Li Yang, Ouyang Xiao-Yong, Wen Wei-Bo
Traditional Chinese Medicine Department, Yunnan Maternal and Child Health Hospital, Kunming, China.
Department of Dermatology, Yunnan Provincial Traditional Chinese Medicine Hospital, Kunming, China.
Medicine (Baltimore). 2025 Jul 4;104(27):e42291. doi: 10.1097/MD.0000000000042291.
Atopic dermatitis (AD) is one of the most common chronic inflammatory skin diseases with complex pathogenesis and no effective treatment. This study aims to use bioinformatics methods to identify biomarkers and explore the mechanism for AD. We performed differential expression analysis based on transcriptome datasets GSE16161 and GSE32924. Next, the differentially expressed genes (DEGs) were subjected to Kyoto Encyclopedia of Genes and Genomes enrichment analysis. After integrating PPI network obtained from STRING database, we screened modular genes and identified candidate key genes by the MCC and degree algorithms. We selected genes with strong ROC performance and consistent expression levels as key genes, and constructed a nomogram to assess their potential as AD biomarkers. Finally, by analyzing the scRNA-seq dataset GSE180885, we identified the key cells associated with the key genes and conducted pseudotime analysis based on these key cells to explore the pathogenic mechanisms of AD. The results showed that 618 DEGs were identified and some important pathways, including Cytokine-Cytokine Receptor Interaction, Cell Cycle, Cell Adhesion Molecules and Calcium Signaling Pathway were screened out. Seven key genes were identified and they were CCNA2, CCNB1, KIF2C, CEP55, MELK, CDC20, and CCNB2. The nomogram analysis suggested that these key genes had the potential to serve as biomarkers for AD. Through scRNA-seq data analysis, we identified 9 cell subpopulations, with keratinocytes were identified as the key cells, and 6 out of 7 key genes showed significant expression in keratinocytes. Pseudotime analysis revealed that DEGs in keratinocytes played a vital role in the cellular differentiation process of AD. We successfully identified CCNA2, CCNB1, KIF2C, CEP55, MELK, CDC20, and CCNB2, as potential biomarkers for AD through transcriptomic and scRNA-seq data analysis.
特应性皮炎(AD)是最常见的慢性炎症性皮肤病之一,其发病机制复杂且尚无有效治疗方法。本研究旨在运用生物信息学方法鉴定生物标志物并探索AD的发病机制。我们基于转录组数据集GSE16161和GSE32924进行差异表达分析。接下来,对差异表达基因(DEGs)进行京都基因与基因组百科全书富集分析。整合从STRING数据库获得的蛋白质-蛋白质相互作用(PPI)网络后,我们筛选了模块基因,并通过最大团中心性(MCC)和度算法鉴定了候选关键基因。我们选择具有强ROC性能和一致表达水平的基因作为关键基因,并构建列线图以评估它们作为AD生物标志物的潜力。最后,通过分析单细胞RNA测序(scRNA-seq)数据集GSE180885,我们鉴定了与关键基因相关的关键细胞,并基于这些关键细胞进行拟时间分析以探索AD的发病机制。结果显示,共鉴定出618个DEGs,并筛选出一些重要途径,包括细胞因子-细胞因子受体相互作用、细胞周期、细胞黏附分子和钙信号通路。鉴定出7个关键基因,分别为CCNA2、CCNB1、KIF2C、CEP55、MELK、CDC20和CCNB2。列线图分析表明,这些关键基因有潜力作为AD的生物标志物。通过scRNA-seq数据分析,我们鉴定出9个细胞亚群,其中角质形成细胞被确定为关键细胞,7个关键基因中有6个在角质形成细胞中表现出显著表达。拟时间分析表明,角质形成细胞中的DEGs在AD的细胞分化过程中起关键作用。通过转录组和scRNA-seq数据分析,我们成功鉴定出CCNA2、CCNB1、KIF2C、CEP55、MELK、CDC20和CCNB2作为AD的潜在生物标志物。