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涉及母胎界面巨噬细胞的细胞间通讯可能是 URSA 的关键机制:来自转录组数据的新发现。

Intercellular communication involving macrophages at the maternal-fetal interface may be a pivotal mechanism of URSA: a novel discovery from transcriptomic data.

机构信息

Department of Traditional Chinese Medicine (TCM) Gynecology, Hangzhou Hospital of Traditional Chinese Medicine Affiliated to Zhejiang Chinese Medical University, Hangzhou, China.

College of Pharmaceutical Science, Zhejiang Chinese Medical University, Hangzhou, China.

出版信息

Front Endocrinol (Lausanne). 2023 May 17;14:973930. doi: 10.3389/fendo.2023.973930. eCollection 2023.

Abstract

Unexplained recurrent spontaneous abortion (URSA) is a severe challenge to reproductive females worldwide, and its etiology and pathogenesis have not yet been fully clarified. Abnormal intercellular communication between macrophages (Mφ) and decidual stromal cells (DSCs) or trophoblasts has been supposed to be the key to URSA. However, the exact molecular mechanisms in the crosstalk are not yet well understood. This study aimed to explore the potential molecule mechanism that may be involved in the communication between Mφ and DSC or trophoblast cells and determine their diagnostic characteristics by using the integrated research strategy of bioinformatics analysis, machine learning and experiments. First, microarrays of decidual tissue (GSE26787, GSE165004) and placenta tissue (GSE22490) in patients with URSA, as well as microarrays involving induced decidualization (GSE94644) and macrophage polarization (GSE30595) were derived from the gene expression omnibus (GEO) database. And 721 decidua-differentially expressed genes (DEGs), 613 placenta-DEGs, 510 Mφ polarization DEGs were obtained in URSA by differential expression analysis. Then, the protein-protein interaction (PPI) network was constructed, and the hub genes were identified by CytoHubba in Cytoscape software and validated by real-time PCR assay. Subsequently, immune enrichment analysis on decidua-DEGs and placenta-DEGs by ClueGO verified their regulation effects on Mφ. Besides, functional enrichment analysis was performed on Mφ polarization DEGs and the essential module genes derived from the weighted gene co-expression network analysis (WGCNA) to uncover the biological function that were related to abnormal polarization of Mφ. Furthermore, we screened out 29, 43 and 22 secreted protein-encoding genes from DSC-DEGs, placenta-DEGs and Mφ polarization DEGs, respectively. Besides, the hub secreted-protein-encoding genes were screened by CytoHubba. Moreover, we conducted functional enrichment analysis on these genes. And spearman correlation analysis between hub secreted-protein-encoding genes from donor cells and hub genes in recipient cells was performed to further understand the molecular mechanism of intercellular communication further. Moreover, signature genes with diagnostic value were screened from secreted protein-encoding genes by machine learning and validated by immunofluorescence co-localization analysis with clinical samples. Finally, three biomarkers of DSCs (FGF9, IL1R2, NID2) and three biomarkers of Mφ (CFB, NID2, CXCL11) were obtained. In conclusion, this project provides new ideas for understanding the mechanism regulatory network of intercellular communication involving macrophages at the maternal-fetal interface of URSA. Also, it provides innovative insights for the diagnosis and treatment of URSA.

摘要

不明原因复发性自然流产(URSA)是全球生殖女性面临的严峻挑战,其病因和发病机制尚未完全阐明。巨噬细胞(Mφ)和蜕膜基质细胞(DSC)或滋养层细胞之间异常的细胞间通讯被认为是 URSA 的关键。然而,细胞间通讯的确切分子机制尚不清楚。本研究旨在通过生物信息学分析、机器学习和实验的综合研究策略,探讨可能参与 Mφ与 DSC 或滋养层细胞之间通讯的潜在分子机制,并确定其诊断特征。首先,从基因表达综合数据库(GEO)中提取 URSA 患者的蜕膜组织(GSE26787、GSE165004)和胎盘组织(GSE22490)的微阵列,以及涉及诱导蜕膜化(GSE94644)和巨噬细胞极化(GSE30595)的微阵列。通过差异表达分析,在 URSA 中获得了 721 个蜕膜差异表达基因(DEGs)、613 个胎盘 DEGs、510 个 Mφ极化 DEGs。然后,通过 Cytoscape 软件中的 CytoHubba 构建蛋白质-蛋白质相互作用(PPI)网络,并鉴定枢纽基因,通过实时 PCR 验证。随后,通过 ClueGO 对蜕膜 DEGs 和胎盘 DEGs 进行免疫富集分析,验证它们对 Mφ 的调节作用。此外,对 Mφ 极化 DEGs 进行功能富集分析,并从加权基因共表达网络分析(WGCNA)中提取关键模块基因,以揭示与 Mφ异常极化相关的生物学功能。此外,我们分别从 DSC-DEGs、胎盘 DEGs 和 Mφ 极化 DEGs 中筛选出 29、43 和 22 个分泌蛋白编码基因,通过 CytoHubba 筛选出枢纽分泌蛋白编码基因。此外,我们对这些基因进行了功能富集分析。并对供体细胞的枢纽分泌蛋白编码基因与受体细胞的枢纽基因进行 spearman 相关性分析,进一步深入了解细胞间通讯的分子机制。此外,通过机器学习从分泌蛋白编码基因中筛选出具有诊断价值的特征基因,并通过与临床样本的免疫荧光共定位分析进行验证。最后,得到三个 DSC 标志物(FGF9、IL1R2、NID2)和三个 Mφ 标志物(CFB、NID2、CXCL11)。总之,本项目为理解 URSA 母胎界面涉及巨噬细胞的细胞间通讯调控网络提供了新的思路,为 URSA 的诊断和治疗提供了创新性的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3d7f/10231036/c4e252b3ebed/fendo-14-973930-g001.jpg

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