of parameters in such a network can become enormous, if not carefully managed. Also, inference needs to be performed in real time as population data stream in. We describe techniques we have applied to address both the modeling and inference challenges. A key contribution of this paper is the explication of assumptions and techniques that are sufficient to allow the scalin
AbstractObjectiveTo develop a probabilistic model for discovering and quantifying determinants of ou...
Epidemic outbreak detection is an important problem in public health and the development of reliable...
Background COVID-19 is a new multi-organ disease, caused by the SARS-CoV-2 virus, resulting in consi...
Bayesian modeling of unknown causes of events is an important and pervasive problem. However, it has...
Abstract Probabilistic reasoning under uncertainty suits well to analysis of disease dynamics. The ...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Upon engineering a Bayesian network for the early detection of Classical Swine Fever in pigs, we fou...
Regression models are the standard approaches used in infectious disease epidemiology, but have limi...
AbstractThe goals of automated biosurveillance systems are to detect disease outbreaks early, while ...
Mathematical epidemiological models have a broad use, including both qualitative and quantitative ap...
A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring t...
Over the past decade, outbreaks of new or reemergent viruses such as severe acute respiratory syndro...
In recent years, emerging computational algorithms have revolusionised the application of sophistica...
A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring t...
The spatial epidemic dynamics of COVID-19 outbreak in Italy were modelled by means of an Object-Orie...
AbstractObjectiveTo develop a probabilistic model for discovering and quantifying determinants of ou...
Epidemic outbreak detection is an important problem in public health and the development of reliable...
Background COVID-19 is a new multi-organ disease, caused by the SARS-CoV-2 virus, resulting in consi...
Bayesian modeling of unknown causes of events is an important and pervasive problem. However, it has...
Abstract Probabilistic reasoning under uncertainty suits well to analysis of disease dynamics. The ...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
Upon engineering a Bayesian network for the early detection of Classical Swine Fever in pigs, we fou...
Regression models are the standard approaches used in infectious disease epidemiology, but have limi...
AbstractThe goals of automated biosurveillance systems are to detect disease outbreaks early, while ...
Mathematical epidemiological models have a broad use, including both qualitative and quantitative ap...
A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring t...
Over the past decade, outbreaks of new or reemergent viruses such as severe acute respiratory syndro...
In recent years, emerging computational algorithms have revolusionised the application of sophistica...
A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring t...
The spatial epidemic dynamics of COVID-19 outbreak in Italy were modelled by means of an Object-Orie...
AbstractObjectiveTo develop a probabilistic model for discovering and quantifying determinants of ou...
Epidemic outbreak detection is an important problem in public health and the development of reliable...
Background COVID-19 is a new multi-organ disease, caused by the SARS-CoV-2 virus, resulting in consi...