Duan Yuwei, Liu Yongxiang, Xu Yanwen, Zhou Canquan
Reproductive Medicine Center, The First Affiliated Hospital, Sun Yat-Sen University, Guangzhou, 510080, Guangdong, China.
Guangdong Provincial Key Laboratory of Reproductive Medicine, Guangzhou, 510080, Guangdong, China.
Reprod Sci. 2023 Mar;30(3):952-965. doi: 10.1007/s43032-022-01060-4. Epub 2022 Aug 31.
Recurrent implantation failure (RIF) is a thorny problem often encountered in the field of assisted reproduction. Existing evidences suggest that immune dysregulation may be involved in the pathogenesis of RIF. The purpose of this study is to explore immune-related genes contributing to RIF through data mining. The endometrial expression profiles of 24 RIF and 24 controls were obtained from the GEO database. The immune infiltration in bulk tissue was estimated by single sample gene set enrichment analysis (ssGSEA) method based on marker gene sets for immune cells generated from endometrial single-cell RNA sequencing data. The results showed that the infiltration levels of B cells and regulatory T cells (Tregs) were significantly reduced in the RIF group. Four hub genes (GJA1, PRKAG2, CPT1A, and ICA1) were identified by integrated analysis of weighted gene co-expression network analysis (WGCNA), random forest and LASSO regression. Moreover, these hub genes were significantly correlated with certain immune-related factors, especially CXCL12, CEACAM1, and XCR1. Single-gene GSEA indicated that the pathways associated with hub genes included the regulation of cell cycle, the process of epithelial-mesenchymal transition and transplant rejection, etc. A predictive model for RIF was constructed based on hub genes and performed well in the training dataset and the other two external datasets. Thus, this study identified immune-related key genes in RIF and provided new biomarkers for early diagnosis.
反复种植失败(RIF)是辅助生殖领域经常遇到的一个棘手问题。现有证据表明,免疫失调可能参与了RIF的发病机制。本研究的目的是通过数据挖掘探索导致RIF的免疫相关基因。从基因表达综合数据库(GEO数据库)中获取了24例RIF患者和24例对照者的子宫内膜表达谱。基于从子宫内膜单细胞RNA测序数据生成的免疫细胞标记基因集,采用单样本基因集富集分析(ssGSEA)方法估计大块组织中的免疫浸润情况。结果显示,RIF组中B细胞和调节性T细胞(Tregs)的浸润水平显著降低。通过加权基因共表达网络分析(WGCNA)、随机森林和套索回归的综合分析,确定了四个核心基因(GJA1、PRKAG2、CPT1A和ICA1)。此外,这些核心基因与某些免疫相关因子显著相关,尤其是CXCL12、癌胚抗原相关细胞黏附分子1(CEACAM1)和XCR1。单基因基因集富集分析表明,与核心基因相关的通路包括细胞周期调控、上皮-间质转化过程和移植排斥等。基于核心基因构建了RIF的预测模型,该模型在训练数据集和其他两个外部数据集中表现良好。因此,本研究确定了RIF中与免疫相关的关键基因,并为早期诊断提供了新的生物标志物。