Diagnostic accuracy of computed tomography for identifying hospitalizations for patients with COVID-19

S. Morozov, R. Reshetnikov, Victor A. Gombolevskiy, N. Ledikhova, I. Blokhin, V. Kljashtorny, O. Mokienko, A. Vladzymyrskyy
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引用次数: 2

Abstract

The controversy of computed tomography (CT) use in COVID-19 screening is associated with ambiguous characteristics of chest CT as a diagnostic test. The reported values of CT sensitivity and specificity calculated using RT-PCR as a reference standard vary widely. The objective of this study was to reevaluate the diagnostic and prognostic value of CT using an alternative approach. This study included 973 symptomatic COVID-19 patients aged 42 $\pm$ 17 years, 56% females. We reviewed the disease dynamics between the initial and follow-up CT studies using a "CT0-4" grading system. Sensitivity and specificity were calculated as conditional probabilities that a patient's condition would improve or deteriorate relative to the initial CT study results. For the calculation of negative (NPV) and positive (PPV) predictive values, we estimated the COVID-19 prevalence in Moscow. We used several ARIMA and EST models with different parameters to fit the data on total cases of COVID-19 from March 6, 2020, to July 20, 2020, and forecast the incidence. The "CT0-4" grading scale demonstrated low sensitivity (28%) but high specificity (95%). The best statistical model for describing the pandemic in Moscow was ETS with multiplicative trend, error, and season type. According to our calculations, with the predicted prevalence of 2.1%, the values of NPV and PPV would be 98% and 10%, correspondingly. We associate the low sensitivity and PPV values with the small sample size of the patients with severe symptoms and non-optimal methodological setup for measuring these specific characteristics. The "CT0-4" grading scale was highly specific and predictive for identifying admissions to hospitals of COVID-19 patients. Despite the ambiguous accuracy, chest CT proved to be an effective practical tool for patient management during the pandemic, provided that the necessary infrastructure and human resources are available.
计算机断层扫描识别COVID-19患者住院情况的诊断准确性
计算机断层扫描(CT)用于COVID-19筛查的争议与胸部CT作为诊断测试的模糊特征有关。以RT-PCR作为参考标准计算的CT敏感性和特异性的报道值差异很大。本研究的目的是重新评估CT的诊断和预后价值,采用另一种方法。本研究纳入973例有症状的COVID-19患者,年龄42岁,年龄17岁,56%为女性。我们使用“CT0-4”分级系统回顾了初始和随访CT研究之间的疾病动态。敏感性和特异性被计算为患者病情相对于初始CT研究结果改善或恶化的条件概率。为了计算阴性(NPV)和阳性(PPV)预测值,我们估计了莫斯科的COVID-19流行率。采用不同参数的ARIMA和EST模型,拟合2020年3月6日至2020年7月20日新冠肺炎总病例数据,并进行发病预测。CT0-4分级表敏感性低(28%),特异性高(95%)。描述莫斯科大流行的最佳统计模型是具有乘法趋势、误差和季节类型的ETS。根据我们的计算,在预测患病率为2.1%时,NPV和PPV的值分别为98%和10%。我们将低灵敏度和PPV值与严重症状患者的小样本量以及测量这些特定特征的非最佳方法设置联系起来。“CT0-4”分级量表对识别COVID-19住院患者具有高度的特异性和预测性。尽管准确性不明确,但在具备必要的基础设施和人力资源的情况下,胸部CT被证明是大流行期间患者管理的有效实用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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