OBJECTIVE: To determine the diagnostic performance of a Bayesian Decision-Support System (BDSS) for ventilator-associated pneumonia (VAP). DESIGN: A previously developed BDSS, automatically obtaining patient data from patient information systems, provides likelihood predictions of VAP. In a prospectively studied cohort of 872 ICU patients, VAP was diagnosed by two infectious-disease specialists using a decision tree (reference diagnosis). After internal validation daily BDSS predictions were compared with the reference diagnosis. For data analysis two approaches were pursued: using BDSS predictions (a) for all 9422 patient days, and (b) only for the 238 days with presumed respiratory tract infections (RTI) according to the responsible physi...
The aim was to provide global experts ranking on priorities in diagnostic tools for VAP in clinical ...
Treating ventilator-associated pneumonia in me-chanically ventilated patients in intensive care unit...
Respiratory dysfunction and failure are common in the intensive care unit (ICU); they are often the ...
OBJECTIVE: To determine the diagnostic performance of a Bayesian Decision-Support System (BDSS) for ...
Background: We previously validated a Bayesian network (BN) model for diagnosing ventilator-associat...
The purpose of the research described in this thesis was to develop Bayesian network models for the ...
The purpose of the research described in this thesis was to develop Bayesian network models for the ...
Diagnosing ventilator-associated pneumonia in mechanically ventilated patients in intensive care uni...
Objective: Appropriate antimicrobial treatment of infections in critically ill patients should be st...
Background: In busy clinical settings, physicians often do not have enough time to identify patients...
The medical community is presently in a state of transition from a situation dominated by the paper ...
Abstract Purpose: Existing expert systems have not improved the diagnostic accuracy of ventilator-a...
Contains fulltext : 76095.pdf (publisher's version ) (Closed access)10 p
AbstractWe compared the performance of expert-crafted rules, a Bayesian network, and a decision tree...
BACKGROUND: Community-acquired pneumonia (CAP) is one of the leading causes of morbidity and mortali...
The aim was to provide global experts ranking on priorities in diagnostic tools for VAP in clinical ...
Treating ventilator-associated pneumonia in me-chanically ventilated patients in intensive care unit...
Respiratory dysfunction and failure are common in the intensive care unit (ICU); they are often the ...
OBJECTIVE: To determine the diagnostic performance of a Bayesian Decision-Support System (BDSS) for ...
Background: We previously validated a Bayesian network (BN) model for diagnosing ventilator-associat...
The purpose of the research described in this thesis was to develop Bayesian network models for the ...
The purpose of the research described in this thesis was to develop Bayesian network models for the ...
Diagnosing ventilator-associated pneumonia in mechanically ventilated patients in intensive care uni...
Objective: Appropriate antimicrobial treatment of infections in critically ill patients should be st...
Background: In busy clinical settings, physicians often do not have enough time to identify patients...
The medical community is presently in a state of transition from a situation dominated by the paper ...
Abstract Purpose: Existing expert systems have not improved the diagnostic accuracy of ventilator-a...
Contains fulltext : 76095.pdf (publisher's version ) (Closed access)10 p
AbstractWe compared the performance of expert-crafted rules, a Bayesian network, and a decision tree...
BACKGROUND: Community-acquired pneumonia (CAP) is one of the leading causes of morbidity and mortali...
The aim was to provide global experts ranking on priorities in diagnostic tools for VAP in clinical ...
Treating ventilator-associated pneumonia in me-chanically ventilated patients in intensive care unit...
Respiratory dysfunction and failure are common in the intensive care unit (ICU); they are often the ...