Expert artificial intelligence-based natural language processing characterises childhood asthma. Issue 1 (4th February 2020)
- Record Type:
- Journal Article
- Title:
- Expert artificial intelligence-based natural language processing characterises childhood asthma. Issue 1 (4th February 2020)
- Main Title:
- Expert artificial intelligence-based natural language processing characterises childhood asthma
- Authors:
- Seol, Hee Yun
Rolfes, Mary C
Chung, Wi
Sohn, Sunghwan
Ryu, Euijung
Park, Miguel A
Kita, Hirohito
Ono, Junya
Croghan, Ivana
Armasu, Sebastian M
Castro-Rodriguez, Jose A
Weston, Jill D
Liu, Hongfang
Juhn, Young - Abstract:
- Abstract : Introduction: The lack of effective, consistent, reproducible and efficient asthma ascertainment methods results in inconsistent asthma cohorts and study results for clinical trials or other studies. We aimed to assess whether application of expert artificial intelligence (AI)-based natural language processing (NLP) algorithms for two existing asthma criteria to electronic health records of a paediatric population systematically identifies childhood asthma and its subgroups with distinctive characteristics. Methods: Using the 1997–2007 Olmsted County Birth Cohort, we applied validated NLP algorithms for Predetermined Asthma Criteria (NLP-PAC) as well as Asthma Predictive Index (NLP-API). We categorised subjects into four groups (both criteria positive (NLP-PAC + /NLP-API + ); PAC positive only (NLP-PAC + only); API positive only (NLP-API + only); and both criteria negative (NLP-PAC − /NLP-API − )) and characterised them. Results were replicated in unsupervised cluster analysis for asthmatics and a random sample of 300 children using laboratory and pulmonary function tests (PFTs). Results: Of the 8196 subjects (51% male, 80% white), we identified 1614 (20%), NLP-PAC + /NLP-API + ; 954 (12%), NLP-PAC + only; 105 (1%), NLP-API + only; and 5523 (67%), NLP-PAC − /NLP-API − . Asthmatic children classified as NLP-PAC + /NLP-API + showed earlier onset asthma, more Th2-high profile, poorer lung function, higher asthma exacerbation and higher risk of asthma-associatedAbstract : Introduction: The lack of effective, consistent, reproducible and efficient asthma ascertainment methods results in inconsistent asthma cohorts and study results for clinical trials or other studies. We aimed to assess whether application of expert artificial intelligence (AI)-based natural language processing (NLP) algorithms for two existing asthma criteria to electronic health records of a paediatric population systematically identifies childhood asthma and its subgroups with distinctive characteristics. Methods: Using the 1997–2007 Olmsted County Birth Cohort, we applied validated NLP algorithms for Predetermined Asthma Criteria (NLP-PAC) as well as Asthma Predictive Index (NLP-API). We categorised subjects into four groups (both criteria positive (NLP-PAC + /NLP-API + ); PAC positive only (NLP-PAC + only); API positive only (NLP-API + only); and both criteria negative (NLP-PAC − /NLP-API − )) and characterised them. Results were replicated in unsupervised cluster analysis for asthmatics and a random sample of 300 children using laboratory and pulmonary function tests (PFTs). Results: Of the 8196 subjects (51% male, 80% white), we identified 1614 (20%), NLP-PAC + /NLP-API + ; 954 (12%), NLP-PAC + only; 105 (1%), NLP-API + only; and 5523 (67%), NLP-PAC − /NLP-API − . Asthmatic children classified as NLP-PAC + /NLP-API + showed earlier onset asthma, more Th2-high profile, poorer lung function, higher asthma exacerbation and higher risk of asthma-associated comorbidities compared with other groups. These results were consistent with those based on unsupervised cluster analysis and lab and PFT data of a random sample of study subjects. Conclusion: Expert AI-based NLP algorithms for two asthma criteria systematically identify childhood asthma with distinctive characteristics. This approach may improve precision, reproducibility, consistency and efficiency of large-scale clinical studies for asthma and enable population management. … (more)
- Is Part Of:
- BMJ open respiratory research. Volume 7:Issue 1(2020)
- Journal:
- BMJ open respiratory research
- Issue:
- Volume 7:Issue 1(2020)
- Issue Display:
- Volume 7, Issue 1 (2020)
- Year:
- 2020
- Volume:
- 7
- Issue:
- 1
- Issue Sort Value:
- 2020-0007-0001-0000
- Page Start:
- Page End:
- Publication Date:
- 2020-02-04
- Subjects:
- asthma -- asthma epidemiology -- paediatric asthma
Respiratory organs -- Diseases -- Periodicals
Respiratory organs -- Diseases -- Treatment -- Periodicals
Respiratory therapy -- Periodicals
616.2005 - Journal URLs:
- http://www.bmj.com/archive ↗
http://bmjopenrespres.bmj.com/content/by/year ↗ - DOI:
- 10.1136/bmjresp-2019-000524 ↗
- Languages:
- English
- ISSNs:
- 2052-4439
- Deposit Type:
- Legaldeposit
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