Zhang Bolun, Lin Shaochong, Wang Sidong, Chen Weiyu, Chen Yushu, Cao Dandan, Liu Qingzhi, Yao Yuanqing
Department of Medical College, Nankai University, Tianjin, People's Republic of China.
Center for Reproductive Medicine, Shenzhen Hospital, The University of Hong Kong, Shenzhen, People's Republic of China.
Int J Womens Health. 2025 Sep 3;17:2853-2868. doi: 10.2147/IJWH.S534065. eCollection 2025.
Emerging evidence suggests that an abnormal endometrial microbiota may be a potential factor contributing to recurrent pregnancy loss (RPL). This study aimed to characterize the endometrial microbiota in patients with RPL and to explore its association with miscarriage.
Based on specific inclusion and exclusion criteria, EndoMetrial Microbiome Assay (EMMA) data from women attending clinics were collected and categorized into RPL and control groups according to their miscarriage history. Species diversity analysis, differential microbiota analysis, and machine learning methods were employed to identify key microbial genera associated with RPL. Microbial network analysis was then performed to further characterize the endometrial microbiome in patients with RPL.
No significant differences in α-diversity were observed between the RPL and control groups across multiple indices (all P > 0.05); however, β-diversity differed significantly (Euclidean distance, P = 0.039). Regarding species composition, the control group showed a significantly higher abundance of , whereas the RPL group had increased levels of pathogenic bacteria, including , and . Machine learning identified three key genera associated with RPL: , and . Microbial network analysis further revealed the fragility of the endometrial microbial community in patients with RPL.
These findings offer novel insights into the mechanisms of endometrial microenvironmental changes in patients with RPL and highlight potential microbial biomarkers and therapeutic targets for future clinical applications.
新出现的证据表明,子宫内膜微生物群异常可能是导致复发性流产(RPL)的一个潜在因素。本研究旨在对RPL患者的子宫内膜微生物群进行特征分析,并探讨其与流产的关联。
根据特定的纳入和排除标准,收集临床就诊女性的子宫内膜微生物组检测(EMMA)数据,并根据流产史将其分为RPL组和对照组。采用物种多样性分析、差异微生物群分析和机器学习方法来识别与RPL相关的关键微生物属。然后进行微生物网络分析,以进一步描述RPL患者的子宫内膜微生物组特征。
在多个指标上,RPL组和对照组之间的α多样性未观察到显著差异(所有P>0.05);然而,β多样性存在显著差异(欧氏距离,P = 0.039)。在物种组成方面,对照组显示 的丰度显著更高,而RPL组中包括 、 和 在内的病原菌水平有所增加。机器学习确定了与RPL相关的三个关键属: 、 和 。微生物网络分析进一步揭示了RPL患者子宫内膜微生物群落的脆弱性。
这些发现为RPL患者子宫内膜微环境变化的机制提供了新的见解,并突出了潜在的微生物生物标志物和未来临床应用的治疗靶点。