A Bayesian approach to the prediction of occurred-but-not-yet-reported events is developed for application in real-time public health surveillance. The motivation was the prediction of the daily number of hospitalizations for the hemolytic-uremic syndrome during the large May-July 2011 outbreak of Shiga toxin-producing Escherichia coli (STEC) O104:H4 in Germany. Our novel Bayesian approach addresses the count data nature of the problem using negative binomial sampling and shows that right-truncation of the reporting delay distribution under an assumption of time-homogeneity can be handled in a conjugate prior-posterior framework using the generalized Dirichlet distribution. Since, in retrospect, the true number of hospitalizations is availa...
When an outbreak of an infectious disease occurs, public health officials need to understand the dyn...
Since the beginning of 2020, the outbreak of a new strain of Coronavirus has caused hundreds of thou...
Infectious disease surveillance is key to limiting the consequences from infectious pathogens and ma...
A Bayesian approach to the prediction of occurred-but-not-yet-reported events is developed for appli...
The real-time analysis of infectious disease surveillance data is essential in obtaining situational...
Timeliness of a public health surveillance system is one of its most important characteristics. The ...
Background: Timeliness of a public health surveillance system (SS) is one of its most important cha...
BACKGROUND: Fast changes in human demographics worldwide, coupled with increased mobility, and modif...
Data pertaining to influenza and influenza-like illnesses (ILI) are being used in the United States ...
Since the beginning of 2020, the outbreak of a new strain of Coronavirus has caused hundreds of thou...
• This paper reviews different approaches for determining the epidemic period from influenza surveil...
Since the beginning of 2020, the outbreak of a new strain of Coronavirus has caused hundreds of thou...
During an infectious disease outbreak, timely information on the number of new symptomatic cases is ...
Fast changes in human demographics worldwide, coupled with increased mobility, and modified land use...
This paper introduces a method of surveillance using deviations from probabilistic forecasts. Realis...
When an outbreak of an infectious disease occurs, public health officials need to understand the dyn...
Since the beginning of 2020, the outbreak of a new strain of Coronavirus has caused hundreds of thou...
Infectious disease surveillance is key to limiting the consequences from infectious pathogens and ma...
A Bayesian approach to the prediction of occurred-but-not-yet-reported events is developed for appli...
The real-time analysis of infectious disease surveillance data is essential in obtaining situational...
Timeliness of a public health surveillance system is one of its most important characteristics. The ...
Background: Timeliness of a public health surveillance system (SS) is one of its most important cha...
BACKGROUND: Fast changes in human demographics worldwide, coupled with increased mobility, and modif...
Data pertaining to influenza and influenza-like illnesses (ILI) are being used in the United States ...
Since the beginning of 2020, the outbreak of a new strain of Coronavirus has caused hundreds of thou...
• This paper reviews different approaches for determining the epidemic period from influenza surveil...
Since the beginning of 2020, the outbreak of a new strain of Coronavirus has caused hundreds of thou...
During an infectious disease outbreak, timely information on the number of new symptomatic cases is ...
Fast changes in human demographics worldwide, coupled with increased mobility, and modified land use...
This paper introduces a method of surveillance using deviations from probabilistic forecasts. Realis...
When an outbreak of an infectious disease occurs, public health officials need to understand the dyn...
Since the beginning of 2020, the outbreak of a new strain of Coronavirus has caused hundreds of thou...
Infectious disease surveillance is key to limiting the consequences from infectious pathogens and ma...