Fasting Blood Glucose and COVID-19 Severity: Nonlinearity Matters
Author(s) -
Barrak Alahmad,
Abdullah A. AlShammari,
Abdullah Bennakhi,
Fahd AlMulla,
Hamad Ali
Publication year - 2020
Publication title -
diabetes care
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.636
H-Index - 363
eISSN - 1935-5548
pISSN - 0149-5992
DOI - 10.2337/dc20-1941
Subject(s) - medicine , covid-19 , intensive care unit , categorical variable , diabetes mellitus , emergency medicine , intensive care medicine , disease , statistics , endocrinology , infectious disease (medical specialty) , mathematics , virology , outbreak
OBJECTIVE Fasting blood glucose (FBG) could be an independent predictor for coronavirus disease 2019 (COVID-19) morbidity and mortality. However, when included as a predictor in a model, it is conventionally modeled linearly, dichotomously, or categorically. We comprehensively examined different ways of modeling FBG to assess the risk of being admitted to the intensive care unit (ICU). RESEARCH DESIGN AND METHODS Utilizing COVID-19 data from Kuwait, we fitted conventional approaches to modeling FBG as well as a nonlinear estimation using penalized splines. RESULTS For 417 patients, the conventional linear, dichotomous, and categorical approaches to modeling FBG missed key trends in the exposure-response relationship. A nonlinear estimation showed a steep slope until about 10 mmol/L before flattening. CONCLUSIONS Our results argue for strict glucose management on admission. Even a small incremental increase within the normal range of FBG was associated with a substantial increase in risk of ICU admission for COVID-19 patients.
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