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通过综合生物信息学分析鉴定特应性皮炎中有效的诊断生物标志物和免疫细胞浸润

Identification of Effective Diagnostic Biomarkers and Immune Cell Infiltration in Atopic Dermatitis by Comprehensive Bioinformatics Analysis.

作者信息

Li Chenyang, Lu Yongping, Han Xiuping

机构信息

Department of Dermatology, Shengjing Hospital of China Medical University, Shenyang, China.

NHC Key Laboratory of Reproductive Health and Medical Genetics, Liaoning Research Institute of Family Planning, The Affiliated Reproductive Hospital of China Medical University, Shenyang, China.

出版信息

Front Mol Biosci. 2022 Jul 14;9:917077. doi: 10.3389/fmolb.2022.917077. eCollection 2022.

Abstract

Atopic dermatitis (AD) is a dermatological disorder characterized by symptoms such as chronically inflamed skin and frequently intolerable itching. The mechanism underlying AD development is still unclear. Our study aims to identify the diagnostic and therapeutic biomarkers for AD and provide insight into immune mechanisms at the molecular level through bioinformatics analysis. The GSE6012, GSE32924, and GSE36842 gene expression profiles were obtained for analysis from the Gene Expression Omnibus database. Differentially expressed genes (DEGs) were segregated using the "Batch correction" and "RobustRankAggreg" methods. Weighted gene co-expression network analysis (WGCNA) was performed to screen for module genes with AD traits. Then, common DEGs (co-DEGs) were screened out via combined differential expression analysis and WGCNA. Functional enrichment analysis was performed for these co-DEGs using Gene Ontology (GO) and the Kyoto Encyclopedia of Genes and Genomes (KEGG), followed by protein-protein interaction network analysis. Candidate hub genes were identified using the "cytoHubba" plugin in Cytoscape, and their value for AD diagnosis was validated using receiver operating characteristic curve analysis in the external database GSE120721. Immunohistochemical staining was performed for further validation. The CIBERSORT algorithm was used to evaluate skin samples obtained from healthy controls (HCs) and lesions of AD patients, to determine the extent of immune cell infiltration. The association between the identified hub genes and significant differential immune cells was analyzed using Pearson correlation analysis. A total of 259 DEGs were acquired from the intersection of DEGs obtained by the two independent procedures, and 331 AD-trait module genes were separated out from the blue module via WGCNA analysis. Then, 169 co-DEGs arising from the intersection of the 259 DEGs and the 331 AD-trait module genes were obtained. We found that co-DEGs were significantly enhanced in the type I interferon and IL-17 signal transduction pathways. Thirteen potential hub genes were identified using Cytoscape. Five hub genes (CCR7, CXCL10, IRF7, MMP1, and RRM2) were identified after screening via external dataset validation and immunohistochemical analysis. We also identified four significant differential immune cells, i.e., activated dendritic cells, plasma cells, resting mast cells, and CD4 naïve T cells, between AD patients and HCs. Moreover, the relationship between the identified hub genes and significant differential immune cells was analyzed. The results showed that the CCR7 expression level was positively correlated with the number of CD4 naïve T cells (R = 0.42, = 0.011). CCR7, CXCL10, IRF7, MMP1, and RRM2 could be potential diagnostic and therapeutic biomarkers for AD. CCR7 expression level was positively correlated with the number of CD4 naïve T cells in AD. These findings need to be corroborated in future studies.

摘要

特应性皮炎(AD)是一种皮肤病,其特征为皮肤长期发炎和频繁出现难以忍受的瘙痒等症状。AD发病的潜在机制仍不清楚。我们的研究旨在识别AD的诊断和治疗生物标志物,并通过生物信息学分析在分子水平深入了解免疫机制。从基因表达综合数据库获取GSE6012、GSE32924和GSE36842基因表达谱进行分析。使用“批次校正”和“稳健排名聚合”方法分离差异表达基因(DEG)。进行加权基因共表达网络分析(WGCNA)以筛选具有AD特征的模块基因。然后,通过联合差异表达分析和WGCNA筛选出共同的DEG(共DEG)。使用基因本体论(GO)和京都基因与基因组百科全书(KEGG)对这些共DEG进行功能富集分析,随后进行蛋白质-蛋白质相互作用网络分析。使用Cytoscape中的“cytoHubba”插件识别候选枢纽基因,并在外部数据库GSE120721中使用受试者工作特征曲线分析验证其对AD诊断的价值。进行免疫组织化学染色以进一步验证。使用CIBERSORT算法评估从健康对照(HC)和AD患者病变处获取的皮肤样本,以确定免疫细胞浸润程度。使用Pearson相关分析分析已识别的枢纽基因与显著差异免疫细胞之间的关联。通过两种独立程序获得的DEG的交集共获得259个DEG,通过WGCNA分析从蓝色模块中分离出331个具有AD特征的模块基因。然后,获得了259个DEG与331个具有AD特征的模块基因的交集中产生的169个共DEG。我们发现共DEG在I型干扰素和IL-17信号转导途径中显著增强。使用Cytoscape识别出13个潜在的枢纽基因。通过外部数据集验证和免疫组织化学分析筛选后,鉴定出5个枢纽基因(CCR7、CXCL10、IRF7、MMP1和RRM2)。我们还在AD患者和HC之间鉴定出4种显著差异的免疫细胞,即活化的树突状细胞、浆细胞、静息肥大细胞和CD4幼稚T细胞。此外,分析了已识别的枢纽基因与显著差异免疫细胞之间的关系。结果显示CCR7表达水平与CD4幼稚T细胞数量呈正相关(R = 0.42,P = 0.011)。CCR7、CXCL10、IRF7、MMP1和RRM2可能是AD潜在的诊断和治疗生物标志物。AD中CCR7表达水平与CD4幼稚T细胞数量呈正相关。这些发现需要在未来的研究中得到证实。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/17a8/9330059/4fd2522dfa1e/fmolb-09-917077-g001.jpg

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