Background: Asthma exacerbations are one of the most common medical reasons for children to be brought to the hospital emergency department (ED). Various prediction models have been proposed to support diagnosis of exacerbations and evaluation of their severity. Objectives: First, to evaluate prediction models constructed from data using machine learning techniques and to select the best performing model. Second, to compare predictions from the selected model with predictions from the Pediatric Respiratory Assessment Measure (PRAM) score, and predictions made by ED physicians. Design: A two-phase study conducted in the ED of an academic pediatric hospital. In phase 1 data collected prospectively using paper forms was used to construct...
Item does not contain fulltextBACKGROUND: Preventing exacerbations of asthma is a major goal in curr...
BACKGROUND: There is uncertainty about the clinical usefulness of currently available asthma predict...
Background: A novel non-invasive asthma prediction tool from the Leicester Cohort, UK, forecasts ast...
Background: Asthma exacerbations are one of the most common medical reasons for children to be broug...
This paper describes the development of a tree-based decision model to predict the severity of pedia...
Background: Asthma is a leading chronic disease among children with nonnegligible numbers of Emergen...
Background: Asthma is one of the most common chronic conditions among children and is the third lead...
This paper describes the development of a tree-based decision model to predict the severity of pedia...
Background: Accurately diagnosing asthma can be challenging. Uncertainty about the best combination...
Background: The inability to objectively diagnose childhood asthma before age five often results in ...
Purpose: The increased incidence of asthma due to rising allergic diseases requires the prevention o...
Background: Preventing exacerbations of asthma is a major goal in current guidelines. We aimed to de...
The paper presents ongoing issues, challenges, and dif-ficulties we face in applying machine learnin...
Background: Pediatric asthma affects 7.1 million American children incurring an annual total direct ...
OBJECTIVES: We aimed to evaluate the seasonal variations of acute asthma presentation in children an...
Item does not contain fulltextBACKGROUND: Preventing exacerbations of asthma is a major goal in curr...
BACKGROUND: There is uncertainty about the clinical usefulness of currently available asthma predict...
Background: A novel non-invasive asthma prediction tool from the Leicester Cohort, UK, forecasts ast...
Background: Asthma exacerbations are one of the most common medical reasons for children to be broug...
This paper describes the development of a tree-based decision model to predict the severity of pedia...
Background: Asthma is a leading chronic disease among children with nonnegligible numbers of Emergen...
Background: Asthma is one of the most common chronic conditions among children and is the third lead...
This paper describes the development of a tree-based decision model to predict the severity of pedia...
Background: Accurately diagnosing asthma can be challenging. Uncertainty about the best combination...
Background: The inability to objectively diagnose childhood asthma before age five often results in ...
Purpose: The increased incidence of asthma due to rising allergic diseases requires the prevention o...
Background: Preventing exacerbations of asthma is a major goal in current guidelines. We aimed to de...
The paper presents ongoing issues, challenges, and dif-ficulties we face in applying machine learnin...
Background: Pediatric asthma affects 7.1 million American children incurring an annual total direct ...
OBJECTIVES: We aimed to evaluate the seasonal variations of acute asthma presentation in children an...
Item does not contain fulltextBACKGROUND: Preventing exacerbations of asthma is a major goal in curr...
BACKGROUND: There is uncertainty about the clinical usefulness of currently available asthma predict...
Background: A novel non-invasive asthma prediction tool from the Leicester Cohort, UK, forecasts ast...