肝纤维化中中性粒细胞胞外捕获网络相关生物标志物:机器学习和实验验证。

IF 7.5 2区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Yanbo Li, Yanping Lu, Bohao Huang, Chao Lei, Qingjuan Wu, Jiuchong Wang
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引用次数: 0

摘要

背景:中性粒细胞胞外陷阱(NETs)在肝纤维化(LF)中的诊断和治疗潜力尚未得到充分探讨。我们的目标是通过机器学习筛选和验证nets相关的肝纤维化生物标志物。方法:为获得NETs相关差异表达基因(NETs- degs),对GEO数据集(GSE84044、GSE49541)和NETs数据集进行差异分析和WGCNA分析。富集分析和蛋白相互作用分析揭示了nets相关肝纤维化的候选基因和潜在机制。使用SVM-RFE和Boruta机器学习算法筛选生物标志物,然后进行免疫浸润分析。构建小鼠多阶段纤维化模型,采用免疫组织化学、免疫荧光、流式细胞术和qPCR检测中性粒细胞浸润、NETs积累及NETs相关生物标志物。最后,对生物标志物的分子调控网络和潜在药物进行了预测。结果:共鉴定出166个NETs-DEGs。通过富集分析,这些基因主要富集于趋化因子信号通路和细胞因子-细胞因子受体相互作用通路。机器学习筛选CCL2作为nets相关的肝纤维化生物标志物,参与核糖体相关过程、细胞周期调节和同种异体移植排斥途径。免疫浸润分析显示,纤维化样品与健康样品的22种免疫细胞亚型存在显著差异,其中包括主要与NETs产生相关的中性粒细胞。体内实验结果显示,中性粒细胞浸润、NETs积累和CCL2水平在纤维化过程中上调。基于CCL2共鉴定出5个mirna、2个lncrna、20个功能相关基因和6个潜在药物。结论:本研究确定CCL2是nets相关肝纤维化的生物标志物,为理解nets介导的纤维化机制和促进治疗发现提供了新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neutrophil extracellular trapping network-associated biomarkers in liver fibrosis: machine learning and experimental validation.

Background: The diagnostic and therapeutic potential of neutrophil extracellular traps (NETs) in liver fibrosis (LF) has not been fully explored. We aim to screen and verify NETs-related liver fibrosis biomarkers through machine learning.

Methods: In order to obtain NETs-related differentially expressed genes (NETs-DEGs), differential analysis and WGCNA analysis were performed on the GEO dataset (GSE84044, GSE49541) and the NETs dataset. Enrichment analysis and protein interaction analysis were used to reveal the candidate genes and potential mechanisms of NETs-related liver fibrosis. Biomarkers were screened using SVM-RFE and Boruta machine learning algorithms, followed by immune infiltration analysis. A multi-stage model of fibrosis in mice was constructed, and neutrophil infiltration, NETs accumulation and NETs-related biomarkers were characterized by immunohistochemistry, immunofluorescence, flow cytometry and qPCR. Finally, the molecular regulatory network and potential drugs of biomarkers were predicted.

Results: A total of 166 NETs-DEGs were identified. Through enrichment analysis, these genes were mainly enriched in chemokine signaling pathway and cytokine-cytokine receptor interaction pathway. Machine learning screened CCL2 as a NETs-related liver fibrosis biomarker, involved in ribosome-related processes, cell cycle regulation and allograft rejection pathways. Immune infiltration analysis showed that there were significant differences in 22 immune cell subtypes between fibrotic samples and healthy samples, including neutrophils mainly related to NETs production. The results of in vivo experiments showed that neutrophil infiltration, NETs accumulation and CCL2 level were up-regulated during fibrosis. A total of 5 miRNAs, 2 lncRNAs, 20 function-related genes and 6 potential drugs were identified based on CCL2.

Conclusions: This study identified CCL2 as a biomarker for nets-related liver fibrosis, providing a new perspective for understanding the mechanisms of nets-mediated fibrosis and promoting therapeutic discovery.

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来源期刊
Journal of Translational Medicine
Journal of Translational Medicine 医学-医学:研究与实验
CiteScore
10.00
自引率
1.40%
发文量
537
审稿时长
1 months
期刊介绍: The Journal of Translational Medicine is an open-access journal that publishes articles focusing on information derived from human experimentation to enhance communication between basic and clinical science. It covers all areas of translational medicine.
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