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自动化定量肺部CT在非ICU新冠肺炎患者中改善疾病预后,优于传统疾病生物标志物。

Automated Quantitative Lung CT Improves Prognostication in Non-ICU COVID-19 Patients beyond Conventional Biomarkers of Disease.

作者信息

Palumbo Pierpaolo, Palumbo Maria Michela, Bruno Federico, Picchi Giovanna, Iacopino Antonio, Acanfora Chiara, Sgalambro Ferruccio, Arrigoni Francesco, Ciccullo Arturo, Cosimini Benedetta, Splendiani Alessandra, Barile Antonio, Masedu Francesco, Grimaldi Alessandro, Di Cesare Ernesto, Masciocchi Carlo

机构信息

Department of Diagnostic Imaging, Area of Cardiovascular and Interventional Imaging, Abruzzo Health Unit 1, Via Saragat, Località Campo di Pile, 67100 L'Aquila, Italy.

Italian Society of Medical and Interventional Radiology (SIRM), SIRM Foundation, 20122 Milan, Italy.

出版信息

Diagnostics (Basel). 2021 Nov 16;11(11):2125. doi: 10.3390/diagnostics11112125.

Abstract

(1) Background: COVID-19 continues to represent a worrying pandemic. Despite the high percentage of non-severe illness, a wide clinical variability is often reported in real-world practice. Accurate predictors of disease aggressiveness, however, are still lacking. The purpose of our study was to evaluate the impact of quantitative analysis of lung computed tomography (CT) on non-intensive care unit (ICU) COVID-19 patients' prognostication; (2) Methods: Our historical prospective study included fifty-five COVID-19 patients consecutively submitted to unenhanced lung CT. Primary outcomes were recorded during hospitalization, including composite ICU admission for the need of mechanical ventilation and/or death occurrence. CT examinations were retrospectively evaluated to automatically calculate differently aerated lung tissues (i.e., overinflated, well-aerated, poorly aerated, and non-aerated tissue). Scores based on the percentage of lung weight and volume were also calculated; (3) Results: Patients who reported disease progression showed lower total lung volume. Inflammatory indices correlated with indices of respiratory failure and high-density areas. Moreover, non-aerated and poorly aerated lung tissue resulted significantly higher in patients with disease progression. Notably, non-aerated lung tissue was independently associated with disease progression (HR: 1.02; -value: 0.046). When different predictive models including clinical, laboratoristic, and CT findings were analyzed, the best predictive validity was reached by the model that included non-aerated tissue (C-index: 0.97; -value: 0.0001); (4) Conclusions: Quantitative lung CT offers wide advantages in COVID-19 disease stratification. Non-aerated lung tissue is more likely to occur with severe inflammation status, turning out to be a strong predictor for disease aggressiveness; therefore, it should be included in the predictive model of COVID-19 patients.

摘要

(1) 背景:新型冠状病毒肺炎(COVID-19)仍是令人担忧的大流行病。尽管非重症疾病比例较高,但在实际临床中,病情差异往往很大。然而,目前仍缺乏疾病侵袭性的准确预测指标。本研究旨在评估肺部计算机断层扫描(CT)定量分析对非重症监护病房(ICU)COVID-19患者预后的影响;(2) 方法:我们的历史性前瞻性研究纳入了55例连续接受非增强肺部CT检查的COVID-19患者。记录住院期间的主要结局,包括因需要机械通气和/或死亡而入住ICU的综合情况。对CT检查进行回顾性评估,以自动计算不同充气状态的肺组织(即过度充气、充气良好、充气不良和无气组织)。还计算了基于肺重量和体积百分比的评分;(3) 结果:病情进展的患者肺总体积较低。炎症指标与呼吸衰竭指标和高密度区域相关。此外,病情进展患者的无气和充气不良肺组织明显增多。值得注意的是,无气肺组织与病情进展独立相关(风险比:1.02;P值:0.046)。分析包括临床、实验室检查和CT表现的不同预测模型时,包含无气组织的模型预测效度最佳(C指数:0.97;P值:0.0001);(4) 结论:肺部CT定量分析在COVID-19疾病分层中具有诸多优势。无气肺组织更易出现在严重炎症状态下,是疾病侵袭性的有力预测指标;因此,应将其纳入COVID-19患者的预测模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/43e4/8624922/acf61366b92c/diagnostics-11-02125-g001.jpg

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