Department of Prenatal Diagnosis, The First Afliated Hospital of Guangxi Medical University, Nanning, Guangxi, China.
Guangxi Key Laboratory of Thalassemia Research, Nanning, Guangxi, China.
Front Immunol. 2023 Aug 25;14:1241816. doi: 10.3389/fimmu.2023.1241816. eCollection 2023.
Recurrent pregnancy loss defined as the occurrence of two or more pregnancy losses before 20-24 weeks of gestation, is a prevalent and significant pathological condition that impacts human reproductive health. However, the underlying mechanism of RPL remains unclear. This study aimed to investigate the biomarkers and molecular mechanisms associated with RPL and explore novel treatment strategies for clinical applications.
The GEO database was utilized to retrieve the RPL gene expression profile GSE165004. This profile underwent differential expression analysis, WGCNA, functional enrichment, and subsequent analysis of RPL gene expression using LASSO regression, SVM-RFE, and RandomForest algorithms for hub gene screening. ANN model were constructed to assess the performance of hub genes in the dataset. The expression of hub genes in both the RPL and control group samples was validated using RT-qPCR. The immune cell infiltration level of RPL was assessed using CIBERSORT. Additionally, pan-cancer analysis was conducted using Sangerbox, and small-molecule drug screening was performed using CMap.
A total of 352 DEGs were identified, including 198 up-regulated genes and 154 down-regulated genes. Enrichment analysis indicated that the DEGs were primarily associated with Fc gamma R-mediated phagocytosis, the Fc epsilon RI signaling pathway, and various metabolism-related pathways. The turquoise module, which showed the highest relevance to clinical symptoms based on WGCNA results, contained 104 DEGs. Three hub genes, WBP11, ACTR2, and NCSTN, were identified using machine learning algorithms. ROC curves demonstrated a strong diagnostic value when the three hub genes were combined. RT-qPCR confirmed the low expression of WBP11 and ACTR2 in RPL, whereas NCSTN exhibited high expression. The immune cell infiltration analysis results indicated an imbalance of macrophages in RPL. Meanwhile, these three hub genes exhibited aberrant expression in multiple malignancies and were associated with a poor prognosis. Furthermore, we identified several small-molecule drugs.
This study identifies and validates hub genes in RPL, which may lead to significant advancements in understanding the molecular mechanisms and treatment strategies for this condition.
复发性流产是指在 20-24 周妊娠之前发生两次或更多次妊娠丢失的情况,是一种普遍存在且严重影响人类生殖健康的病理性状况。然而,RPL 的潜在机制尚不清楚。本研究旨在探讨与 RPL 相关的生物标志物和分子机制,并探索新的治疗策略以应用于临床。
利用 GEO 数据库检索 RPL 基因表达谱 GSE165004。对该数据集进行差异表达分析、WGCNA、功能富集分析,随后使用 LASSO 回归、SVM-RFE 和 RandomForest 算法进行 RPL 基因表达分析,以筛选出关键基因。使用 ANN 模型评估关键基因在数据集的表现。使用 RT-qPCR 验证关键基因在 RPL 组和对照组样本中的表达。使用 CIBERSORT 评估 RPL 的免疫细胞浸润水平。此外,使用 Sangerbox 进行泛癌分析,使用 CMap 进行小分子药物筛选。
共鉴定出 352 个 DEGs,其中包括 198 个上调基因和 154 个下调基因。富集分析表明,DEGs 主要与 FcγR 介导的吞噬作用、FcεRI 信号通路和多种代谢相关通路相关。根据 WGCNA 结果,与临床症状相关性最高的 turquoise 模块包含 104 个 DEGs。使用机器学习算法识别出 3 个关键基因,即 WBP11、ACTR2 和 NCSTN。ROC 曲线表明,当这 3 个关键基因联合使用时,具有很强的诊断价值。RT-qPCR 验证了 WBP11 和 ACTR2 在 RPL 中的低表达,而 NCSTN 则表现出高表达。免疫细胞浸润分析结果表明 RPL 中巨噬细胞失衡。同时,这三个关键基因在多种恶性肿瘤中表现出异常表达,且与预后不良相关。此外,我们还鉴定出了一些小分子药物。
本研究鉴定和验证了 RPL 中的关键基因,这可能会对深入了解该疾病的分子机制和治疗策略产生重大影响。