This paper describes the development of a tree-based decision model to predict the severity of pediatric asthma exacerbations in the emergency department (ED) at 2 h following triage. The model was constructed from retrospective patient data abstracted from the ED charts. The original data was preprocessed to eliminate questionable patient records and to normalize values of age-dependent clinical attributes. The model uses attributes routinely collected in the ED and provides predictions even for incomplete observations. Its performance was verified on independent validating data (split-sample validation) where it demonstrated AUC (area under ROC curve) of 0.83, sensitivity of 84%, specificity of 71% and the Brier score of 0.18. The model i...
Background: Acute asthma is one of the most common medical emergencies in children. Appropriate asse...
Community-level approaches for pediatric asthma management rely on locally collected information der...
The severity of the course of bronchial asthma depends on many factors. Clinical and laboratory stud...
This paper describes the development of a tree-based decision model to predict the severity of pedia...
The paper presents ongoing issues, challenges, and dif-ficulties we face in applying machine learnin...
Background: Asthma exacerbations are one of the most common medical reasons for children to be broug...
Purpose: The increased incidence of asthma due to rising allergic diseases requires the prevention o...
Background: Accurately diagnosing asthma can be challenging. Uncertainty about the best combination...
Background: Asthma is a leading chronic disease among children with nonnegligible numbers of Emergen...
An important application of predictive data mining in clinical medicine is predicting the dispositio...
Background: Asthma exacerbations are one of the most common medical reasons for children to be broug...
Background: Preventing exacerbations of asthma is a major goal in current guidelines. We aimed to de...
Abstract- Data mining helps end users extract valuable information from large databases. In medical ...
Preventing exacerbations of asthma is a major goal in current guidelines. We aimed to develop a pred...
textThe identification of asthma patients most at risk of experiencing an emergency department event...
Background: Acute asthma is one of the most common medical emergencies in children. Appropriate asse...
Community-level approaches for pediatric asthma management rely on locally collected information der...
The severity of the course of bronchial asthma depends on many factors. Clinical and laboratory stud...
This paper describes the development of a tree-based decision model to predict the severity of pedia...
The paper presents ongoing issues, challenges, and dif-ficulties we face in applying machine learnin...
Background: Asthma exacerbations are one of the most common medical reasons for children to be broug...
Purpose: The increased incidence of asthma due to rising allergic diseases requires the prevention o...
Background: Accurately diagnosing asthma can be challenging. Uncertainty about the best combination...
Background: Asthma is a leading chronic disease among children with nonnegligible numbers of Emergen...
An important application of predictive data mining in clinical medicine is predicting the dispositio...
Background: Asthma exacerbations are one of the most common medical reasons for children to be broug...
Background: Preventing exacerbations of asthma is a major goal in current guidelines. We aimed to de...
Abstract- Data mining helps end users extract valuable information from large databases. In medical ...
Preventing exacerbations of asthma is a major goal in current guidelines. We aimed to develop a pred...
textThe identification of asthma patients most at risk of experiencing an emergency department event...
Background: Acute asthma is one of the most common medical emergencies in children. Appropriate asse...
Community-level approaches for pediatric asthma management rely on locally collected information der...
The severity of the course of bronchial asthma depends on many factors. Clinical and laboratory stud...