2019年严重冠状病毒病肺炎患者死亡风险分析

Hui Dai, R. Huang, Y. Shang, Jianan Huang, N. Su, D. Zeng, Hongmei Li, Yonggang Li
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引用次数: 0

摘要

背景:2019冠状病毒病(COVID-19)目前是全球性大流行。关于预测重症COVID-19死亡率的信息仍不清楚。方法:将2020年1月23日至3月8日收治的151例COVID-19住院患者分为重症组、危重组、生存组和死亡组。分析两组临床及影像学资料的差异。采用logistic回归分析与COVID-19死亡率相关的因素,建立死亡率预测模型。结果:两组患者年龄、流行史、病史、入院前症状持续时间、血常规、炎症相关因素、Na+、心肌酶谱、肝肾功能、凝血功能、吸氧分数、并发症等多项临床及影像学指标差异均有统计学意义。在死亡组中,影像III期和综合计算机断层扫描评分的患者比例显著增加。预测模型的影响因素包括患者年龄、心脏损伤、急性肾损伤和急性呼吸窘迫综合征。预测模型的受试者工作特征曲线下面积为0.9593。结论:临床和影像学资料反映了COVID-19肺炎的严重程度。死亡率预测模型可能是一种有希望的方法,可以帮助临床医生快速识别死亡风险高的COVID-19患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mortality risk analysis for patients with severe coronavirus disease 2019 pneumonia
BACKGROUND: Coronavirus Disease 2019 (COVID-19) is currently a global pandemic. Information about predicting mortality in severe COVID-19 remains unclear. METHODS: A total of 151 COVID-19 in-patients from January 23 to March 8, 2020, were divided into severe and critically severe groups and survival and mortality groups. Differences in the clinical and imaging data between the groups were analyzed. Factors associated with COVID-19 mortality were analyzed by logistic regression, and a mortality prediction model was developed. RESULTS: Many clinical and imaging indices were significantly different between groups, including age, epidemic history, medical history, duration of symptoms before admission, routine blood parameters, inflammatory-related factors, Na+, myocardial zymogram, liver and renal function, coagulation function, fraction of inspired oxygen and complications. The proportions of patients with imaging Stage III and a comprehensive computed tomography score were significantly increased in the mortality group. Factors in the prediction model included patient age, cardiac injury, acute kidney injury, and acute respiratory distress syndrome. The area under the receiver operating characteristic curve of the prediction model was 0.9593. CONCLUSIONS: The clinical and imaging data reflected the severity of COVID-19 pneumonia. The mortality prediction model might be a promising method to help clinicians quickly identify COVID-19 patients who are at high risk of death.
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