Department of Clinical Laboratory, State Key Laboratory of Complex Severe and Rare Diseases, Peking Union Medical College Hospital, Chinese Academy of Medical Science and Peking Union Medical College, 1 Shuaifuyuan, Dongcheng District, Beijing, 100730, China.
Department of Medical Research Center, Peking Union Medical College Hospital, Chinese Academy of Medical Science and Peking Union Medical College, Beijing, 100730, China.
Immunol Res. 2023 Dec;71(6):860-872. doi: 10.1007/s12026-023-09398-w. Epub 2023 Jun 21.
Behcet's disease (BD) is a chronic inflammatory vasculitis and clinically heterogeneous disorder caused by immunocyte aberrations. Comprehensive research on gene expression patterns in BD illuminating its aetiology is lacking. E-MTAB-2713 downloaded from ArrayExpress was analysed to screen differentially expressed genes (DEGs) using limma. Random forest (RF) and neural network (NN) classification models composed of gene signatures were established using the E-MTAB-2713 training set and subsequently verified using GSE17114. Single sample gene set enrichment analysis was used to assess immunocyte infiltration. After identifying DEGs in E-MTAB-2713, pathogen-triggered, lymphocyte-mediated and angiogenesis- and glycosylation-related inflammatory pathways were discovered to be predominant in BD episodes. Gene signatures from the RF and NN diagnostic models, together with genes enriched in angiogenesis and glycosylation pathways, well discriminated the clinical subtypes of BD manifesting as mucocutaneous, ocular and large vein thrombosis involvement in GSE17114. Moreover, a distinctive immunocyte profile revealed T, NK and dendritic cell activation in BD compared to the findings in healthy controls. Our findings suggested that EPHX1, PKP2, EIF4B and HORMAD1 expression in CD14+ monocytes and CSTF3 and TCEANC2 expression in CD16+ neutrophils could serve as combined gene signatures for BD phenotype differentiation. Pathway genes comprising ATP2B4, MYOF and NRP1 for angiogenesis and GXYLT1, ENG, CD69, GAA, SIGLEC7, SIGLEC9 and SIGLEC16 for glycosylation also might be applicable diagnostic markers for subtype identification.
贝赫切特病(BD)是一种由免疫细胞异常引起的慢性炎症性血管炎和临床表现多样的疾病。对 BD 的基因表达模式进行全面研究,以阐明其病因,但目前仍有所欠缺。本研究从 ArrayExpress 下载 E-MTAB-2713 数据集,使用 limma 分析筛选差异表达基因(DEGs)。使用 E-MTAB-2713 训练集建立随机森林(RF)和神经网络(NN)分类模型,并使用 GSE17114 数据集进行验证。采用单样本基因集富集分析评估免疫细胞浸润情况。在鉴定 E-MTAB-2713 中的 DEGs 后,发现病原体触发、淋巴细胞介导以及血管生成和糖基化相关的炎症途径在 BD 发作中占主导地位。RF 和 NN 诊断模型的基因特征,以及在血管生成和糖基化途径中富集的基因,能够很好地区分 GSE17114 中表现为黏膜皮肤、眼部和大静脉血栓形成的 BD 临床亚型。此外,与健康对照组相比,BD 中存在 T、NK 和树突状细胞激活的独特免疫细胞特征。我们的研究结果表明,CD14+单核细胞中 EPHX1、PKP2、EIF4B 和 HORMAD1 的表达以及 CD16+中性粒细胞中 CSTF3 和 TCEANC2 的表达可作为 BD 表型分化的联合基因特征。血管生成相关基因 ATP2B4、MYOF 和 NRP1 以及糖基化相关基因 GXYLT1、ENG、CD69、GAA、SIGLEC7、SIGLEC9 和 SIGLEC16 也可能是用于亚型识别的诊断标志物。