For daily syndromic surveillance to be effective, an efficient and sensible algorithm would be expected to detect aberrations in influenza illness, and alert public health workers prior to any impending epidemic. This detection or alert surely contains uncertainty, and thus should be evaluated with a proper probabilistic measure. However, traditional monitoring mechanisms simply provide a binary alert, failing to adequately address this uncertainty. Methods and Findings: Based on the Bayesian posterior probability of influenza-like illness (ILI) visits, the intensity of outbreak can be directly assessed. The numbers of daily emergency room ILI visits at five community hospitals in Taipei City during 2006-2007 were collected and fitted with ...
Timely monitoring and prediction of the trajectory of seasonal influenza epidemics allows hospitals ...
Timeliness of a public health surveillance system is one of its most important characteristics. The ...
In Australia diagnostic data from medical practitioners and laboratories for over 60 different notif...
For daily syndromic surveillance to be effective, an efficient and sensible algorithm would be expec...
BACKGROUND: For daily syndromic surveillance to be effective, an efficient and sensible algorithm wo...
[[abstract]]Background: For daily syndromic surveillance to be effective, an efficient and sensible ...
To develop a statistical tool for characterizing multiple influenza surveillance data for situationa...
Data pertaining to influenza and influenza-like illnesses (ILI) are being used in the United States ...
This paper introduces a method of surveillance using deviations from probabilistic forecasts. Realis...
Timely detection of the seasonal influenza epidemic is important for public health action. We introd...
Epidemic outbreak detection is an important problem in public health and the development of reliable...
• This paper reviews different approaches for determining the epidemic period from influenza surveil...
The early detection of outbreaks of diseases is one of the most challenging objectives of epi-demiol...
In this thesis, we present a statistical method for detecting influenza epidemics. First, we use a h...
Incorporating prior knowledge (e.g., the spatial distribution of zip codes and background population...
Timely monitoring and prediction of the trajectory of seasonal influenza epidemics allows hospitals ...
Timeliness of a public health surveillance system is one of its most important characteristics. The ...
In Australia diagnostic data from medical practitioners and laboratories for over 60 different notif...
For daily syndromic surveillance to be effective, an efficient and sensible algorithm would be expec...
BACKGROUND: For daily syndromic surveillance to be effective, an efficient and sensible algorithm wo...
[[abstract]]Background: For daily syndromic surveillance to be effective, an efficient and sensible ...
To develop a statistical tool for characterizing multiple influenza surveillance data for situationa...
Data pertaining to influenza and influenza-like illnesses (ILI) are being used in the United States ...
This paper introduces a method of surveillance using deviations from probabilistic forecasts. Realis...
Timely detection of the seasonal influenza epidemic is important for public health action. We introd...
Epidemic outbreak detection is an important problem in public health and the development of reliable...
• This paper reviews different approaches for determining the epidemic period from influenza surveil...
The early detection of outbreaks of diseases is one of the most challenging objectives of epi-demiol...
In this thesis, we present a statistical method for detecting influenza epidemics. First, we use a h...
Incorporating prior knowledge (e.g., the spatial distribution of zip codes and background population...
Timely monitoring and prediction of the trajectory of seasonal influenza epidemics allows hospitals ...
Timeliness of a public health surveillance system is one of its most important characteristics. The ...
In Australia diagnostic data from medical practitioners and laboratories for over 60 different notif...