Background: Previous attempts to predict bacteremia have focused on selecting significant variables. However, these approaches have had limitations such as poor reproducibility in prediction accuracy and inconsistency in predictor selection. Here we propose a Bayesian approach to predict bacteremia based on the statistical distributions of clinical variables of previous patients, which has recently become possible through the adoption of electronic medical records. Methods: In a derivation cohort, Bayesian prediction models were derived and their discriminative performance was compared with previous models under varying combinations of predictors. Then the Bayesian models were prospectively tested in a validation cohort. According to Bayesi...
The data set consists of 14,691 observations from different patients with the clinical suspicion to ...
Background Urinary tract infection (UTI) is a leading cause of hospital admissions and is diagnos...
Background: To our knowledge, no reliable clinical prediction rule (CPR) for identifying bacteremia ...
Background: Bacteraemia is a frequent and severe condition with a high mortality rate. Despite profo...
Early detection of bacteremia is important to prevent antibiotic abuse. Therefore, we aimed to devel...
AbstractBacteraemia is associated with high mortality. Although many models for predicting bacteraem...
OBJECTIVE: Many studies have described constructing a prediction model for bacteremia in community-a...
ObjectiveThe objective of this study was to externally validate a clinical prediction rule (CPR)—the...
BackgroundUseful predictive models for identifying patients at high risk of bacteremia at the emerge...
Abstract Bloodstream infections (BSI) are a main cause of infectious disease morbidity and mortality...
Background. Prediction of bloodstream infection at the time of sepsis onset allows one to make appro...
Bacteraemia is a life-threating condition requiring immediate diagnostic and therapeutic actions. Bl...
Background The bacteraemia prediction is relevant because sepsis is one of the most important cause...
OBJECTIVE: The objective of this study was to validate a previously published clinical decision rule...
Objective: To develop and validate a model for the prediction of bacteremia in hospitalized patients...
The data set consists of 14,691 observations from different patients with the clinical suspicion to ...
Background Urinary tract infection (UTI) is a leading cause of hospital admissions and is diagnos...
Background: To our knowledge, no reliable clinical prediction rule (CPR) for identifying bacteremia ...
Background: Bacteraemia is a frequent and severe condition with a high mortality rate. Despite profo...
Early detection of bacteremia is important to prevent antibiotic abuse. Therefore, we aimed to devel...
AbstractBacteraemia is associated with high mortality. Although many models for predicting bacteraem...
OBJECTIVE: Many studies have described constructing a prediction model for bacteremia in community-a...
ObjectiveThe objective of this study was to externally validate a clinical prediction rule (CPR)—the...
BackgroundUseful predictive models for identifying patients at high risk of bacteremia at the emerge...
Abstract Bloodstream infections (BSI) are a main cause of infectious disease morbidity and mortality...
Background. Prediction of bloodstream infection at the time of sepsis onset allows one to make appro...
Bacteraemia is a life-threating condition requiring immediate diagnostic and therapeutic actions. Bl...
Background The bacteraemia prediction is relevant because sepsis is one of the most important cause...
OBJECTIVE: The objective of this study was to validate a previously published clinical decision rule...
Objective: To develop and validate a model for the prediction of bacteremia in hospitalized patients...
The data set consists of 14,691 observations from different patients with the clinical suspicion to ...
Background Urinary tract infection (UTI) is a leading cause of hospital admissions and is diagnos...
Background: To our knowledge, no reliable clinical prediction rule (CPR) for identifying bacteremia ...