352-P: Assessment of a Deep Learning Model Based on Three-Year Longitudinal Electronic Health Record Data for Predicting Severe Hypoglycemia in Patients with Type 2 Diabetes

Background: This study aimed to investigate the ability of a deep learning model to predict the outcome of severe hypoglycemia (SH) using longitudinal electronic medical records data. Methods: Structured data were extracted from the clinical data warehouse, including demographics, laboratory, medica...

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Veröffentlicht in:Diabetes (New York, N.Y.) N.Y.), 2021-06, Vol.70 (Supplement_1)
Hauptverfasser: LEE, GARAM, KO, SEUNG-HYUN, AHN, YU-BAE, LEE, EUN YOUNG, CHA, SEON-AH, KIM, DOKYOON, YUN, JAE-SEUNG
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Sprache:eng
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Zusammenfassung:Background: This study aimed to investigate the ability of a deep learning model to predict the outcome of severe hypoglycemia (SH) using longitudinal electronic medical records data. Methods: Structured data were extracted from the clinical data warehouse, including demographics, laboratory, medications, and diagnostic information. Between January 2010 and December 2012, 17,670 adult patients were enrolled; participants had type 2 diabetes, were aged over 30 years, and visited the diabetes centers of two hospitals. The primary outcome was SH, defined as diagnostic codes for hypoglycemia (E16.x, E11.63, E13.63, E14.63) in hospitalization or emergency room records. The performance of the longitudinal deep learning model (gated recurrent units) in predicting SH was quantified using the area under the receiver operating characteristic curve (AUROC) and evaluated in terms of net reclassification improvement (NRI) versus a traditional logistic regression model. Based on predicted risk of SH, we stratified patients into four risk groups: low (
ISSN:0012-1797
1939-327X
DOI:10.2337/db21-352-P