尽管血浆细胞因子谱相似,但不同的生物学途径可区分社区获得性肺炎和新冠肺炎。

Divergent biological pathways distinguish community-acquired pneumonia from COVID-19 despite similar plasma cytokine profiles.

作者信息

Fraser Douglas D, Van Nynatten Logan R, Tweddell David, Daley Mark, Russell James A

机构信息

GSK Chair in Clinical Pharmacology, Western University, London, ON, Canada.

Pediatrics, Western University, London, ON, Canada.

出版信息

Respir Res. 2025 Aug 31;26(1):264. doi: 10.1186/s12931-025-03331-5.

Abstract

BACKGROUND

Pulmonary infections, ranging from mild respiratory issues to severe multiorgan failure, pose a major global health threat. The immune response in community-acquired pneumonia (CAP) and COVID-19 influences disease severity and outcomes, but molecular pathogenesis differs across pathogens. Comparisons of plasma cytokine profiles between CAP and COVID-19 are limited. Analyzing these profiles with machine learning and bioinformatics could reveal subtle patterns and improve our understanding of immune responses in both conditions.

METHODS

We conducted a novel case-control study to profile cytokine levels in patients with CAP and COVID-19. Age- and sex-matched cohorts included 39 patients with CAP, 39 with COVID-19, and 20 healthy controls. We measured 384 plasma cytokine levels using proximity extension assays and analyzed differences between cohorts with conventional statistical methods, bioinformatics and machine learning.

RESULTS

Median ages of the cohorts were comparable (P = 0.797). COVID-19 patients exhibited a higher prevalence of hematologic disease (P = 0.047), increased corticosteroid use (P = 0.040), and reduced antibiotic use (P = 0.012). Clinical outcomes, including mortality, ICU admission, invasive mechanical ventilation, renal replacement therapy, acute respiratory distress syndrome, and acute kidney injury, were similar between groups. Both cohorts showed comparable absolute circulating cytokine profiles but distinct profiles relative to healthy controls. Machine learning identified a model of twelve cytokines that distinguished CAP from COVID-19 with a classification accuracy of 0.71 (SD 0.20). Gene ontology and enrichment analysis revealed differences in cytosolic and nuclear functions, intracellular signaling, stress responses, and cell cycle processes between patient cohorts and healthy controls. Enriched GO pathways showed that CAP pathways were positively associated with leukocyte counts and ARDS development, while COVID-19 pathways were negatively associated with ARDS and positively with platelet counts.

CONCLUSIONS

This case-control study provides insights into cytokine profiles related to CAP and COVID-19 pathogenesis. Although absolute circulating cytokine levels showed no significant differences between the groups, machine learning identified a model of twelve proteins that effectively distinguished the cohorts. Gene ontology and enrichment analyses also revealed distinct dysregulated pathways with differing associations with clinical variables in each cohort. These findings underscore the complexity and variability of cytokine responses in pulmonary infections.

摘要

背景

肺部感染,从轻度呼吸道问题到严重的多器官功能衰竭,对全球健康构成重大威胁。社区获得性肺炎(CAP)和新型冠状病毒肺炎(COVID-19)中的免疫反应会影响疾病的严重程度和预后,但不同病原体的分子发病机制有所不同。CAP和COVID-19之间血浆细胞因子谱的比较有限。通过机器学习和生物信息学分析这些谱可以揭示细微的模式,并增进我们对这两种情况下免疫反应的理解。

方法

我们进行了一项新型病例对照研究,以分析CAP和COVID-19患者的细胞因子水平。年龄和性别匹配的队列包括39例CAP患者、39例COVID-19患者和20名健康对照者。我们使用邻近延伸测定法测量了384种血浆细胞因子水平,并使用传统统计方法、生物信息学和机器学习分析了队列之间的差异。

结果

各队列的中位年龄相当(P = 0.797)。COVID-19患者血液系统疾病的患病率较高(P = 0.047),皮质类固醇的使用增加(P = 0.040),抗生素的使用减少(P = 0.012)。两组之间的临床结局,包括死亡率、入住重症监护病房、有创机械通气、肾脏替代治疗、急性呼吸窘迫综合征和急性肾损伤,相似。两个队列的绝对循环细胞因子谱相当,但相对于健康对照者则有所不同。机器学习确定了一个由12种细胞因子组成的模型,该模型区分CAP和COVID-19的分类准确率为0.71(标准差0.20)。基因本体和富集分析揭示了患者队列与健康对照者之间在胞质和核功能、细胞内信号传导、应激反应和细胞周期过程方面的差异。富集的基因本体通路显示,CAP通路与白细胞计数和ARDS的发生呈正相关,而COVID-19通路与ARDS呈负相关且与血小板计数呈正相关。

结论

这项病例对照研究为与CAP和COVID-19发病机制相关的细胞因子谱提供了见解。尽管两组之间的绝对循环细胞因子水平没有显著差异,但机器学习确定了一个由12种蛋白质组成的模型,该模型有效地区分了各队列。基因本体和富集分析还揭示了不同的失调通路,且每条通路与各队列临床变量的关联不同。这些发现强调了肺部感染中细胞因子反应的复杂性和变异性。

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