Risk Factors Associated with Clinical Outcomes in 323 COVID-19 Patients in Wuhan, China

Author:

Hu Ling,Chen Shaoqiu,Fu Yuanyuan,Gao Zitong,Long Hui,Ren Hong-wei,Zuo Yi,Li Huan,Wang Jie,Xu Qing-bang,Yu Wen-xiong,Liu Jia,Shao Chen,Hao Jun-jie,Wang Chuan-zhen,Ma Yao,Wang Zhanwei,Yanagihara Richard,Wang Jian-ming,Deng Youping

Abstract

ABSTRACTBackgroundWith evidence of sustained transmission in more than 190 countries, coronavirus disease 2019 (COVID-19) has been declared a global pandemic. As such, data are urgently needed about risk factors associated with clinical outcomes.MethodsA retrospective chart review of 323 hospitalized patients with COVID-19 in Wuhan was conducted. Patients were classified into three disease severity groups (non-severe, severe, and critical), based on their initial clinical presentation. Clinical outcomes were designated as favorable and unfavorable, based on disease progression and response to treatments. Logistic regression models were performed to identify factors associated with clinical outcomes, and log-rank test was conducted for the association with clinical progression.ResultsCurrent standard treatments did not show significant improvement on patient outcomes in the study. By univariate logistic regression model, 27 risk factors were significantly associated with clinical outcomes. Further, multivariate regression indicated that age over 65 years, smoking, critical disease status, diabetes, high hypersensitive troponin I (>0.04 pg/mL), leukocytosis (>10 × 109/L) and neutrophilia (>75 × 109/L) predicted unfavorable clinical outcomes. By contrast, the use of hypnotics was significantly associated with favorable outcomes. Survival analysis also confirmed that patients receiving hypnotics had significantly better survival.ConclusionsTo our knowledge, this is the first indication that hypnotics could be an effective ancillary treatment for COVID-19. We also found that novel risk factors, such as higher hypersensitive troponin I, predicted poor clinical outcomes. Overall, our study provides useful data to guide early clinical decision making to reduce mortality and improve clinical outcomes of COVID-19.(Funded by the Natural Science Foundation of Hubei Province ZRMS2019000029 and the Top Youth Talent Program in Hubei Province.)

Publisher

Cold Spring Harbor Laboratory

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