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探索卵巢癌分子亚型和预后特征中的肿瘤微环境,并鉴定SH2D1A作为卵巢癌发生的关键调节因子。

Exploring tumor microenvironment in molecular subtyping and prognostic signatures in ovarian cancer and identification of SH2D1A as a key regulator of ovarian cancer carcinogenesis.

作者信息

Guo Hongrui, Zhang Liwen, Su Huancheng, Yang Jiaolin, Lei Jing, Li Xiaoli, Zhang Sanyuan, Zhang Xinglin

机构信息

Department of Gynecology, First Hospital of Shanxi Medical University, Taiyuan, 030001, China.

Department of Gynecology, The Children's Hospital of Shanxi, Taiyuan, 030001, China.

出版信息

Heliyon. 2024 Sep 17;10(18):e38014. doi: 10.1016/j.heliyon.2024.e38014. eCollection 2024 Sep 30.

Abstract

INTRODUCTION

A deadly gynecological cancer, ovarian cancer (OV), has a poor prognosis because of late-stage diagnosis and few targeted therapies. Addressing the tumor microenvironment (TME) in solid tumors has shown promise since it is crucial in promoting cancer progression.

METHODS

We obtained bulk RNA-seq data from TCGA-OV, GSE26712, GSE102073, and ICGC cohorts, as well as scRNA-seq data from EMTAB8107, GSE118828, GSE130000, and GSE154600 cohorts using the TISCH2 database. The ConsensusClusterPlus package was used to cluster the OV tumor tissues hierarchically to determine two molecularly different groups (C1 and C2). A total of ten different types of machine learning techniques with 101 combinations were used for prognostic model construction. Using eight TME algorithms integrated into the IOBR R package, the bulk RNA-seq dataset was analyzed. For in vitro experiments, OVCAR3 and SKOV3, two OV cell lines, were used. The migratory potential of the ovarian cancer cells was assessed using Transwell assay, while proliferation was assessed using CCK8 assay.

RESULTS

Based on TME-related gene set expression, two distinct molecular subgroups (C1 and C2) were identified through consensus clustering, with C1 showing higher TME activity. Further analysis indicated that C1 had increased cancer-associated fibroblasts (CAFs), M1 macrophages, and CD8 T cells, suggesting a more activated and pro-inflammatory TME. Drug sensitivity analysis revealed that 5-Fluorouracil might be beneficial to C1 patients. Functional differences between C1 and C2 were identified, including cell adhesion, mononuclear cell differentiation, and leukocyte migration. A machine learning model was developed to create a TME-related prognostic signature, demonstrating strong prognostic capabilities across multiple datasets. High-risk patients showed a more immune-suppressive TME and higher tumor stemness. ScRNA-seq disclosed a highly activated TME-related signature in OV. Cancer cell lines had significantly higher SH2D1A mRNA expression than normal ovarian epithelial cells. We observed that SH2D1A knockdown in 2 ovarian cancer cell lines (OVCAR3 and SKOV3) reduced migration and proliferation through a series of in-vitro experiments.

CONCLUSION

TME-associated genes were efficient in ovarian cancer molecular subtyping. A TME-based prognosis model was constructed for vigorous prognostic stratification efficacy across multiple datasets. Moreover, we identified a pivotal role of SH2D1A in promoting proliferation and migration in ovarian cancer.

摘要

引言

卵巢癌(OV)是一种致命的妇科癌症,由于诊断较晚且靶向治疗较少,其预后较差。针对实体瘤中的肿瘤微环境(TME)已显示出前景,因为它在促进癌症进展中至关重要。

方法

我们使用TISCH2数据库从TCGA-OV、GSE26712、GSE102073和ICGC队列中获取了批量RNA测序数据,以及从EMTAB8107、GSE118828、GSE130000和GSE154600队列中获取了单细胞RNA测序数据。使用ConsensusClusterPlus软件包对OV肿瘤组织进行层次聚类,以确定两个分子不同的组(C1和C2)。总共使用了十种不同类型的机器学习技术和101种组合来构建预后模型。使用集成到IOBR R软件包中的八种TME算法对批量RNA测序数据集进行分析。对于体外实验,使用了两种OV细胞系OVCAR3和SKOV3。使用Transwell实验评估卵巢癌细胞的迁移潜力,同时使用CCK8实验评估增殖情况。

结果

基于TME相关基因集的表达,通过一致性聚类确定了两个不同的分子亚组(C1和C2),C1显示出更高的TME活性。进一步分析表明,C1中癌症相关成纤维细胞(CAFs)、M1巨噬细胞和CD8 T细胞增加,表明TME更具活性且促炎。药物敏感性分析显示,5-氟尿嘧啶可能对C1患者有益。确定了C1和C2之间的功能差异,包括细胞粘附、单核细胞分化和白细胞迁移。开发了一种机器学习模型来创建与TME相关的预后特征,在多个数据集中显示出强大的预后能力。高风险患者显示出更具免疫抑制性的TME和更高的肿瘤干性。单细胞RNA测序揭示了OV中高度激活的TME相关特征。癌细胞系的SH2D1A mRNA表达明显高于正常卵巢上皮细胞。通过一系列体外实验,我们观察到在两种卵巢癌细胞系(OVCAR3和SKOV3)中敲低SH2D1A可降低迁移和增殖。

结论

与TME相关的基因在卵巢癌分子亚型分类中有效。构建了一个基于TME的预后模型,在多个数据集中具有强大的预后分层功效。此外,我们确定了SH2D1A在促进卵巢癌增殖和迁移中的关键作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0312/11437944/b56abe716781/gr1.jpg

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