论文标题

建立一个诊断模型,以根据实验室发现区分2019年冠状病毒病和流感A

Establishment of a diagnostic model to distinguish coronavirus disease 2019 from influenza A based on laboratory findings

论文作者

Xing, Dongyang, Tian, Suyan, Chen, Yukun, Wang, Jinmei, Sun, Xuejuan, Li, Shanji, Xu, Jiancheng

论文摘要

背景:2019年冠状病毒病(Covid-19)和流感是由病毒感染引起的常见疾病。两种疾病的临床症状和传播路线相似。但是,没有关于实验室诊断模型来区分Covid-19和流感A的相关研究。这项研究旨在建立实验室发现的签名,以告诉患有Covid-19患者,除了患有流感的患者外,还可以很好地告诉患有Covid-19的患者。材料:在这项研究中,包括56名Covid-19患者和54名流感A患者。从电子病历数据库获得了实验室发现,流行病学特征和人口统计数据。弹性网络模型,然后实现了逐步的逻辑回归模型,以识别能够歧视Covid-19和流感A的指标A。结果:COVID-19患者的大多数血液学和生化参数与流感A患者的血液学和生化参数显着不同。在最终模型中,选择了白蛋白/球蛋白(A/G),总胆红素(TBIL)和红细胞特异性体积(HCT)作为预测因子。使用外部数据集,对模型进行了验证以表现良好。结论:建立了实验室发现的诊断模型,其中A/G,TBIL和HCT被作为高度相关的指标,用于分割COVID-19和流感,为这两种疾病的精确诊断提供了一种互补的手段。

Background: Coronavirus disease 2019 (COVID-19) and Influenza A are common disease caused by viral infection. The clinical symptoms and transmission routes of the two diseases are similar. However, there are no relevant studies on laboratory diagnostic models to discriminate COVID-19 and influenza A. This study aims at establishing a signature of laboratory findings to tell patients with COVID-19 apart from those with influenza A perfectly. Materials: In this study, 56 COVID-19 patients and 54 influenza A patients were included. Laboratory findings, epidemiological characteristics and demographic data were obtained from electronic medical record databases. Elastic network models, followed by a stepwise logistic regression model were implemented to identify indicators capable of discriminating COVID-19 and influenza A. A nomogram is diagramed to show the resulting discriminative model. Results: The majority of hematological and biochemical parameters in COVID-19 patients were significantly different from those in influenza A patients. In the final model, albumin/globulin (A/G), total bilirubin (TBIL) and erythrocyte specific volume (HCT) were selected as predictors. Using an external dataset, the model was validated to perform well. Conclusion: A diagnostic model of laboratory findings was established, in which A/G, TBIL and HCT were included as highly relevant indicators for the segmentation of COVID-19 and influenza A, providing a complimentary means for the precise diagnosis of these two diseases.

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