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免疫分类器与脊髓损伤早期诊断及巨噬细胞 M1 相关的综合全景图。

Comprehensive landscape of immune-based classifier related to early diagnosis and macrophage M1 in spinal cord injury.

机构信息

Department of Orthopaedics, Xi-Jing Hospital, The Fourth Military Medical University, Xi’an 710032, China.

Department of Orthopaedics, Shenzhen University General Hospital, Shenzhen 518052, China.

出版信息

Aging (Albany NY). 2023 Feb 23;15(4):1158-1176. doi: 10.18632/aging.204548.

Abstract

Numerous studies have documented that immune responses are crucial in the pathophysiology of spinal cord injury (SCI). Our study aimed to uncover the function of immune-related genes (IRGs) in SCI. Here, we comprehensively evaluated the transcriptome data of SCI and healthy controls (HC) obtained from the GEO Database integrating bioinformatics and experiments. First, a total of 2067 DEGs were identified between the SCI and HC groups. Functional enrichment analysis revealed substantial immune-related pathways and functions that were abnormally activated in the SCI group. Immune analysis revealed that myeloid immune cells were predominantly upregulated in SCI patients, while a large number of lymphoid immune cells were dramatically downregulated. Subsequently, 51 major IRGs were screened as key genes involved in SCI based on the intersection of the results of WGCNA analysis, DEGs, and IRGs. Based on the expression profiles of these genes, two distinct immune modulation patterns were recognized exhibiting opposite immune characteristics. Moreover, 2 core IRGs (FCER1G and NFATC2) were determined to accurately predict the occurrence of SCI via machine learning. qPCR analysis was used to validate the expression of core IRGs in an external independent cohort. Finally, the expression of these core IRGs was validated by sequencing, WB, and IF analysis . We found that these two core IRGs were closely associated with immune cells and verified the co-localization of FCER1G with macrophage M1 via IF analysis. Our study revealed the key role of immune-related genes in SCI and contributed to a fresh perspective for early diagnosis and treatment of SCI.

摘要

大量研究表明,免疫反应在脊髓损伤(SCI)的病理生理学中起着至关重要的作用。我们的研究旨在揭示免疫相关基因(IRGs)在 SCI 中的功能。在这里,我们综合评估了 GEO 数据库中 SCI 和健康对照(HC)的转录组数据,整合了生物信息学和实验。首先,我们在 SCI 和 HC 组之间鉴定了 2067 个差异表达基因(DEGs)。功能富集分析揭示了大量异常激活的免疫相关途径和功能。免疫分析表明,髓系免疫细胞在 SCI 患者中明显上调,而大量淋巴免疫细胞显著下调。随后,根据 WGCNA 分析、DEGs 和 IRGs 的结果的交集,筛选出 51 个主要的 IRGs 作为参与 SCI 的关键基因。基于这些基因的表达谱,我们识别出两种截然不同的免疫调节模式,表现出相反的免疫特征。此外,我们确定了 2 个核心 IRGs(FCER1G 和 NFATC2)可通过机器学习准确预测 SCI 的发生。qPCR 分析用于验证独立外部队列中核心 IRGs 的表达。最后,通过测序、WB 和 IF 分析验证了这些核心 IRGs 的表达。我们发现这两个核心 IRGs与免疫细胞密切相关,并通过 IF 分析验证了 FCER1G 与巨噬细胞 M1 的共定位。我们的研究揭示了免疫相关基因在 SCI 中的关键作用,为 SCI 的早期诊断和治疗提供了新的视角。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ab99/10008498/9611f677c80e/aging-15-204548-g001.jpg

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