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非心脏门控胸部 CT 上冠状动脉钙化的临床应用价值可预测 COVID-19 的临床严重程度和结局。

Utility of visual coronary artery calcification on non-cardiac gated thoracic CT in predicting clinical severity and outcome in COVID-19.

机构信息

Al Wakra Hospital, Hamad Medical Corporation, Qatar.

Sidra Medicine, Doha, Qatar.

出版信息

Clin Imaging. 2021 Jun;74:123-130. doi: 10.1016/j.clinimag.2021.01.015. Epub 2021 Jan 18.

Abstract

BACKGROUND

Assessment of visual-coronary artery calcification on non-cardiac gated CT in COVID-19 patients could provide an objective approach to rapidly identify and triage clinically severe patients for early hospital admission to avert worse prognosis.

PURPOSE

To ascertain the role of semi-quantitative scoring in visual-coronary artery calcification score (V-CACS) for predicting the clinical severity and outcome in patients with COVID-19.

MATERIALS AND METHODS

With institutional review board approval this study included 67 COVID-19 confirmed patients who underwent non-cardiac gated CT chest in an inpatient setting. Two blinded radiologist (Radiologist-1 &2) assessed the V-CACS, CT Chest severity score (CT-SS). The clinical data including the requirement for oxygen support, assisted ventilation, ICU admission and outcome was assessed, and patients were clinically subdivided depending on clinical severity. Logistic regression analyses were performed to identify independent predictors. ROC curves analysis is performed for the assessment of performance and Pearson correlation were performed to looks for the associations.

RESULTS

V-CACS cut off value of 3 (82.67% sensitivity and 54.55% specificity; AUC 0.75) and CT-SS with a cut off value of 21.5 (95.7% sensitivity and 63.6% specificity; AUC 0.87) are independent predictors for clinical severity and also the need for ICU admission or assisted ventilation. The pooling of both CT-SS and V-CACS (82.67% sensitivity and 86.4% specificity; AUC 0.92) are more reliable in terms of predicting the primary outcome of COVID-19 patients. On regression analysis, V-CACS and CT-SS are individual independent predictors of clinical severity in COVID-19 (Odds ratio, 1.72; 95% CI, 0.99-2.98; p = 0.05 and Odds ratio, 1.22; 95% CI, 1.08-1.39; p = 0.001 respectively). The area under the curve (AUC) for pooled V-CACS and CT-SS was 0.96 (95% CI 0.84-0.98) which correctly predicted 82.1% cases.

CONCLUSION

Logistic regression model using pooled Visual-Coronary artery calcification score and CT Chest severity score in non-cardiac gated CT can predict clinical severity and outcome in patients with COVID-19.

摘要

背景

在 COVID-19 患者的非心脏门控 CT 上评估视觉冠状动脉钙化可提供一种客观的方法,以快速识别和分诊临床严重的患者,以便提前入院以避免预后更差。

目的

确定半定量评分在视觉冠状动脉钙化评分(V-CACS)中对预测 COVID-19 患者临床严重程度和结局的作用。

材料与方法

本研究经机构审查委员会批准,纳入了 67 例在住院期间接受非心脏门控 CT 胸部检查的 COVID-19 确诊患者。两名盲法放射科医生(放射科医生 1 和 2)评估了 V-CACS 和 CT 胸部严重程度评分(CT-SS)。评估了包括氧支持需求、辅助通气、入住 ICU 和结局在内的临床数据,并根据临床严重程度对患者进行了临床细分。进行了逻辑回归分析以确定独立预测因子。进行了 ROC 曲线分析以评估性能,并进行了 Pearson 相关性分析以寻找关联。

结果

V-CACS 截断值为 3(82.67%的敏感性和 54.55%的特异性;AUC 0.75)和 CT-SS 截断值为 21.5(95.7%的敏感性和 63.6%的特异性;AUC 0.87)是临床严重程度和需要 ICU 入院或辅助通气的独立预测因子。同时考虑 CT-SS 和 V-CACS(82.67%的敏感性和 86.4%的特异性;AUC 0.92)的汇总在预测 COVID-19 患者的主要结局方面更为可靠。在回归分析中,V-CACS 和 CT-SS 是 COVID-19 临床严重程度的独立预测因子(优势比,1.72;95%CI,0.99-2.98;p=0.05 和优势比,1.22;95%CI,1.08-1.39;p=0.001)。汇总 V-CACS 和 CT-SS 的曲线下面积(AUC)为 0.96(95%CI 0.84-0.98),正确预测了 82.1%的病例。

结论

使用非心脏门控 CT 中的汇总视觉冠状动脉钙化评分和 CT 胸部严重程度评分的逻辑回归模型可预测 COVID-19 患者的临床严重程度和结局。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/69ba/7834505/2b8facfe6f11/gr1_lrg.jpg

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