Journal article
Bayesian additive regression trees for predicting childhood asthma in the CHILD cohort study
Abstract
BackgroundAsthma is a heterogeneous disease that affects millions of children and adults. There is a lack of objective gold standard diagnosis that spans the ages; instead, diagnoses are made by clinician assessment based on a cluster of signs, symptoms and objective tests dependent on age. Yet, there is a clear morbidity associated with chronic asthma symptoms. Machine learning has become a popular tool to improve asthma diagnosis and …
Authors
Ahmadiankalati M; Boury H; Subbarao P; Lou W; Lu Z
Journal
BMC Medical Research Methodology, Vol. 24, No. 1,
Publisher
Springer Nature
DOI
10.1186/s12874-024-02376-2
ISSN
1471-2288