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鉴定与重度抑郁症和特应性皮炎中免疫浸润相关的新型生物标志物。

Identification of novel biomarkers associated with immune infiltration in major depression disorder and atopic dermatitis.

作者信息

Jiang Han, Gong Bizhen, Yan Zhaoxian, Wang Peng, Hong Jing

机构信息

Science and Technology Innovation Center, Guangzhou University of Chinese Medicine, Guangzhou, 510405, Guangdong, China.

Postgraduate School, Medical School of Chinese People's Liberation Army, Beijing, 100853, China.

出版信息

Arch Dermatol Res. 2025 Feb 15;317(1):417. doi: 10.1007/s00403-025-03907-7.

Abstract

Major depression disorder (MDD) and atopic dermatitis (AD) are distinct disorders involving immune inflammatory responses. This study aimed to investigate the comorbid relationship between AD and MDD and to identify possible common mechanisms. We obtained AD and MDD data from the Gene Expression Omnibus (GEO) database. Differential expression analysis and the Genecard database were employed to identify shared genes associated with inflammatory diseases. These shared genes were then subjected to gene ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analyses. Hub genes were selected based on the protein-protein interactions using CytoHubba, and key regulatory genes were identified through enrichment analysis. Subsequently, we conducted immune infiltration and correlation analyses of the shared genes in AD. Finally, we employed three machine learning models to predict the significance of shared genes. A total of 17 shared genes were identified in the AD_Inflammatory_MDD dataset (S100A9, PTGER2, PI3, SNCA, DAB2, PDGFA, FSTL1, CALD1, XK, UTS2, DHRS9, PARD3, NFIB, TMEM158, LIPH, RAB27B, and SH3BRL2). These genes were associated with biological processes such as the regulation of mesenchymal cell proliferation, cellular ketone metabolic processes, and glial cell differentiation. The neuroactive ligand-receptor interaction, IL-17 signaling, and Rap1 signaling pathways were significantly enriched in KEGG analysis. SNCA, S100A9, SH3BGRL2, RAB27B, TMEM158, DAB2, FSTL1, CALD1, and XK were identified as hub genes contributing to comorbid AD and MDD development. The three machine learning models consistently identified SNCA and PARD3 as important biomarkers.SNCA, S100A9, SH3BGRL2, RAB27B, TMEM158, DAB2, FSTL1, CALD1, and XK were identified as significant genes contributing to the development of AD and MDD comorbidities. Immune infiltration analysis showed a notable increase in the infiltration of various subtypes of CD4 + T cells, suggesting a potential association between the development of skin inflammation and the immune response. Across different machine learning models, SNCA and PARD3 consistently emerged as important biomarkers, providing a new direction for clinical diagnosis and treatment.

摘要

重度抑郁症(MDD)和特应性皮炎(AD)是涉及免疫炎症反应的不同疾病。本研究旨在调查AD与MDD之间的共病关系,并确定可能的共同机制。我们从基因表达综合数据库(GEO)中获取了AD和MDD的数据。采用差异表达分析和基因卡数据库来识别与炎症性疾病相关的共享基因。然后对这些共享基因进行基因本体(GO)和京都基因与基因组百科全书(KEGG)通路富集分析。使用CytoHubba基于蛋白质-蛋白质相互作用选择枢纽基因,并通过富集分析确定关键调控基因。随后,我们对AD中共享基因进行了免疫浸润和相关性分析。最后,我们采用三种机器学习模型来预测共享基因的重要性。在AD_Inflammatory_MDD数据集中共鉴定出17个共享基因(S100A9、PTGER2、PI3、SNCA、DAB2、PDGFA、FSTL1、CALD1、XK、UTS2、DHRS9、PARD3、NFIB、TMEM158、LIPH、RAB27B和SH3BRL2)。这些基因与间充质细胞增殖调控、细胞酮代谢过程和神经胶质细胞分化等生物学过程相关。KEGG分析显示神经活性配体-受体相互作用、IL-17信号通路和Rap1信号通路显著富集。SNCA、S100A9、SH3BGRL2、RAB27B、TMEM158、DAB2、FSTL1、CALD1和XK被确定为促成AD和MDD共病发展的枢纽基因。三种机器学习模型一致将SNCA和PARD3确定为重要生物标志物。SNCA、S100A9、SH3BGRL2、RAB27B、TMEM158、DAB2、FSTL1、CALD1和XK被确定为促成AD和MDD共病发展的重要基因。免疫浸润分析显示CD4 + T细胞各种亚型的浸润显著增加,表明皮肤炎症发展与免疫反应之间可能存在关联。在不同的机器学习模型中,SNCA和PARD3始终作为重要生物标志物出现,为临床诊断和治疗提供了新方向。

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