Abstract Background Respiratory symptoms are common in early life and often transient. It is difficult to identify in which children these will persist and result in asthma. Machine learning (ML) approaches have the potential for better predictive performance and generalisability over existing childhood asthma prediction models. This study applied ML approaches to predict school‐age asthma (age 10) in early life (Childhood Asthma Prediction in Early life, CAPE model) and at preschool age (Childhood Asthma Prediction at Preschool age, CAPP model). Methods Clinical and environmental exposure data was collected from children enrolled in the Isle of Wight Birth Cohort (N = 1368, ∼15% asthma prevalence). Recursive Feature Elimination (RFE) ident...
Background: In Europe, allergic diseases are the most common chronic childhood illnesses and the res...
It is difficult to distinguish at preschool age whether a wheezing child will or will not have asthm...
Background: A number of models based on clinical parameters have been used for the prediction of ast...
BACKGROUND: Respiratory symptoms are common in early life and often transient. It is difficult to id...
Early childhood asthma diagnosis is common; however, many children diagnosed before age 5 experience...
Among modern methods of statistical and computational analysis, the application of machine learning ...
Background: The inability to objectively diagnose childhood asthma before age five often results in ...
OBJECTIVE: Asthma is the most frequent chronic airway illness in preschool children and is difficult...
Early identification of children at risk of developing asthma at school age is crucial, but the usef...
The paper presents ongoing issues, challenges, and dif-ficulties we face in applying machine learnin...
Since preschool wheezing is the common expression of several heterogeneous disorders, identification...
Objectives. In this study a new method for asthma outcome prediction, which is based on Principal Co...
Copyright © the authors 2018. Several studies have established tools to forecast asthma but their cl...
Dataset to support University of Southampton Doctoral Thesis "Development of childhood asthma p...
Abstract Background Chronic respiratory symptoms involving bronchitis, cough and phlegm in children ...
Background: In Europe, allergic diseases are the most common chronic childhood illnesses and the res...
It is difficult to distinguish at preschool age whether a wheezing child will or will not have asthm...
Background: A number of models based on clinical parameters have been used for the prediction of ast...
BACKGROUND: Respiratory symptoms are common in early life and often transient. It is difficult to id...
Early childhood asthma diagnosis is common; however, many children diagnosed before age 5 experience...
Among modern methods of statistical and computational analysis, the application of machine learning ...
Background: The inability to objectively diagnose childhood asthma before age five often results in ...
OBJECTIVE: Asthma is the most frequent chronic airway illness in preschool children and is difficult...
Early identification of children at risk of developing asthma at school age is crucial, but the usef...
The paper presents ongoing issues, challenges, and dif-ficulties we face in applying machine learnin...
Since preschool wheezing is the common expression of several heterogeneous disorders, identification...
Objectives. In this study a new method for asthma outcome prediction, which is based on Principal Co...
Copyright © the authors 2018. Several studies have established tools to forecast asthma but their cl...
Dataset to support University of Southampton Doctoral Thesis "Development of childhood asthma p...
Abstract Background Chronic respiratory symptoms involving bronchitis, cough and phlegm in children ...
Background: In Europe, allergic diseases are the most common chronic childhood illnesses and the res...
It is difficult to distinguish at preschool age whether a wheezing child will or will not have asthm...
Background: A number of models based on clinical parameters have been used for the prediction of ast...