Brown Experimentalists Against COVID-19 (BEACON) Group, Brown University, Providence, United States.
Laboratory of Translational Oncology and Experimental Cancer Therapeutics, Warren Alpert Medical School, Brown University, Providence, United States.
Elife. 2021 Jan 14;10:e64958. doi: 10.7554/eLife.64958.
Although the range of immune responses to severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) is variable, cytokine storm is observed in a subset of symptomatic individuals. To further understand the disease pathogenesis and, consequently, to develop an additional tool for clinicians to evaluate patients for presumptive intervention, we sought to compare plasma cytokine levels between a range of donor and patient samples grouped by a COVID-19 Severity Score (CSS) based on the need for hospitalization and oxygen requirement. Here we utilize a mutual information algorithm that classifies the information gain for CSS prediction provided by cytokine expression levels and clinical variables. Using this methodology, we found that a small number of clinical and cytokine expression variables are predictive of presenting COVID-19 disease severity, raising questions about the mechanism by which COVID-19 creates severe illness. The variables that were the most predictive of CSS included clinical variables such as age and abnormal chest x-ray as well as cytokines such as macrophage colony-stimulating factor, interferon-inducible protein 10, and interleukin-1 receptor antagonist. Our results suggest that SARS-CoV-2 infection causes a plethora of changes in cytokine profiles and that particularly in severely ill patients, these changes are consistent with the presence of macrophage activation syndrome and could furthermore be used as a biomarker to predict disease severity.
虽然针对严重急性呼吸综合征冠状病毒 2 (SARS-CoV-2) 的免疫反应范围各不相同,但在部分有症状的个体中观察到细胞因子风暴。为了进一步了解疾病发病机制,并因此为临床医生开发评估疑似干预患者的额外工具,我们试图比较基于住院和氧气需求的 COVID-19 严重程度评分 (CSS) 分组的一系列供体和患者样本的血浆细胞因子水平。在这里,我们利用互信息算法对细胞因子表达水平和临床变量提供的 CSS 预测信息增益进行分类。使用这种方法,我们发现少数临床和细胞因子表达变量可预测 COVID-19 疾病的严重程度,这引发了对 COVID-19 导致严重疾病的机制的质疑。最能预测 CSS 的变量包括年龄和异常胸部 X 线等临床变量,以及巨噬细胞集落刺激因子、干扰素诱导蛋白 10 和白细胞介素 1 受体拮抗剂等细胞因子。我们的结果表明,SARS-CoV-2 感染会导致细胞因子谱发生大量变化,特别是在病情严重的患者中,这些变化与巨噬细胞活化综合征的存在一致,并且可以用作预测疾病严重程度的生物标志物。