Application of Data-Driven Approaches for Identifying Asthmatic Children with Suboptimal Asthma Care

Methods Among 6,901 children aged 5-17 years receiving primary care at Mayo Clinic Rochester, we identified those requiring asthma care and categorized them into 3 groups by utilizing data-mining tools such as a natural language processing algorithm: 1) Persistent asthmatics enrolled in Asthma Manag...

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Veröffentlicht in:Journal of allergy and clinical immunology 2017-02, Vol.139 (2), p.AB102-AB102
Hauptverfasser: Ryu, Euijung, PhD, Wi, Chung-Il, MD, Sohn, Sunghwan, PhD, Moon, Sungrim, PhD, Liu, Hongfang, PhD, Green, Joy A., APRN, CNP, Ihrke, Kathy D., RN, Unterborn, Rhonda G, Wheeler, Philip H, Juhn, Young J., MD, MPH
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Sprache:eng
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Zusammenfassung:Methods Among 6,901 children aged 5-17 years receiving primary care at Mayo Clinic Rochester, we identified those requiring asthma care and categorized them into 3 groups by utilizing data-mining tools such as a natural language processing algorithm: 1) Persistent asthmatics enrolled in Asthma Management Program (AMP) (Group1); 2) persistent asthmatics not enrolled in AMP (Group2); and 3) children who met predetermined asthma criteria (PAC) without asthma diagnosis (Group 3).
ISSN:0091-6749
1097-6825
DOI:10.1016/j.jaci.2016.12.333