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使用生物信息学和机器学习鉴定脓毒症相关的内质网应激基因。

Identification of immune-related endoplasmic reticulum stress genes in sepsis using bioinformatics and machine learning.

机构信息

Department of Anesthesiology, Shenzhen Hospital, Southern Medical University, Shenzhen, China.

The Third School of Clinical Medicine, Southern Medical University, Guangzhou, China.

出版信息

Front Immunol. 2022 Sep 20;13:995974. doi: 10.3389/fimmu.2022.995974. eCollection 2022.

Abstract

BACKGROUND

Sepsis-induced apoptosis of immune cells leads to widespread depletion of key immune effector cells. Endoplasmic reticulum (ER) stress has been implicated in the apoptotic pathway, although little is known regarding its role in sepsis-related immune cell apoptosis. The aim of this study was to develop an ER stress-related prognostic and diagnostic signature for sepsis through bioinformatics and machine learning algorithms on the basis of the differentially expressed genes (DEGs) between healthy controls and sepsis patients.

METHODS

The transcriptomic datasets that include gene expression profiles of sepsis patients and healthy controls were downloaded from the GEO database. The immune-related endoplasmic reticulum stress hub genes associated with sepsis patients were identified using the new comprehensive machine learning algorithm and bioinformatics analysis which includes functional enrichment analyses, consensus clustering, weighted gene coexpression network analysis (WGCNA), and protein-protein interaction (PPI) network construction. Next, the diagnostic model was established by logistic regression and the molecular subtypes of sepsis were obtained based on the significant DEGs. Finally, the potential diagnostic markers of sepsis were screened among the significant DEGs, and validated in multiple datasets.

RESULTS

Significant differences in the type and abundance of infiltrating immune cell populations were observed between the healthy control and sepsis patients. The immune-related ER stress genes achieved strong stability and high accuracy in predicting sepsis patients. 10 genes were screened as potential diagnostic markers for sepsis among the significant DEGs, and were further validated in multiple datasets. In addition, higher expression levels of SCAMP5 mRNA and protein were observed in PBMCs isolated from sepsis patients than healthy donors (n = 5).

CONCLUSIONS

We established a stable and accurate signature to evaluate the diagnosis of sepsis based on the machine learning algorithms and bioinformatics. SCAMP5 was preliminarily identified as a diagnostic marker of sepsis that may affect its progression by regulating ER stress.

摘要

背景

脓毒症诱导免疫细胞凋亡导致关键免疫效应细胞广泛耗竭。内质网(ER)应激已被牵连到凋亡途径中,尽管对于其在脓毒症相关免疫细胞凋亡中的作用知之甚少。本研究旨在通过基于健康对照和脓毒症患者之间差异表达基因(DEGs)的生物信息学和机器学习算法,为脓毒症开发一种与 ER 应激相关的预后和诊断特征。

方法

从 GEO 数据库中下载包含脓毒症患者和健康对照基因表达谱的转录组数据集。使用新的综合机器学习算法和生物信息学分析,包括功能富集分析、共识聚类、加权基因共表达网络分析(WGCNA)和蛋白质-蛋白质相互作用(PPI)网络构建,确定与脓毒症患者相关的免疫相关内质网应激枢纽基因。接下来,通过逻辑回归建立诊断模型,并基于显著的 DEGs 获得脓毒症的分子亚型。最后,在显著的 DEGs 中筛选出脓毒症的潜在诊断标志物,并在多个数据集进行验证。

结果

在健康对照和脓毒症患者之间观察到浸润免疫细胞群的类型和丰度存在显著差异。免疫相关 ER 应激基因在预测脓毒症患者方面具有较强的稳定性和准确性。从显著的 DEGs 中筛选出 10 个基因作为脓毒症的潜在诊断标志物,并在多个数据集进一步验证。此外,从分离自脓毒症患者的 PBMC 中观察到 SCAMP5 mRNA 和蛋白质的表达水平高于健康供体(n=5)。

结论

我们基于机器学习算法和生物信息学建立了一个稳定且准确的特征,用于评估脓毒症的诊断。SCAMP5 初步被鉴定为脓毒症的诊断标志物,可能通过调节 ER 应激影响其进展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a91f/9530749/0fb2544f8ff4/fimmu-13-995974-g001.jpg

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