Chest Computed Tomography Severity Score to Predict Adverse Outcomes of Patients with COVID-19.

IF 2.9
Somayeh Hajiahmadi, Azin Shayganfar, Mohsen Janghorbani, Mahsa Masjedi Esfahani, Mehdi Mahnam, Nagar Bakhtiarvand, Ramin Sami, Nilufar Khademi, Mehrnegar Dehghani
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引用次数: 20

Abstract

Background: The novel coronavirus disease 2019 (COVID-19) continues to wreak havoc worldwide. This study assessed the ability of chest computed tomography (CT) severity score (CSS) to predict intensive care unit (ICU) admission and mortality in patients with COVID-19 pneumonia.

Materials and methods: A total of 192 consecutive patients with COVID-19 pneumonia aged more than 20 years and typical CT findings and reverse-transcription polymerase chain reaction positive admitted in a tertiary hospital were included. Clinical symptoms at admission and short-term outcome were obtained. A semi-quantitative scoring system was used to evaluate the parenchymal involvement. The association between CSS, disease severity, and outcomes were evaluated. Prediction of CSS was assessed with the area under the receiver-operating characteristic (ROC) curves.

Results: The incidence of admission to ICU was 22.8% in men and 14.1% in women. CSS was related to ICU admission and mortality. Areas under the ROC curves were 0.764 for total CSS. Using a stepwise binary logistic regression model, gender, age, oxygen saturation, and CSS had a significant independent relationship with ICU admission and death. Patients with CSS ≥12.5 had about four-time risk of ICU admission and death (odds ratio 1.66, 95% confidence interval 1.66 - 9.25). The multivariate regression analysis showed the superiority of CSS over other clinical information and co-morbidities.

Conclusion: CSS was a strong predictor of progression to ICU admission and death and there was a substantial role of non-contrast chest CT imaging in the presence of typical features for COVID-19 pneumonia as a reliable predictor of clinical severity and patient's outcome.

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胸部计算机断层扫描严重程度评分预测COVID-19患者不良结局
背景:2019年新型冠状病毒病(COVID-19)继续在全球肆虐。本研究评估了胸部计算机断层扫描(CT)严重程度评分(CSS)预测COVID-19肺炎患者重症监护病房(ICU)入院和死亡率的能力。材料与方法:选取某三级医院连续收治的年龄在20岁以上、CT表现典型且逆转录聚合酶链反应阳性的COVID-19肺炎患者192例。获得入院时的临床症状和短期疗效。采用半定量评分系统评价实质受累情况。评估CSS、疾病严重程度和结局之间的关系。用受试者工作特征(ROC)曲线下面积评估CSS的预测。结果:男性住院率为22.8%,女性住院率为14.1%。CSS与ICU入院率和死亡率相关。总CSS的ROC曲线下面积为0.764。采用逐步二元logistic回归模型,性别、年龄、血氧饱和度和CSS与ICU入院和死亡有显著的独立关系。CSS≥12.5的患者ICU入院和死亡风险约为4倍(优势比1.66,95%可信区间1.66 ~ 9.25)。多因素回归分析显示CSS优于其他临床信息和合并症。结论:CSS是进展到ICU住院和死亡的一个强有力的预测因素,在COVID-19肺炎的典型特征存在时,非对比胸部CT成像作为临床严重程度和患者结局的可靠预测因素具有重要作用。
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