| Literature DB >> 34210588 |
Dimpalben Patel1, Graham L Hall2, David Broadhurst3, Anne Smith4, André Schultz5, Rachel E Foong6.
Abstract
Asthma is the most common chronic lung disease in childhood. There has been a significant worldwide effort to develop tools/methods to identify children's risk for asthma as early as possible for preventative and early management strategies. Unfortunately, most childhood asthma prediction tools using conventional statistical models have modest accuracy, sensitivity, and positive predictive value. Machine learning is an approach that may improve on conventional models by finding patterns and trends from large and complex datasets. Thus far, few studies have utilized machine learning to predict asthma in children. This review aims to critically assess these studies, describe their limitations, and discuss future directions to move from proof-of-concept to clinical application.Entities:
Keywords: Asthma; Children; Machine learning; Prediction
Mesh:
Year: 2021 PMID: 34210588 DOI: 10.1016/j.prrv.2021.06.002
Source DB: PubMed Journal: Paediatr Respir Rev ISSN: 1526-0542 Impact factor: 2.726