Cited 0 times in Scipus Cited Count

Longitudinal Outcomes of Severe Asthma: Real-World Evidence of Multidimensional Analyses

Authors
Lee, Y  | Park, Y | Kim, C | Lee, E | Lee, HY | Woo, SD | You, SC | Park, RW  | Park, HS
Citation
The journal of allergy and clinical immunology. In practice, 9(3). : 1285-1294.e1-e6, 2021
Journal Title
The journal of allergy and clinical immunology. In practice
ISSN
2213-21982213-2201
Abstract
Background: There have been few studies assessing long-term outcomes of asthma based on regular follow-up data. Objective: We aimed to demonstrate clinical outcomes of asthma by multidimensional analyses of a long-term real-world database and a prediction model of severe asthma using machine learning. Methods: The database included 567 severe and 1337 nonsevere adult asthmatics, who had been monitored during a follow-up of up to 10 years. We evaluated longitudinal changes in eosinophilic inflammation, lung function, and the annual number of asthma exacerbations (AEs) using a linear mixed effects model. Least absolute shrinkage and selection operator logistic regression was used to develop a prediction model for severe asthma. Model performance was evaluated and validated. Results: Severe asthmatics had higher blood eosinophil (P =.02) and neutrophil (P <.001) counts at baseline than nonsevere asthmatics; blood eosinophil counts showed significantly slower declines in severe asthmatics than nonsevere asthmatics throughout the follow-up (P =.009). Severe asthmatics had a lower level of forced expiratory volume in 1 second (P <.001), which declined faster than nonsevere asthmatics (P =.033). Severe asthmatics showed a higher annual number of severe AEs than nonsevere asthmatics. The prediction model for severe asthma consisted of 17 variables, including novel biomarkers. Conclusions: Severe asthma is a distinct phenotype of asthma with persistent eosinophilia, progressive lung function decline, and frequent severe AEs even on regular asthma medication. We suggest a useful prediction model of severe asthma for research and clinical purposes.
Keywords

MeSH

DOI
10.1016/j.jaip.2020.09.055
PMID
33049391
Appears in Collections:
Journal Papers > School of Medicine / Graduate School of Medicine > Allergy
Journal Papers > School of Medicine / Graduate School of Medicine > Biomedical Informatics
Ajou Authors
박, 래웅  |  박, 해심  |  이, 영수
Files in This Item:
There are no files associated with this item.
Export

qrcode

해당 아이템을 이메일로 공유하기 원하시면 인증을 거치시기 바랍니다.

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

Browse