In this work we propose the adoption of a statistical framework used in the evaluation of forensic evidence as a tool for evaluating and presenting circumstantial "evidence" of a disease outbreak from syndromic surveillance. The basic idea is to exploit the predicted distributions of reported cases to calculate the ratio of the likelihood of observing n cases given an ongoing outbreak over the likelihood of observing n cases given no outbreak. The likelihood ratio defines the Value of Evidence (V). Using Bayes' rule, the prior odds for an ongoing outbreak are multiplied by V to obtain the posterior odds. This approach was applied to time series on the number of horses showing clinical respiratory symptoms or neurological symptoms. The separ...
AbstractOutbreaks of infectious disease can pose a significant threat to human health. Thus, detecti...
Upon engineering a Bayesian network for the early detection of Classical Swine Fever in pigs, we fou...
Bayesian modeling of unknown causes of events is an important and pervasive problem. However, it has...
In this work we propose the adoption of a statistical framework used in the evaluation of forensic e...
<div><p>In this work we propose the adoption of a statistical framework used in the evaluation of fo...
In this work we propose the adoption of a statistical framework used in the evaluation of forensic e...
Quality decision making in public health and animal health surveillance relies on addressing the cha...
A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring t...
A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring t...
Emerging vector-borne diseases are a growing concern, especially for horse populations, which are at...
Emerging vector-borne diseases are a growing concern, especially for horse populations, which are at...
There are numerous situations in which it is important to determine whether a particular disease of ...
<div><p>There are numerous situations in which it is important to determine whether a particular dis...
When an outbreak of an infectious disease occurs, public health officials need to understand the dyn...
BACKGROUND: Fast changes in human demographics worldwide, coupled with increased mobility, and modif...
AbstractOutbreaks of infectious disease can pose a significant threat to human health. Thus, detecti...
Upon engineering a Bayesian network for the early detection of Classical Swine Fever in pigs, we fou...
Bayesian modeling of unknown causes of events is an important and pervasive problem. However, it has...
In this work we propose the adoption of a statistical framework used in the evaluation of forensic e...
<div><p>In this work we propose the adoption of a statistical framework used in the evaluation of fo...
In this work we propose the adoption of a statistical framework used in the evaluation of forensic e...
Quality decision making in public health and animal health surveillance relies on addressing the cha...
A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring t...
A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring t...
Emerging vector-borne diseases are a growing concern, especially for horse populations, which are at...
Emerging vector-borne diseases are a growing concern, especially for horse populations, which are at...
There are numerous situations in which it is important to determine whether a particular disease of ...
<div><p>There are numerous situations in which it is important to determine whether a particular dis...
When an outbreak of an infectious disease occurs, public health officials need to understand the dyn...
BACKGROUND: Fast changes in human demographics worldwide, coupled with increased mobility, and modif...
AbstractOutbreaks of infectious disease can pose a significant threat to human health. Thus, detecti...
Upon engineering a Bayesian network for the early detection of Classical Swine Fever in pigs, we fou...
Bayesian modeling of unknown causes of events is an important and pervasive problem. However, it has...