Hermans Joep J R, Groen Joost, Zwets Egon, Boxma-De Klerk Bianca M, Van Werkhoven Jacob M, Ong David S Y, Hanselaar Wessel E J J, Waals-Prinzen Lenneke, Brown Vanessa
Department of Emergency Medicine, Franciscus Gasthuis & Vlietland, Rotterdam, The Netherlands.
Department of Clinical Chemistry, Franciscus Gasthuis & Vlietland, Rotterdam, The Netherlands.
Emerg Radiol. 2020 Dec;27(6):641-651. doi: 10.1007/s10140-020-01821-1. Epub 2020 Jul 20.
We aimed to investigate the diagnostic performance of chest CT compared with first RT-PCR results in adult patients suspected of COVID-19 infection in an ED setting. We also constructed a predictive machine learning model based on chest CT and additional data to improve the diagnostic accuracy of chest CT.
This study's cohort consisted of 319 patients who underwent chest CT and RT-PCR testing at the ED. Patient characteristics, demographics, symptoms, vital signs, laboratory tests, and chest CT results (CO-RADS) were collected. With first RT-PCR as reference standard, the diagnostic performance of chest CT using the CO-RADS score was assessed. Additionally, a predictive machine learning model was constructed using logistic regression.
Chest CT, with first RT-PCR as a reference, had a sensitivity, specificity, PPV, and NPV of 90.2%, 88.2%, 84.5%, and 92.7%, respectively. The prediction model with CO-RADS, ferritin, leucocyte count, CK, days of complaints, and diarrhea as predictors had a sensitivity, specificity, PPV, and NPV of 89.3%, 93.4%, 90.8%, and 92.3%, respectively.
Chest CT, using the CO-RADS scoring system, is a sensitive and specific method that can aid in the diagnosis of COVID-19, especially if RT-PCR tests are scarce during an outbreak. Combining a predictive machine learning model could further improve the accuracy of diagnostic chest CT for COVID-19. Further candidate predictors should be analyzed to improve our model. However, RT-PCR should remain the primary standard of testing as up to 9% of RT-PCR positive patients are not diagnosed by chest CT or our machine learning model.
我们旨在研究在急诊环境中,胸部CT相对于首次逆转录聚合酶链反应(RT-PCR)结果,对疑似新型冠状病毒肺炎(COVID-19)感染成年患者的诊断性能。我们还基于胸部CT和其他数据构建了一个预测性机器学习模型,以提高胸部CT的诊断准确性。
本研究队列由319例在急诊接受胸部CT和RT-PCR检测的患者组成。收集患者的特征、人口统计学信息、症状、生命体征、实验室检查结果及胸部CT结果(COVID-19相关影像数据系统[CO-RADS])。以首次RT-PCR结果作为参考标准,评估使用CO-RADS评分的胸部CT诊断性能。此外,使用逻辑回归构建预测性机器学习模型。
以首次RT-PCR为参考,胸部CT的灵敏度、特异度、阳性预测值和阴性预测值分别为90.2%、88.2%、84.5%和92.7%。以CO-RADS、铁蛋白、白细胞计数、肌酸激酶、症状持续天数及腹泻为预测指标的预测模型,其灵敏度、特异度、阳性预测值和阴性预测值分别为89.3%、93.4%、90.8%和92.3%。
使用CO-RADS评分系统的胸部CT是一种敏感且特异的方法,有助于COVID-19的诊断,尤其是在疫情暴发期间RT-PCR检测稀缺时。结合预测性机器学习模型可进一步提高胸部CT对COVID-19的诊断准确性。应分析更多候选预测指标以改进我们的模型。然而,RT-PCR仍应作为主要检测标准,因为高达9%的RT-PCR阳性患者无法通过胸部CT或我们的机器学习模型诊断。