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基于基因共表达网络的综合分析和预测模型表明,鉴定的生物标志物在脓毒症和脓毒症诱导的急性呼吸窘迫综合征中的免疫相关作用。

Integrated Analysis of Gene Co-Expression Network and Prediction Model Indicates Immune-Related Roles of the Identified Biomarkers in Sepsis and Sepsis-Induced Acute Respiratory Distress Syndrome.

机构信息

Department of Anesthesiology, Renmin Hospital, Wuhan University, Wuhan, China.

College of Medical Laboratory Science, Youjiang Medical College for Nationalities, Baise, China.

出版信息

Front Immunol. 2022 Jun 30;13:897390. doi: 10.3389/fimmu.2022.897390. eCollection 2022.

Abstract

Sepsis is a series of clinical syndromes caused by immunological response to severe infection. As the most important and common complication of sepsis, acute respiratory distress syndrome (ARDS) is associated with poor outcomes and high medical expenses. However, well-described studies of analysis-based researches, especially related bioinformatics analysis on revealing specific targets and underlying molecular mechanisms of sepsis and sepsis-induced ARDS (sepsis/se-ARDS), still remain limited and delayed despite the era of data-driven medicine. In this report, weight gene co-expression network based on data from a public database was constructed to identify the key modules and screen the hub genes. Functional annotation by enrichment analysis of the modular genes also demonstrated the key biological processes and signaling pathway; among which, extensive immune-involved enrichment was remarkably associated with sepsis/se-ARDS. Based on the differential expression analysis, least absolute shrink and selection operator, and multivariable logistic regression analysis of the screened hub genes, and were identified as the candidate biomarkers for the further analysis. Accordingly, a four-gene-based model for diagnostic prediction assessment was established and then developed by sepsis/se-ARDS risk nomogram, whose efficiency was verified by calibration curves and decision curve analyses. In addition, various machine learning algorithms were also applied to develop extra models based on the four genes. Receiver operating characteristic curve analysis proved the great diagnostic and predictive performance of these models, and the multivariable logistic regression of the model was still found to be the best as further verified again by the internal test, training, and external validation cohorts. During the development of sepsis/se-ARDS, the expressions of the identified biomarkers including and were all regulated remarkably and generally exhibited notable correlations with the stages of sepsis/se-ARDS. Moreover, the expression levels of these four genes were substantially correlated during sepsis/se-ARDS. Analysis of immune infiltration showed that multiple immune cells, neutrophils and monocytes in particular, might be closely involved in the process of sepsis/se-ARDS. Besides, and were considerably correlated with the infiltration of various immune cells including neutrophils and monocytes during sepsis/se-ARDS. The discovery of relevant gene co-expression network and immune signatures might provide novel insights into the pathophysiology of sepsis/se-ARDS.

摘要

脓毒症是由严重感染引起的免疫反应导致的一系列临床综合征。急性呼吸窘迫综合征(ARDS)作为脓毒症最常见和最重要的并发症,与不良预后和高昂的医疗费用有关。然而,尽管已经进入了数据驱动医学时代,对脓毒症和脓毒症诱导的 ARDS(sepsis/se-ARDS)的基于分析的研究,尤其是相关的生物信息学分析,仍然很少且滞后。在本报告中,我们基于公共数据库中的数据构建了一个基于权重基因共表达网络,以识别关键模块并筛选枢纽基因。对模块基因进行功能注释的富集分析也证明了关键的生物学过程和信号通路;其中,广泛的免疫参与显著与 sepsis/se-ARDS 相关。基于差异表达分析、最小绝对收缩和选择算子(LASSO)以及筛选出的枢纽基因的多变量逻辑回归分析,和被确定为进一步分析的候选生物标志物。因此,建立了一个基于四个基因的模型,用于诊断预测评估,然后通过 sepsis/se-ARDS 风险列线图进行开发,通过校准曲线和决策曲线分析验证了其效率。此外,还应用了各种机器学习算法,基于这四个基因开发了额外的模型。接受者操作特征曲线分析证明了这些模型具有很好的诊断和预测性能,并且模型的多变量逻辑回归在进一步通过内部测试、训练和外部验证队列验证后,仍然被发现是最好的。在脓毒症/se-ARDS 的发展过程中,所鉴定的生物标志物包括和的表达都被显著调节,通常与脓毒症/se-ARDS 的阶段具有显著相关性。此外,在脓毒症/se-ARDS 期间,这四个基因的表达水平具有显著相关性。免疫浸润分析表明,多种免疫细胞,特别是中性粒细胞和单核细胞,可能密切参与脓毒症/se-ARDS 的发生过程。此外,在脓毒症/se-ARDS 期间,和与包括中性粒细胞和单核细胞在内的各种免疫细胞的浸润具有显著相关性。对相关基因共表达网络和免疫特征的研究可能为脓毒症/se-ARDS 的病理生理学提供新的见解。

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