Department of Gynecology, People's Hospital Affiliated of Fujian University of Traditional Chinese Medicine, Fuzhou, China.
First Clinical Medical College, Fujian University of Traditional Chinese Medicine, Fuzhou, China.
Front Endocrinol (Lausanne). 2024 Aug 1;15:1372221. doi: 10.3389/fendo.2024.1372221. eCollection 2024.
Endometriosis (EM) is a prevalent gynecological disorder frequently associated with irregular menstruation and infertility. Programmed cell death (PCD) is pivotal in the pathophysiological mechanisms underlying EM. Despite this, the precise pathogenesis of EM remains poorly understood, leading to diagnostic delays. Consequently, identifying biomarkers associated with PCD is critical for advancing the diagnosis and treatment of EM.
This study used datasets from the Gene Expression Omnibus (GEO) to identify differentially expressed genes (DEGs) following preprocessing. By cross-referencing these DEGs with genes associated with PCD, differentially expressed PCD-related genes (DPGs) were identified. Enrichment analyses for KEGG and GO pathways were conducted on these DPGs. Additionally, Mendelian randomization and machine learning techniques were applied to identify biomarkers strongly associated with EM.
The study identified three pivotal biomarkers: TNFSF12, AP3M1, and PDK2, and established a diagnostic model for EM based on these genes. The results revealed a marked upregulation of TNFSF12 and PDK2 in EM samples, coupled with a significant downregulation of AP3M1. Single-cell analysis further underscored the potential of TNFSF12, AP3M1, and PDK2 as biomarkers for EM. Additionally, molecular docking studies demonstrated that these genes exhibit significant binding affinities with drugs currently utilized in clinical practice.
This study systematically elucidated the molecular characteristics of PCD in EM and identified TNFSF12, AP3M1, and PDK2 as key biomarkers. These findings provide new directions for the early diagnosis and personalized treatment of EM.
子宫内膜异位症(EM)是一种常见的妇科疾病,常伴有月经不规律和不孕。程序性细胞死亡(PCD)在 EM 的病理生理机制中起着关键作用。尽管如此,EM 的确切发病机制仍知之甚少,导致诊断延误。因此,确定与 PCD 相关的生物标志物对于推进 EM 的诊断和治疗至关重要。
本研究使用基因表达综合数据库(GEO)中的数据集进行差异表达基因(DEGs)的识别和预处理。通过与与 PCD 相关的基因交叉参考,确定差异表达的 PCD 相关基因(DPGs)。对这些 DPGs 进行 KEGG 和 GO 通路的富集分析。此外,应用孟德尔随机化和机器学习技术来识别与 EM 强烈相关的生物标志物。
本研究确定了三个关键的生物标志物:TNFSF12、AP3M1 和 PDK2,并基于这些基因建立了 EM 的诊断模型。结果表明,EM 样本中 TNFSF12 和 PDK2 的表达显著上调,而 AP3M1 的表达显著下调。单细胞分析进一步强调了 TNFSF12、AP3M1 和 PDK2 作为 EM 生物标志物的潜力。此外,分子对接研究表明,这些基因与目前临床实践中使用的药物具有显著的结合亲和力。
本研究系统阐明了 EM 中 PCD 的分子特征,并确定了 TNFSF12、AP3M1 和 PDK2 作为关键的生物标志物。这些发现为 EM 的早期诊断和个性化治疗提供了新的方向。