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利用多个数据集探索脓毒症的分子机制。

Multiple datasets to explore the molecular mechanism of sepsis.

机构信息

Emergency Department, Fourth Affiliated Hospital of Xinjiang Medical University, Shayibake District, No. 116, Huanghe Road, Urumqi, 830000, Xinjiang Uygur Autonomous Region, China.

Department of Critical Care Medicine, Fifth Affiliated Hospital of Xinjiang Medical University, Urumqi, 830000, Xinjiang Uygur Autonomous Region, China.

出版信息

BMC Genom Data. 2022 Aug 15;23(1):66. doi: 10.1186/s12863-022-01078-2.

Abstract

BACKGROUND

This study aimed to identify potential biomarkers, by means of bioinformatics, affecting the occurrence and development of septic shock.

METHODS

Download GSE131761 septic shock data set from NCBI geo database, including 33 control samples and 81 septic shock samples. GSE131761 and sequencing data were used to identify and analyze differentially expressed genes in septic shock patients and normal subjects. In addition, with sequencing data as training set and GSE131761 as validation set, a diagnostic model was established by lasso regression to identify key genes. ROC curve verified the stability of the model. Finally, immune infiltration analysis, enrichment analysis, transcriptional regulation analysis and correlation analysis of key genes were carried out to understand the potential molecular mechanism of key genes affecting septic shock.

RESULTS

A total of 292 differential genes were screened out from the self-test data, 294 differential genes were screened out by GSE131761, Lasso regression was performed on the intersection genes of the two, a diagnostic model was constructed, and 5 genes were identified as biomarkers of septic shock. These 5 genes were SIGLEC10, VSTM1, GYPB, OPTN, and GIMAP7. The five key genes were strongly correlated with immune cells, and the ROC results showed that the five genes had good predictive performance on the occurrence and development of diseases. In addition, the key genes were strongly correlated with immune regulatory genes.

CONCLUSION

In this study, a series of algorithms were used to identify five key genes that are associated with septic shock, which may become potential candidate targets for septic shock diagnosis and treatment.

TRIAL REGISTRATION

Approval number:2019XE0149-1.

摘要

背景

本研究旨在通过生物信息学方法鉴定影响脓毒症休克发生和发展的潜在生物标志物。

方法

从 NCBI geo 数据库中下载 GSE131761 脓毒症休克数据集,包括 33 个对照样本和 81 个脓毒症休克样本。使用 GSE131761 和测序数据来识别和分析脓毒症患者和正常受试者之间的差异表达基因。此外,使用测序数据作为训练集和 GSE131761 作为验证集,通过lasso 回归建立诊断模型,以识别关键基因。ROC 曲线验证了模型的稳定性。最后,对关键基因进行免疫浸润分析、富集分析、转录调控分析和相关性分析,以了解关键基因影响脓毒症休克的潜在分子机制。

结果

从自我测试数据中筛选出 292 个差异基因,从 GSE131761 筛选出 294 个差异基因,对两个数据集的交集基因进行 lasso 回归,构建诊断模型,鉴定出 5 个脓毒症休克的生物标志物。这 5 个基因分别是 SIGLEC10、VSTM1、GYPB、OPTN 和 GIMAP7。这 5 个关键基因与免疫细胞强烈相关,ROC 结果表明,这 5 个基因对疾病的发生和发展具有良好的预测性能。此外,关键基因与免疫调节基因强烈相关。

结论

本研究采用一系列算法鉴定出与脓毒症休克相关的 5 个关键基因,这些基因可能成为脓毒症休克诊断和治疗的潜在候选靶点。

试验注册

注册号:2019XE0149-1。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/29b1/9380322/ab9dac1d7258/12863_2022_1078_Fig1_HTML.jpg

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