Information available in ED reports has the potential to improve detection of syndromic diseases. Our goal is to provide a machine-learning model characterized by improved predictive accuracy of influenza syndrome. Seven machine-learning algorithms (K2-BN, NB, EBMC, SVM, LR, ANN, RF) for the construction of models were used. Our dataset correspond to 40853 ED cases (67% training, 33% testing). The measurements used were AUROC, calibration and statistical significance testing. The results show high AUROCs with no significant difference between the algorithms and the expert model. EBMC is the most general algorithms
A large number of emerging infectious diseases (including influenza epidemics) has been identified d...
Background: The purpose of syndromic surveillance is early detection of a disease outbreak. Such sys...
Background: The purpose of syndromic surveillance is early detection of a disease outbreak. Such sys...
Influenza is a yearly recurrent disease that has the potential to become a pandemic. An effective bi...
AbstractInfluenza is a yearly recurrent disease that has the potential to become a pandemic. An effe...
Background: Seasonal influenza poses a significant risk, and patients can benefit from early diagnos...
AbstractOutbreaks of infectious disease can pose a significant threat to human health. Thus, detecti...
This paper describes a probabilistic case detection system (CDS) that uses a Bayesian network model ...
OBJECTIVES:This study evaluates the accuracy and transferability of Bayesian case detection systems ...
<div><p>Objectives</p><p>This study evaluates the accuracy and transferability of Bayesian case dete...
AbstractOutbreaks of infectious disease can pose a significant threat to human health. Thus, detecti...
The prediction and characterization of outbreaks of infectious diseases such as influenza remains an...
A large number of emerging infectious diseases (including influenza epidemics) has been identified d...
AbstractCough is a defensive system of the respiratory track that might be deliberate or reflex. It ...
A large number of emerging infectious diseases (including influenza epidemics) has been identified d...
A large number of emerging infectious diseases (including influenza epidemics) has been identified d...
Background: The purpose of syndromic surveillance is early detection of a disease outbreak. Such sys...
Background: The purpose of syndromic surveillance is early detection of a disease outbreak. Such sys...
Influenza is a yearly recurrent disease that has the potential to become a pandemic. An effective bi...
AbstractInfluenza is a yearly recurrent disease that has the potential to become a pandemic. An effe...
Background: Seasonal influenza poses a significant risk, and patients can benefit from early diagnos...
AbstractOutbreaks of infectious disease can pose a significant threat to human health. Thus, detecti...
This paper describes a probabilistic case detection system (CDS) that uses a Bayesian network model ...
OBJECTIVES:This study evaluates the accuracy and transferability of Bayesian case detection systems ...
<div><p>Objectives</p><p>This study evaluates the accuracy and transferability of Bayesian case dete...
AbstractOutbreaks of infectious disease can pose a significant threat to human health. Thus, detecti...
The prediction and characterization of outbreaks of infectious diseases such as influenza remains an...
A large number of emerging infectious diseases (including influenza epidemics) has been identified d...
AbstractCough is a defensive system of the respiratory track that might be deliberate or reflex. It ...
A large number of emerging infectious diseases (including influenza epidemics) has been identified d...
A large number of emerging infectious diseases (including influenza epidemics) has been identified d...
Background: The purpose of syndromic surveillance is early detection of a disease outbreak. Such sys...
Background: The purpose of syndromic surveillance is early detection of a disease outbreak. Such sys...